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SQQS1013 Elementary Statistics
INTRODUCTIONINTRODUCTION
TO PROBABILITYTO PROBABILITY
3.1 INTRODUCTION
• The principles of probability help bridge the worlds of
descriptive statistics and inferential statistics.
• Probability can be defined as the chance of an event occurring or to be
specific the numeric value representing the chance, likelihood, or
possibility a particular event will occur.
• Situations that involve probability:
 Observing or playing a game of chance such as card games and slot machines
 Insurance
 Investments
 Weather Forecasting etc.
• It is the basis of inferential statistics such as predictions and testing the
hypotheses
3.2 SAMPLE SPACE & PROBABILTY CONCEPTS
Some basic concepts of probability:
1. A Probability Experiment
- A chance process that leads to well-defined results called outcomes.
2. An Outcome
- The result of a single trial of a probability experiment.
3. A Sample Space
- The set of all possible outcomes of a probability experiment.
- Some sample spaces for various probability experiments are shown below
EXPERIMENT SAMPLE SPACES
Toss one coin
Head, Tail
Roll a die 1, 2, 3, 4, 5, 6
Answer a true/false questions True, False
Toss two coins Head-Head, Head-Tail, Tail-Tail, Tail-Head
Chapter 3: Introduction to Probability 1
SQQS1013 Elementary Statistics
Find the sample space for rolling two dice.
Die1
Die 2
1 2 3 4 5 6
1 (1,1) (1,2) (1,3) (1,4) (1,5) (1,6)
2 (2,1) (2,2) (2,3) (2,4) (2,5) (2,6)
3 (3,1) (3,2) (3,3) (3,4) (3,5) (3,6)
4 (4,1) (4,2) (4,3) (4,4) (4,5) (4,6)
5 (5,1) (5,2) (5,3) (5,4) (5,5) (5,6)
6 (6,1) (6,2) (6,3) (6,4) (6,5) (6,6)
Find the sample space for the gender of the children if a family has three
children. Use B for boy and G for girl.
Solution:
There are two genders, male and female and each child could be either
gender. Hence, there are eight possibilities.
BBB BBG BGB GBB GGG GGB GBG BGG
4. A Tree Diagram
- Another way to determine all possible outcomes (sample space) of a
probability experiment.
- It is a device consisting of line segments emanating from a starting point and
also from the outcome point.
Chapter 3: Introduction to Probability 2
Example 1
Example 2
Example 3
SQQS1013 Elementary Statistics
Use a tree diagram to find the sample space for the gender of three children in a
family.
You are at a carnival. One of the carnival games asks you to pick a door and
then pick a curtain behind the door. There are 3 doors and 4 curtains behind
each door. Use a tree diagram to find the sample spaces for all the possible
choices.
5. Venn Diagram
Chapter 3: Introduction to Probability
B
G
B
B
G
G
B
G
B
G
B
G
B
G
1st
child
2nd
child
3rd
child
BBB
BBG
BGB
BGG
GBB
GBG
GGB
GGG
Outcome
s
1
A
A
C
B
B
D
1, A
1, B
1, C
1, D
2, A
2
3
C
D
A
B
C
2, B
2, C
2, D
3, A
3, C
3, B
3
3, D
Curtain OutcomesDoor
Example 4
D
SQQS1013 Elementary Statistics
- developed by John Venn and are used in set theory and symbolic logic.
- have been adapted to probability theory.
- A picture (a closed geometric shape such as a rectangle, a square, or a circle)
that depicts all the possible outcomes for an experiment.
- The symbol ∪ represents the union of two events and P(A ∪ B) corresponds
to A OR B.
- The symbol ∩ represents the intersection of two events and P(A ∩ B)
corresponds to A AND B.
6. An Event
- Consists of a set of outcomes of a probability experiment.
- An event can be :
a) Simple event – the outcome that is observed on a single
repetition of the experiment
- an event with one outcome
e.g: If a die is rolled and a 6 shows since it is a result
of single trial
b) Compound event – an even with more than one outcome.
e.g : The event of getting an odd number when a die
is rolled since it consists of three outcomes or three
simple events.
3.2.1 Basic Probability Rules
Chapter 3: Introduction to Probability 4
Venn diagram representing two events; A
and B
Venn diagram representing three events;
A, B and C
Probabilities can be expressed as fractions, decimals or percentage (where
appropriate).
SQQS1013 Elementary Statistics
There are four basic probability rules:
1. The probability of any event E is a number between and including 0
and 1.
1)(0 ≤≤ EP
2. If an event E cannot occur, its probability is 0 (impossible event).
3. If an event is certain, then the probability of E is 1 (certain event).
4. The sum of the probabilities of all the outcomes in the sample space
is 1.
3.2.2 Basic Interpretation of Probability
Three basic interpretations of probability that are used to solve a variety of
problems in business, engineering and other fields:
1. Classical Probability
- Uses sample spaces to determine the probability an event will happen.
- Assumes that all outcomes in the sample space are equally likely to occur
which means that all the events have the same probability of occurring.
- The probability of any event E is:
Number of outcomes in E
Total number of outcomes in the sample space
Or denoted as,
)(
)(
)( Sn
En
EP =
e.g.: When a single die is rolled, each outcome has the same probability of
occurring. Since there are six outcomes, each outcome has a probability of
6
1
.
2. Empirical Probability
- Relies on actual experience to determine the likelihood of outcomes.
- Is based on observation.
- Given a frequency distribution, the probability of an event being in a given
class is:
Frequency for the class or denoted as, n
f
EP =)(
Total frequencies in the distribution
Chapter 3: Introduction to Probability 5
Example 5
SQQS1013 Elementary Statistics
Hospital records indicate that maternity patients stayed in the hospital for the
number of days shown in the following distribution:
Number of days stayed Frequency
3 15
4 32
5 56
6 19
7 5
Total 127
Find these probabilities,
a) A patient stayed exactly 5 days
b) A patient stayed less than 6 days
P(less than 6 days) =
c) A patient stayed at most 4 days
P(at most 4 days) =
3. Subjective Probability
- Uses a probability value based on an educated guess or estimate, employing
opinions and inexact information.
- This guess is based on the person’s experience and evaluation of a solution.
e.g.: A physician might say that, on the basis of her diagnosis, there is a 30%
chance the patient will need an operation.
3.3 FIELD OF EVENTS & TYPE OF PROBABILITIES
Chapter 3: Introduction to Probability 6
SQQS1013 Elementary Statistics
3.3.1 Field of Events
• Intersection vs. Union events
 Intersection event
− Let A and B be two events defined in a sample space.
− The intersection of events A and B is the event that occurs when both A and B
occur.
− It is denoted by either A ∩ B or AB.
A = event that a family owns a DVD player
B = event that a family owns a digital camera
 Union event
− Let A and B be two events defined in a sample space.
− The union of events A and B is the event that occurs when either A or B or both
occur.
− It is denoted as A ∪ B.
A = event that a family owns a DVD player
B = event that a family owns a digital camera
Shaded area
gives the union of
events A and B.
Chapter 3: Introduction to Probability 7
A B
A
and
B
Intersection of A and B
A B
Example 6
Example 7
SQQS1013 Elementary Statistics
A senior citizens centre has 300 members. Of them, 140 are male, 210 take at least
one medicine on a permanent basis and 95 are male and take at least one medicine
on a permanent basis. Draw a Venn diagram to describe,
a) the intersection of the events “male” and “take at least one medicine on
a permanent basis”.
b) the union of the events “male” and “take at least one medicine on a
permanent basis”.
c) the intersection of the events “female” and “take at least one medicine
on a permanent basis”.
d) the union of the events “female” and “take at least one medicine on a
permanent basis”.
Solution:
• Independent vs. Dependent Events
 Independent event
− Two events A and B are independent events if the fact that A occurs does not
affect the probability of B occurring.
Rolling a die and getting a 6, and then rolling a second die and getting a 3.
Note:
The outcome of the rolling the first die does not affect the probability
outcome of rolling the second die.
Chapter 3: Introduction to Probability
Male Female
Take at least one
medicine
95 11545 45
8
Example 8
Example 9
SQQS1013 Elementary Statistics
 Dependent event
− When the outcome or occurrence of the first event affects the outcome or
occurrence of the second event in such a way that the probability is changed, the
events are said to be dependent events.
− Some examples of dependent events:
o Drawing a card from a deck, not replacing it, and then drawing a second
card.
o Selecting a ball from an urn, not replacing it, and then selecting a second
ball.
o Having high grades and getting a scholarship.
o Parking in a no-parking zone and getting a parking ticket.
3.3.2 Type of Probabilities
NOTE: the examples of joint, marginal and conditional probabilities will be based on the
following contingency table
Table 1: Two-way classification of all employees of a company by gender and
college degree
Category College
graduate, G
Not a college
graduate, G Total
Male, M 7 20 27
Female, F 4 9 13
Total 11 29 40
1. Joint Probability
 The probability of the intersection of events.
 Written by either P(A ∩ B) or P(AB).
(Refer Table 1)
If one of those employees is selected at random for membership on the employee
management committee, there are 4 joint probabilities that can be defined. That
is,
a) the probability that this employee is a male and a college graduate
b) the probability that this employee is a female and a college graduate
Chapter 3: Introduction to Probability 9
Example 10
SQQS1013 Elementary Statistics
c) the probability that this employee is a male and not a college graduate
d) the probability that this employee is a female and not a college graduate
2. Marginal Probability
 The probability of a single event without consideration of any event.
 Also called as simple probability.
 Named so as they calculated in the margins of the table (divide the
corresponding totals for the row or column by the grand total).
(Refer Table 1)
If one of those employees is selected at random for membership on the
employee management committee, find the probabilities for each of the
followings:
a) the chosen employee is a male
b) the chosen employee is a female
c) the chosen employee a college graduate
d) the chosen employee is not a college graduate
Chapter 3: Introduction to Probability 10
Example 11
SQQS1013 Elementary Statistics
3. Conditional Probability
 Often used to gauge the relationship between two events.
 Conditional probability is the probability that an event will occur given
that another event has already occurred.
 Written as:
P(event will occur | event has already occur)
 The probability of event A given event B is
( )
( )
( )
|
P A B
P A B
P B
∩
=
 The probability of event B given event A is
( )
( )
( )
|
P A B
P B A
P A
∩
=
(Refer Table 1)
If one of those employees is selected at random for membership on the
employee management committee, find the probabilities for each of the
followings:
a) the chosen employee is a male given that he is graduated from college
P(M | G) =
=
=
b) the chosen employee is not a college graduate given that this employee is
female
P(G| F) =
=
=
Chapter 3: Introduction to Probability 11
Example 12
FORMULA
ξ∆Σ λϖ
β
FORMULA
ξ∆Σ λϖ
β
SQQS1013 Elementary Statistics
A person owns a collection of 30 CDs, of which 5 are country music.
a) 2 CDs are selected at random and with replacement. Find the probability
that the second CD is country music given that the first CD is country
music.
P(CM |CM) =
=
b) This time the selection made is without replacement. Find the probability
that the second CD is country music given that the first CD is country
music.
P(CM |CM) =
=
3.4 EVENTS & PROBABILITIES RULES
3.4.1 Mutually Exclusive Events & Non-Mutually Exclusive Events
• Two events are mutually exclusive if they cannot occur at the same time
(they have no outcomes in common).
• The probability of two or more events can be determined by the addition
rules.
Chapter 3: Introduction to Probability 12
Example 13
SQQS1013 Elementary Statistics
• There are two addition rules to determine either the two events are mutually
exclusive or not mutually exclusive.
Addition Rule 1
When two events A and B are mutually exclusive, the probability that A or
B will occur is
P(A or B) = P(A) + P(B) or
P(A and B) = 0
Addition Rule 2
When two events A and B are not mutually exclusive, then
P(A or B)= P(A) + P(B) – P(A and B)
Consider the following events when rolling a die:
A = an even number is obtained = {2,4,6}
B = an odd number is obtained = {1,3,5}
Are events A and B are mutually exclusive?
Solution:
Yes, the two events are mutually exclusive since event A and event B have no
common element,
Chapter 3: Introduction to Probability 13
P(A) P(B)
P(B)P(A)
P(A and B)
Example 14
SQQS1013 Elementary Statistics
Determine which events are mutually exclusive and which are not when a
single die is rolled.
a) Getting a 3 and getting an odd number.
Answer: Not Mutually Exclusive
b) Getting a number greater than 4 and getting a number less than 4.
Answer: Mutually Exclusive
c) Getting an odd number and getting a number less than 4.
Answer: Not Mutually Exclusive
There are 8 nurses and 5 physicians in a hospital unit; 7 nurses and 3 physicians
are females. If a staff person is selected, find the probability that the subject is a
nurse or a male.
Solution:
Staff Female, F Male, M Total
Nurses, N 7 1 8
Physicians, PY 3 2 5
Total 10 3 13
P(N or M) = P(N ∪ M)
=
Chapter 3: Introduction to Probability
A B
1
3
5
2
4
6
14
Example 15
Example 16
SQQS1013 Elementary Statistics
At a convention there are 7 mathematics instructors, 5 computer sciences
instructors, 3 statistics instructors, and 4 science instructors. If an instructor is
selected, find the probability of getting a science instructor or a math instructor.
Solution:
P(science instructor or math instructor)
=
A grocery store employs cashiers, stock clerks and deli personnel. The
distribution of employees according to marital status is shown here.
Marital Status Cashiers Clerks Deli Personnel
Married 8 12 3
Not Married 5 15 2
If an employee is selected at random, find these probabilities:
a. the employee is a stock clerk or married
P(clerk ∪ married) =
b. the employee is not married
P(not married) =
c. the employee is a cashier or is unmarried
P(cashier ∪ not married) =
3.4.1 Independent & Dependent Events
Chapter 3: Introduction to Probability 15
Example 17
Example 18
SQQS1013 Elementary Statistics
• For two independent events, A and B, the occurrence of event A does not
change the probability of B occurring.
• The probability of independent events can be determined as:
P( A | B ) = P(A) Or P( B | A ) = P(B)
Multiplication Rule 1
When two events are independent, the probability of both occurring
P(A ∩ B) = P(A) ⋅ P(B)
A box contains 3 red balls, 2 blue balls, and 5 white balls. A ball is selected and
its colour noted. Then it is replaced. A second ball is selected and its colour
noted. Find the probability of each of these:
a) selecting two blue balls.
P (blue∩blue) = P(blue) ⋅ P(blue)
b) selecting 1 blue ball and then 1 white ball.
P (blue∩white) = P(blue) ⋅ P(white)
c) selecting 1 red ball and then 1 blue ball.
P(red∩blue) = P(red) ⋅ P(blue)
Chapter 3: Introduction to Probability 16
Example 19
Example 20
SQQS1013 Elementary Statistics
A survey found that 68% of book buyers are 40 years or older. If two book
buyers are selected at random, find the probability that both are 40 years or
older.
P (buyer) =
• On the other hand, two events, A and B are dependent when the
occurrence of the event A changes the probability of the occurrence of
event B.
• When two events are dependent, another multiplication rule can be used to
find the probability.
Multiplication Rule 2
When two events are dependent, the probability of both occurring
P (A ∩ B) = P(A) ⋅ P( B | A )
In a scientific study there are 8 tigresses, 5 of which are pregnant. If 3 are
selected at random without replacement, find the probability that:
a) all tigresses are pregnant.
Chapter 3: Introduction to Probability 17
2nd
tigress1st
tigress
Example 21
PG
PG
PG, PG,PG
PG
PG
PG
PG
PG
PGPG
PG
PG
PG
PG
5
8
3
8
4
7
3
7
5
7
2
7
3
6
3
6 4
6
2
6 4
6
2
6 5
6
PG
1
6
PG,, PG
PG,,
, PG, PG
PG, PG,
, PG,
,, PG
,,
2nd
tigress1st
tigress 3rd
tigress Outcomes
SQQS1013 Elementary Statistics
P(PG∩PG∩PG) =
b) two tigresses are pregnant.
Let A be an event of two tigresses are pregnant
P(A) =
3.4.3 Complementary Events
• The set of outcomes in the sample space that is not included in the outcomes
of event E.
• Denoted as E (read “E bar”)
Find the complement of each event.
a) Rolling a die and getting a 4
Answer:
b) Selecting a letter of the alphabet and getting a vowel
Answer:
c) Selecting a day of the week and getting a weekday
Answer:
• The outcomes of an event and the outcomes of the complement make up
the entire sample space.
Chapter 3: Introduction to Probability 18
Example 22
SQQS1013 Elementary Statistics
• The rule of complementary events can be stated algebraically in three
ways:
)(1)( EPEP −= Or
)(1)( EPEP −= Or
1)()( =+ EPEP
• The concept can be represented pictorially by the following Venn Diagram.
In a group of 2000 taxpayers, 400 have been audited by the IRS at least once. If
one taxpayer is randomly selected from this group, what are the probability of
that taxpayer has never been audited by the IRS?
Solution:
Let, A = the selected taxpayer has been audited by the IRS at least once
A = the selected taxpayer has never been audited by the IRS
• The multiplication rules can be used with the complementary event rule to
simplify solving probability problems involving “at least”.
In a department store there are 120 customers, 90 of whom will buy at least one
item. If 4 customers are selected at random, one by one, find the probability that
at least one of the customers will but at least one item. Would you consider this
event likely to occur? Explain.
Solution:
Let C = at least one customer will buy at least one item
C = none of the customers will buy at least one item
P(will buy at least one item) = 90 / 120 = ¾
So, P(won’t buy any items) = 1 - 3/4 = ¼
By using the complementary event rule,
Chapter 3: Introduction to Probability
P(E)
P(S)=1
P(E)
)(EP
19
Example 23
Example 24
FORMULA
ξ∆Σ λϖ
β
SQQS1013 Elementary Statistics
)(1)( CPCP −=
=
=
Yes, this event is most likely to occur (certain event) since the probability
almost 1
NOTE: The following examples are based on the overall understanding of the entire
probability concepts
A random sample of 400 college students was asked if college athletes should be
paid. The following table gives a two-way classification of the responses.
Should be paid,
D
Should not be
paid, D Total
Student athlete, A 90 10 100
Student non-athlete, A 210 90 300
Total 300 100 400
a) If one student is randomly selected from these 400 students, find the probability
that this student
i. Is in favour of paying college athletes
P(D) =
ii. Favours paying college athletes given that the student selected is a non-
athlete
P(D | A ) =
iii. Is an athlete and favours paying student athletes
P(A ∩D) =
iv. Is a non-athlete or is against paying student athletes
P( A ∪ D ) =
Chapter 3: Introduction to Probability 20
Example 25
SQQS1013 Elementary Statistics
b) Are the events “student athlete” and “should be paid” independent? Are they
mutually exclusive? Explain why or why not.
P(A∩D) =
Since, P(A∩D) ≠ P(A) ⋅ P(D), those two events are not independent
(dependent).
And since P(A∩D) ≠ 0, those two events are not mutually exclusive
A screening test for a certain disease is prone to giving false positives of false
negatives. If a patient being tested has the disease, the probability that the test
indicates a false negative is 0.13. If the patient does not have the disease, the
probability that the test indicates a false positive is 0.10. Assume that 3% of the
patients being tested actually have the disease. Suppose that one patient is
chosen at random and tested. Find the probability that;
Let D = the patient has the disease
D = the patient does not have the disease
N = the patient tests positive
N = the patient tests negative
Chapter 3: Introduction to Probability 21
Example 26
SQQS1013 Elementary Statistics
a) This patient has the disease and tests positive
P(D∩N) =
b) This patient does not have the disease and tests positive
P( D ∩N) =
c) This patient tests positive
P(N) =
d) This patient does not have the disease and tests negative
P( D ∩ N ) =
e) This patient has the disease given that he/she tests positive
P(D | N) =
Chapter 3: Introduction to Probability
D
D
N
N
N
N
0.03
0.97
0.13
0.87
0.10
0.90
P(D∩)
P(D∩)
P(∩)
P(∩)
Joint Probability
22
SQQS1013 Elementary Statistics
EXERCISE 1
1. For each of the following, indicate whether the type of probability involved is an
example of classical probability, empirical probability or subjective probability:
a) the next toss of a fair coin will land on heads.
b) Italy will win soccer’s World Cup the next time the competition is held.
c) the sum of the faces of two dice will be 7.
d) the train taking a commuter to work will be more than 10 minutes late.
2. A test contains two multiple-choice questions. If a student makes a random guess to
answer each question, how many outcomes are possible? Draw a tree diagram for
this experiment. (Hint: Consider two outcomes for each question – either the answer
is correct or it is wrong).
3. Refer to question 1. List all the outcomes included in each of the following events
and mention which are simple and which are compound events.
a) Both answers are correct.
b) At most one answer is wrong.
c) The first answer is correct and the second is wrong.
d) Exactly one answer is wrong.
4. State whether the following events are independent or dependent.
a) Getting a raise in salary and purchasing a new car.
b) Having a large shoe size and having a high IQ.
c) A father being left-handed and a daughter being left-handed.
d) Eating an excessive amount of ice cream and smoking an excessive amount
of cigarettes.
5. 88% of American children are covered by some type of health insurance. If four
children are selected at random, what is the probability that none are covered?
6. A box of nine golf gloves contains two left-handed gloves and seven right-handed
gloves.
a) If two gloves are randomly selected from the box without replacement, what is
the probability that both gloves selected will be right-handed?
b) If three gloves are randomly selected from the box without replacement, what
is the probability that all three will be left-handed?
c) If three gloves are randomly selected from the box without replacement, what
is the probability that at least one glove will be right-handed?
Chapter 3: Introduction to Probability 23
SQQS1013 Elementary Statistics
7. A financial analyst estimates that the probability that the economy will experience a
recession in the next 12 months is 25%. She also believes that if the economy
encounters recession, the probability that her mutual fund will increase in value is
20%. If there is no recession, the probability that the mutual fund will increase in
value is 75%. Find the probability that the mutual fund’s value will increase.
8. A car rental agency currently has 44 cars available. 18 of which have a GPS
navigation system. One of the 44 cars is selected at random, find the probability that
this car,
a) has a GPS navigation system.
b) does not have a GPS navigation system.
Now, two cars are selected at random from these 44 cars. Find the probability that
at least one of these cars have GPS navigation system.
9. A recent study of 300 patients found that of 100 alcoholic patients, 87 had elevated
cholesterol levels, and 200 non-alcoholic patients, 43 had elevated cholesterol
levels.
a) If a patient is selected at random, find the probability that the patient is the
following,
i. an alcoholic with elevated cholesterol level.
ii. a non-alcoholic.
iii. a non-alcoholic with non-elevated cholesterol level.
b) Are the events “alcoholic” and “non-elevated cholesterol levels” independent?
Are they mutually exclusive? Explain why or why not.
10. The probability that a randomly selected student from college is female is 0.55 and
that a student works more than 10 hours per week is 0.62. If these two events are
independent, find the probability that a randomly selected student is a
a) male and works for more than 10 hours per week.
b) female or works for more than 10 hours per week.
11. A housing survey studied how City Sun homeowners get to work. Suppose that the
survey consisted of a sample of 1,000 homeowners and 1,000 renters.
Drives to Work Homeowner Renter
Yes 824 681
No 176 319
a) If a respondent is selected at random, what if the probability that he or she
i. drives to work?
ii. drives to work and is a homeowner?
iii. does not drive to work or is a renter?
b) Given that the respondent drives to work, what then is the probability that he or
she is a homeowner?
c) Given that the respondent drives to work, what then is the probability that he or
she is a renter?
Chapter 3: Introduction to Probability 24
SQQS1013 Elementary Statistics
d) Are the two events, driving to work and the respondent is a homeowner,
independent?
e) Purchased more products and changed brands?
f) Given that a consumer changed the brands they purchased, what then is the
probability that the consumer purchased fewer products than before?
12. Due to the devaluation which occurred in country PQR, the consumers of that
country were buying fewer products than before the devaluation. Based on a study
conducted, the results were reported as the following:
Brands
Purchased
Number of Products Purchased
Fewer Same More
Same 10 14 24
Changed 262 82 8
What is the probability that a consumer selected at random:
b) purchased fewer products than before?
c) purchased the same number or same brands?
d) purchased more products and changed brands?
e) given that a consumer changed the brands they purchased, what then is the
probability that the consumer purchased fewer products than before?
13. A soft-drink bottling company maintains records concerning the number of
unacceptable bottles of soft drink from the filling and capping machines. Based on
past data, the probability that a bottle came from machine I and was non-conforming
is 0.01 and the probability that a bottle came from machine II and was non-
confirming is 0.0025. If a filled bottle of soft drink is selected at random, what is the
probability that
a) it is a non-confirming bottle?
b) it was filled on machine I and is a conforming bottle?
c) it was filled on machine II or is a conforming bottle?
d) suppose you know that the bottle was produced on machine I, what is the
probability that it is non-conforming?
14. Each year, ratings are compiled concerning the performance of new cars during the
first 90 days of use. Based on a study, the probability that the new car needs a
warranty repair is 0.04, the probability that the car manufactured by Country ABC is
0.60, and the probability that the new car needs a warranty repair and was
manufactured by Country ABC is 0.025.
a) What is the probability that the car needs a warranty repair given that Country
ABC manufactured it?
Chapter 3: Introduction to Probability 25
SQQS1013 Elementary Statistics
b) What is the probability that the car needs a warranty repair given that Country
ABC did not manufacture it?
c) Are need for a warranty repair and country manufacturing the car statistically
independent?
15. CASTWAY is a direct selling company which has 350 authorized sale agents from
all over the country. It is known that 168 of them are male. 40% of male sale agents
has permanent job while half of female sale agents do not have permanent job.
a) Draw a tree diagram to illustrate the above events.
b) What is the probability that a randomly selected sale agent,
i. has permanent job?
ii. is a male given that he does not have permanent job?
EXERCISE 2
1. Given P(M) = 0.53, P(N) = 0.58 and P(M∩N) = 0.33.
a) Complete the Van Diagram above with the probabilities value.
b) Is event M and event N are mutually exclusive? Prove it.
c) Is event M and event N are independent event? Prove it
2. The organizer has organized three games during the Lam’s family day. There are
run with one leg (G), fill water in the bottle (B) and tug & war (T). 40 participants had
participated in these games. Below is the Vann Diagram shown the number of
participants for every game during the family day.
a) Based on the Diagram above, find:
i. a value.
ii. The number of participant who participate in tug & war only.
iii. The number of participant who participate in one game only.
iv. The number of participant who participate more than one game.
Chapter 3: Introduction to Probability 26
S M N
S
B G
T
5
2a
9 2
2a 7
5
SQQS1013 Elementary Statistics
b) If one participant has been selected at random, find the probability the
participant;
i. Participate in fill water in the bottle game and run with one leg
game only.
ii. Participate in all games
iii. Participate in tug & war game given he/she has participated in
run with one leg game.
3. Harmony Cultural Club has organized three competitions; singing, dance and act
contests. The competition has been organized during the different time and each
contestant can participate more than one contest. Below is the Van Diagram for 100
contestants during these competitions.
Based on the Venn diagram;
a) Find the number of contestants who participated in dance and act contests.
b) If one contestant has been selected at random, what is the probability the
contestant participate in;
i. one contest only
ii. more than one contest
iii. singing contest given he/she had join in act contest
iv. except dance contest.
4. Xpress Link is a courier company with 300 staff with the qualification level shows
in the Van diagram below. Some of the staffs hold more than one qualification.
Based on the Vann diagram above,
a) Find the number of staff who holds diploma and bachelor degree only.
Chapter 3: Introduction to Probability 27
singing act
dance
15
18
20 12
2a a
5
bachelor degree
master degree
diploma
36 2k
4k
50k
102
SQQS1013 Elementary Statistics
b) What is the probability one staff who has been selected at random holds;
i. qualifications except master degree
ii. three qualifications.
c) Is the staff holds diploma and master degree is an independent event?
Prove it.
5. Given P(A) = 0.3, P(B) = 0.6 and P (A ∩ B) = 0.2. Draw the Venn diagram to
represents this statement. Then, find:
a) P(B’)
b) P(A ∪ B)
c) P(B|A)
d) P(A’ ∩ B)
e) Are A and B is mutually exclusive? Prove it.
6. 5% from the total radio sales at the Nora’s electric shop will be returned back for
repair by the buyer because the malfunctions of the radio in first six month. Given
two radios has been sold last week.
a) Draw the tree diagram to represent the above event.
b) Find the probability that:
i. both radios will be return back for repair
ii. none of the radio has been returned back for repair
iii. one of the radio will be returned back for repair
iv. the second radio will be returned back for repair given the first
radio had been return for repair.
c) Are the events returning back both the radios for repair is independent
event? Prove it.
7. There are three shipping company in Baltravia country; company R, S and T. These
three companies have a cargo ship and passenger ship. Table below shows the
information about the companies.
Company
Ship Type
Total
Cargo Passenger
R 20 20 40
S 40 20 60
T 30 40 70
Total 90 80
a) Find the probability choosing a cargo ship from company S
b) Find the probability choosing a ship belong to the company T given that the
ship is a passenger ship.
c) Build the tree diagram to show the selection of a ship from each company.
d) Based on the answer (c), find the probability:
i. all are cargo ships
ii. all are from the same type of ships.
8. A marketing manager wants to promote a new product of his company named Osom.
He has two marketing plan which are plan A and plan B. The probability he will
Chapter 3: Introduction to Probability 28
SQQS1013 Elementary Statistics
choose plan A is 1/3. The probability he does not succeed to promote the product
when using plan A and plan B is 1/5 and 1/6.
a) Draw the tree diagram to represent the situation
b) What is the probability that he does not succeed to promote the product?
c) If he fails to promote the product, what is the probability he has used the
plan B?
9. Two shooters have been selected to represent Malaysia in USIA game. The
probability the first shooter bid the target is ½ and the probability second shooter
miss the target is 1/3. The game will be started by first shooter and followed by the
second shooter. Draw the tree diagram to represent the events. Then, find the
probability:
a) first shooter and second shooter bid the target
b) only one shooter bids the target
c) none of the shooter bid the target
Chapter 3: Introduction to Probability 29
SQQS1013 Elementary Statistics
Matrix No: ________________ Group: _________
TUTORIAL CHAPTER 3
QUESTION 1
Nora Kindergarten would like to conduct a Sport Day. TABLE 1 shows the number of
children based on their sport’s group.
TABLE 1
Group Boy (B) Girl (G) Total
Tuah (T) 60 70 130
Jebat (J) 30 10 40
Lekiu (L) 50 20 70
Total 140 100 240
a. If a child is selected at random, what is the probability that the child is:
i. in Tuah or Jebat group
ii. a boy and in Lekiu group
Chapter 3: Introduction to Probability
Tutorial
30
SQQS1013 Elementary Statistics
iii. in group Jebat given that the child is a girl.
b. Are the event “female” and “Tuah” dependent? Prove it?
Chapter 3: Introduction to Probability
Tutorial
31
SQQS1013 Elementary Statistics
QUESTION 2
There are 100 students enrolled at Faculty of Sciences. Courses offered are
Mathematics (M), Physics (F) and Chemistry (K).
10 students enrolled all courses.
25 students enrolled in Mathematics and Physics courses.
20 students enrolled in Physics and Chemistry courses.
28 students enrolled in Mathematics and Chemistry courses.
60 students enrolled in Mathematics course.
50 students enrolled in Physics course.
53 students enrolled in Chemistry course.
a. By using the given information,
i. plot a Venn diagram.
ii. how many students do not enrolled in either Mathematics course or Physics
course?
Chapter 3: Introduction to Probability
Tutorial
32
SQQS1013 Elementary Statistics
b. Based on a(i), if the students were randomly selected, what is the probability that a
student:
i. enrolled in only one course?
ii. enrolled in Physics and Chemistry courses but do not enrolled in Mathematics
course.
Chapter 3: Introduction to Probability
Tutorial
33

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Sqqs1013 ch3-a112

  • 1. SQQS1013 Elementary Statistics INTRODUCTIONINTRODUCTION TO PROBABILITYTO PROBABILITY 3.1 INTRODUCTION • The principles of probability help bridge the worlds of descriptive statistics and inferential statistics. • Probability can be defined as the chance of an event occurring or to be specific the numeric value representing the chance, likelihood, or possibility a particular event will occur. • Situations that involve probability:  Observing or playing a game of chance such as card games and slot machines  Insurance  Investments  Weather Forecasting etc. • It is the basis of inferential statistics such as predictions and testing the hypotheses 3.2 SAMPLE SPACE & PROBABILTY CONCEPTS Some basic concepts of probability: 1. A Probability Experiment - A chance process that leads to well-defined results called outcomes. 2. An Outcome - The result of a single trial of a probability experiment. 3. A Sample Space - The set of all possible outcomes of a probability experiment. - Some sample spaces for various probability experiments are shown below EXPERIMENT SAMPLE SPACES Toss one coin Head, Tail Roll a die 1, 2, 3, 4, 5, 6 Answer a true/false questions True, False Toss two coins Head-Head, Head-Tail, Tail-Tail, Tail-Head Chapter 3: Introduction to Probability 1
  • 2. SQQS1013 Elementary Statistics Find the sample space for rolling two dice. Die1 Die 2 1 2 3 4 5 6 1 (1,1) (1,2) (1,3) (1,4) (1,5) (1,6) 2 (2,1) (2,2) (2,3) (2,4) (2,5) (2,6) 3 (3,1) (3,2) (3,3) (3,4) (3,5) (3,6) 4 (4,1) (4,2) (4,3) (4,4) (4,5) (4,6) 5 (5,1) (5,2) (5,3) (5,4) (5,5) (5,6) 6 (6,1) (6,2) (6,3) (6,4) (6,5) (6,6) Find the sample space for the gender of the children if a family has three children. Use B for boy and G for girl. Solution: There are two genders, male and female and each child could be either gender. Hence, there are eight possibilities. BBB BBG BGB GBB GGG GGB GBG BGG 4. A Tree Diagram - Another way to determine all possible outcomes (sample space) of a probability experiment. - It is a device consisting of line segments emanating from a starting point and also from the outcome point. Chapter 3: Introduction to Probability 2 Example 1 Example 2 Example 3
  • 3. SQQS1013 Elementary Statistics Use a tree diagram to find the sample space for the gender of three children in a family. You are at a carnival. One of the carnival games asks you to pick a door and then pick a curtain behind the door. There are 3 doors and 4 curtains behind each door. Use a tree diagram to find the sample spaces for all the possible choices. 5. Venn Diagram Chapter 3: Introduction to Probability B G B B G G B G B G B G B G 1st child 2nd child 3rd child BBB BBG BGB BGG GBB GBG GGB GGG Outcome s 1 A A C B B D 1, A 1, B 1, C 1, D 2, A 2 3 C D A B C 2, B 2, C 2, D 3, A 3, C 3, B 3 3, D Curtain OutcomesDoor Example 4 D
  • 4. SQQS1013 Elementary Statistics - developed by John Venn and are used in set theory and symbolic logic. - have been adapted to probability theory. - A picture (a closed geometric shape such as a rectangle, a square, or a circle) that depicts all the possible outcomes for an experiment. - The symbol ∪ represents the union of two events and P(A ∪ B) corresponds to A OR B. - The symbol ∩ represents the intersection of two events and P(A ∩ B) corresponds to A AND B. 6. An Event - Consists of a set of outcomes of a probability experiment. - An event can be : a) Simple event – the outcome that is observed on a single repetition of the experiment - an event with one outcome e.g: If a die is rolled and a 6 shows since it is a result of single trial b) Compound event – an even with more than one outcome. e.g : The event of getting an odd number when a die is rolled since it consists of three outcomes or three simple events. 3.2.1 Basic Probability Rules Chapter 3: Introduction to Probability 4 Venn diagram representing two events; A and B Venn diagram representing three events; A, B and C Probabilities can be expressed as fractions, decimals or percentage (where appropriate).
  • 5. SQQS1013 Elementary Statistics There are four basic probability rules: 1. The probability of any event E is a number between and including 0 and 1. 1)(0 ≤≤ EP 2. If an event E cannot occur, its probability is 0 (impossible event). 3. If an event is certain, then the probability of E is 1 (certain event). 4. The sum of the probabilities of all the outcomes in the sample space is 1. 3.2.2 Basic Interpretation of Probability Three basic interpretations of probability that are used to solve a variety of problems in business, engineering and other fields: 1. Classical Probability - Uses sample spaces to determine the probability an event will happen. - Assumes that all outcomes in the sample space are equally likely to occur which means that all the events have the same probability of occurring. - The probability of any event E is: Number of outcomes in E Total number of outcomes in the sample space Or denoted as, )( )( )( Sn En EP = e.g.: When a single die is rolled, each outcome has the same probability of occurring. Since there are six outcomes, each outcome has a probability of 6 1 . 2. Empirical Probability - Relies on actual experience to determine the likelihood of outcomes. - Is based on observation. - Given a frequency distribution, the probability of an event being in a given class is: Frequency for the class or denoted as, n f EP =)( Total frequencies in the distribution Chapter 3: Introduction to Probability 5 Example 5
  • 6. SQQS1013 Elementary Statistics Hospital records indicate that maternity patients stayed in the hospital for the number of days shown in the following distribution: Number of days stayed Frequency 3 15 4 32 5 56 6 19 7 5 Total 127 Find these probabilities, a) A patient stayed exactly 5 days b) A patient stayed less than 6 days P(less than 6 days) = c) A patient stayed at most 4 days P(at most 4 days) = 3. Subjective Probability - Uses a probability value based on an educated guess or estimate, employing opinions and inexact information. - This guess is based on the person’s experience and evaluation of a solution. e.g.: A physician might say that, on the basis of her diagnosis, there is a 30% chance the patient will need an operation. 3.3 FIELD OF EVENTS & TYPE OF PROBABILITIES Chapter 3: Introduction to Probability 6
  • 7. SQQS1013 Elementary Statistics 3.3.1 Field of Events • Intersection vs. Union events  Intersection event − Let A and B be two events defined in a sample space. − The intersection of events A and B is the event that occurs when both A and B occur. − It is denoted by either A ∩ B or AB. A = event that a family owns a DVD player B = event that a family owns a digital camera  Union event − Let A and B be two events defined in a sample space. − The union of events A and B is the event that occurs when either A or B or both occur. − It is denoted as A ∪ B. A = event that a family owns a DVD player B = event that a family owns a digital camera Shaded area gives the union of events A and B. Chapter 3: Introduction to Probability 7 A B A and B Intersection of A and B A B Example 6 Example 7
  • 8. SQQS1013 Elementary Statistics A senior citizens centre has 300 members. Of them, 140 are male, 210 take at least one medicine on a permanent basis and 95 are male and take at least one medicine on a permanent basis. Draw a Venn diagram to describe, a) the intersection of the events “male” and “take at least one medicine on a permanent basis”. b) the union of the events “male” and “take at least one medicine on a permanent basis”. c) the intersection of the events “female” and “take at least one medicine on a permanent basis”. d) the union of the events “female” and “take at least one medicine on a permanent basis”. Solution: • Independent vs. Dependent Events  Independent event − Two events A and B are independent events if the fact that A occurs does not affect the probability of B occurring. Rolling a die and getting a 6, and then rolling a second die and getting a 3. Note: The outcome of the rolling the first die does not affect the probability outcome of rolling the second die. Chapter 3: Introduction to Probability Male Female Take at least one medicine 95 11545 45 8 Example 8 Example 9
  • 9. SQQS1013 Elementary Statistics  Dependent event − When the outcome or occurrence of the first event affects the outcome or occurrence of the second event in such a way that the probability is changed, the events are said to be dependent events. − Some examples of dependent events: o Drawing a card from a deck, not replacing it, and then drawing a second card. o Selecting a ball from an urn, not replacing it, and then selecting a second ball. o Having high grades and getting a scholarship. o Parking in a no-parking zone and getting a parking ticket. 3.3.2 Type of Probabilities NOTE: the examples of joint, marginal and conditional probabilities will be based on the following contingency table Table 1: Two-way classification of all employees of a company by gender and college degree Category College graduate, G Not a college graduate, G Total Male, M 7 20 27 Female, F 4 9 13 Total 11 29 40 1. Joint Probability  The probability of the intersection of events.  Written by either P(A ∩ B) or P(AB). (Refer Table 1) If one of those employees is selected at random for membership on the employee management committee, there are 4 joint probabilities that can be defined. That is, a) the probability that this employee is a male and a college graduate b) the probability that this employee is a female and a college graduate Chapter 3: Introduction to Probability 9 Example 10
  • 10. SQQS1013 Elementary Statistics c) the probability that this employee is a male and not a college graduate d) the probability that this employee is a female and not a college graduate 2. Marginal Probability  The probability of a single event without consideration of any event.  Also called as simple probability.  Named so as they calculated in the margins of the table (divide the corresponding totals for the row or column by the grand total). (Refer Table 1) If one of those employees is selected at random for membership on the employee management committee, find the probabilities for each of the followings: a) the chosen employee is a male b) the chosen employee is a female c) the chosen employee a college graduate d) the chosen employee is not a college graduate Chapter 3: Introduction to Probability 10 Example 11
  • 11. SQQS1013 Elementary Statistics 3. Conditional Probability  Often used to gauge the relationship between two events.  Conditional probability is the probability that an event will occur given that another event has already occurred.  Written as: P(event will occur | event has already occur)  The probability of event A given event B is ( ) ( ) ( ) | P A B P A B P B ∩ =  The probability of event B given event A is ( ) ( ) ( ) | P A B P B A P A ∩ = (Refer Table 1) If one of those employees is selected at random for membership on the employee management committee, find the probabilities for each of the followings: a) the chosen employee is a male given that he is graduated from college P(M | G) = = = b) the chosen employee is not a college graduate given that this employee is female P(G| F) = = = Chapter 3: Introduction to Probability 11 Example 12 FORMULA ξ∆Σ λϖ β FORMULA ξ∆Σ λϖ β
  • 12. SQQS1013 Elementary Statistics A person owns a collection of 30 CDs, of which 5 are country music. a) 2 CDs are selected at random and with replacement. Find the probability that the second CD is country music given that the first CD is country music. P(CM |CM) = = b) This time the selection made is without replacement. Find the probability that the second CD is country music given that the first CD is country music. P(CM |CM) = = 3.4 EVENTS & PROBABILITIES RULES 3.4.1 Mutually Exclusive Events & Non-Mutually Exclusive Events • Two events are mutually exclusive if they cannot occur at the same time (they have no outcomes in common). • The probability of two or more events can be determined by the addition rules. Chapter 3: Introduction to Probability 12 Example 13
  • 13. SQQS1013 Elementary Statistics • There are two addition rules to determine either the two events are mutually exclusive or not mutually exclusive. Addition Rule 1 When two events A and B are mutually exclusive, the probability that A or B will occur is P(A or B) = P(A) + P(B) or P(A and B) = 0 Addition Rule 2 When two events A and B are not mutually exclusive, then P(A or B)= P(A) + P(B) – P(A and B) Consider the following events when rolling a die: A = an even number is obtained = {2,4,6} B = an odd number is obtained = {1,3,5} Are events A and B are mutually exclusive? Solution: Yes, the two events are mutually exclusive since event A and event B have no common element, Chapter 3: Introduction to Probability 13 P(A) P(B) P(B)P(A) P(A and B) Example 14
  • 14. SQQS1013 Elementary Statistics Determine which events are mutually exclusive and which are not when a single die is rolled. a) Getting a 3 and getting an odd number. Answer: Not Mutually Exclusive b) Getting a number greater than 4 and getting a number less than 4. Answer: Mutually Exclusive c) Getting an odd number and getting a number less than 4. Answer: Not Mutually Exclusive There are 8 nurses and 5 physicians in a hospital unit; 7 nurses and 3 physicians are females. If a staff person is selected, find the probability that the subject is a nurse or a male. Solution: Staff Female, F Male, M Total Nurses, N 7 1 8 Physicians, PY 3 2 5 Total 10 3 13 P(N or M) = P(N ∪ M) = Chapter 3: Introduction to Probability A B 1 3 5 2 4 6 14 Example 15 Example 16
  • 15. SQQS1013 Elementary Statistics At a convention there are 7 mathematics instructors, 5 computer sciences instructors, 3 statistics instructors, and 4 science instructors. If an instructor is selected, find the probability of getting a science instructor or a math instructor. Solution: P(science instructor or math instructor) = A grocery store employs cashiers, stock clerks and deli personnel. The distribution of employees according to marital status is shown here. Marital Status Cashiers Clerks Deli Personnel Married 8 12 3 Not Married 5 15 2 If an employee is selected at random, find these probabilities: a. the employee is a stock clerk or married P(clerk ∪ married) = b. the employee is not married P(not married) = c. the employee is a cashier or is unmarried P(cashier ∪ not married) = 3.4.1 Independent & Dependent Events Chapter 3: Introduction to Probability 15 Example 17 Example 18
  • 16. SQQS1013 Elementary Statistics • For two independent events, A and B, the occurrence of event A does not change the probability of B occurring. • The probability of independent events can be determined as: P( A | B ) = P(A) Or P( B | A ) = P(B) Multiplication Rule 1 When two events are independent, the probability of both occurring P(A ∩ B) = P(A) ⋅ P(B) A box contains 3 red balls, 2 blue balls, and 5 white balls. A ball is selected and its colour noted. Then it is replaced. A second ball is selected and its colour noted. Find the probability of each of these: a) selecting two blue balls. P (blue∩blue) = P(blue) ⋅ P(blue) b) selecting 1 blue ball and then 1 white ball. P (blue∩white) = P(blue) ⋅ P(white) c) selecting 1 red ball and then 1 blue ball. P(red∩blue) = P(red) ⋅ P(blue) Chapter 3: Introduction to Probability 16 Example 19 Example 20
  • 17. SQQS1013 Elementary Statistics A survey found that 68% of book buyers are 40 years or older. If two book buyers are selected at random, find the probability that both are 40 years or older. P (buyer) = • On the other hand, two events, A and B are dependent when the occurrence of the event A changes the probability of the occurrence of event B. • When two events are dependent, another multiplication rule can be used to find the probability. Multiplication Rule 2 When two events are dependent, the probability of both occurring P (A ∩ B) = P(A) ⋅ P( B | A ) In a scientific study there are 8 tigresses, 5 of which are pregnant. If 3 are selected at random without replacement, find the probability that: a) all tigresses are pregnant. Chapter 3: Introduction to Probability 17 2nd tigress1st tigress Example 21 PG PG PG, PG,PG PG PG PG PG PG PGPG PG PG PG PG 5 8 3 8 4 7 3 7 5 7 2 7 3 6 3 6 4 6 2 6 4 6 2 6 5 6 PG 1 6 PG,, PG PG,, , PG, PG PG, PG, , PG, ,, PG ,, 2nd tigress1st tigress 3rd tigress Outcomes
  • 18. SQQS1013 Elementary Statistics P(PG∩PG∩PG) = b) two tigresses are pregnant. Let A be an event of two tigresses are pregnant P(A) = 3.4.3 Complementary Events • The set of outcomes in the sample space that is not included in the outcomes of event E. • Denoted as E (read “E bar”) Find the complement of each event. a) Rolling a die and getting a 4 Answer: b) Selecting a letter of the alphabet and getting a vowel Answer: c) Selecting a day of the week and getting a weekday Answer: • The outcomes of an event and the outcomes of the complement make up the entire sample space. Chapter 3: Introduction to Probability 18 Example 22
  • 19. SQQS1013 Elementary Statistics • The rule of complementary events can be stated algebraically in three ways: )(1)( EPEP −= Or )(1)( EPEP −= Or 1)()( =+ EPEP • The concept can be represented pictorially by the following Venn Diagram. In a group of 2000 taxpayers, 400 have been audited by the IRS at least once. If one taxpayer is randomly selected from this group, what are the probability of that taxpayer has never been audited by the IRS? Solution: Let, A = the selected taxpayer has been audited by the IRS at least once A = the selected taxpayer has never been audited by the IRS • The multiplication rules can be used with the complementary event rule to simplify solving probability problems involving “at least”. In a department store there are 120 customers, 90 of whom will buy at least one item. If 4 customers are selected at random, one by one, find the probability that at least one of the customers will but at least one item. Would you consider this event likely to occur? Explain. Solution: Let C = at least one customer will buy at least one item C = none of the customers will buy at least one item P(will buy at least one item) = 90 / 120 = ¾ So, P(won’t buy any items) = 1 - 3/4 = ¼ By using the complementary event rule, Chapter 3: Introduction to Probability P(E) P(S)=1 P(E) )(EP 19 Example 23 Example 24 FORMULA ξ∆Σ λϖ β
  • 20. SQQS1013 Elementary Statistics )(1)( CPCP −= = = Yes, this event is most likely to occur (certain event) since the probability almost 1 NOTE: The following examples are based on the overall understanding of the entire probability concepts A random sample of 400 college students was asked if college athletes should be paid. The following table gives a two-way classification of the responses. Should be paid, D Should not be paid, D Total Student athlete, A 90 10 100 Student non-athlete, A 210 90 300 Total 300 100 400 a) If one student is randomly selected from these 400 students, find the probability that this student i. Is in favour of paying college athletes P(D) = ii. Favours paying college athletes given that the student selected is a non- athlete P(D | A ) = iii. Is an athlete and favours paying student athletes P(A ∩D) = iv. Is a non-athlete or is against paying student athletes P( A ∪ D ) = Chapter 3: Introduction to Probability 20 Example 25
  • 21. SQQS1013 Elementary Statistics b) Are the events “student athlete” and “should be paid” independent? Are they mutually exclusive? Explain why or why not. P(A∩D) = Since, P(A∩D) ≠ P(A) ⋅ P(D), those two events are not independent (dependent). And since P(A∩D) ≠ 0, those two events are not mutually exclusive A screening test for a certain disease is prone to giving false positives of false negatives. If a patient being tested has the disease, the probability that the test indicates a false negative is 0.13. If the patient does not have the disease, the probability that the test indicates a false positive is 0.10. Assume that 3% of the patients being tested actually have the disease. Suppose that one patient is chosen at random and tested. Find the probability that; Let D = the patient has the disease D = the patient does not have the disease N = the patient tests positive N = the patient tests negative Chapter 3: Introduction to Probability 21 Example 26
  • 22. SQQS1013 Elementary Statistics a) This patient has the disease and tests positive P(D∩N) = b) This patient does not have the disease and tests positive P( D ∩N) = c) This patient tests positive P(N) = d) This patient does not have the disease and tests negative P( D ∩ N ) = e) This patient has the disease given that he/she tests positive P(D | N) = Chapter 3: Introduction to Probability D D N N N N 0.03 0.97 0.13 0.87 0.10 0.90 P(D∩) P(D∩) P(∩) P(∩) Joint Probability 22
  • 23. SQQS1013 Elementary Statistics EXERCISE 1 1. For each of the following, indicate whether the type of probability involved is an example of classical probability, empirical probability or subjective probability: a) the next toss of a fair coin will land on heads. b) Italy will win soccer’s World Cup the next time the competition is held. c) the sum of the faces of two dice will be 7. d) the train taking a commuter to work will be more than 10 minutes late. 2. A test contains two multiple-choice questions. If a student makes a random guess to answer each question, how many outcomes are possible? Draw a tree diagram for this experiment. (Hint: Consider two outcomes for each question – either the answer is correct or it is wrong). 3. Refer to question 1. List all the outcomes included in each of the following events and mention which are simple and which are compound events. a) Both answers are correct. b) At most one answer is wrong. c) The first answer is correct and the second is wrong. d) Exactly one answer is wrong. 4. State whether the following events are independent or dependent. a) Getting a raise in salary and purchasing a new car. b) Having a large shoe size and having a high IQ. c) A father being left-handed and a daughter being left-handed. d) Eating an excessive amount of ice cream and smoking an excessive amount of cigarettes. 5. 88% of American children are covered by some type of health insurance. If four children are selected at random, what is the probability that none are covered? 6. A box of nine golf gloves contains two left-handed gloves and seven right-handed gloves. a) If two gloves are randomly selected from the box without replacement, what is the probability that both gloves selected will be right-handed? b) If three gloves are randomly selected from the box without replacement, what is the probability that all three will be left-handed? c) If three gloves are randomly selected from the box without replacement, what is the probability that at least one glove will be right-handed? Chapter 3: Introduction to Probability 23
  • 24. SQQS1013 Elementary Statistics 7. A financial analyst estimates that the probability that the economy will experience a recession in the next 12 months is 25%. She also believes that if the economy encounters recession, the probability that her mutual fund will increase in value is 20%. If there is no recession, the probability that the mutual fund will increase in value is 75%. Find the probability that the mutual fund’s value will increase. 8. A car rental agency currently has 44 cars available. 18 of which have a GPS navigation system. One of the 44 cars is selected at random, find the probability that this car, a) has a GPS navigation system. b) does not have a GPS navigation system. Now, two cars are selected at random from these 44 cars. Find the probability that at least one of these cars have GPS navigation system. 9. A recent study of 300 patients found that of 100 alcoholic patients, 87 had elevated cholesterol levels, and 200 non-alcoholic patients, 43 had elevated cholesterol levels. a) If a patient is selected at random, find the probability that the patient is the following, i. an alcoholic with elevated cholesterol level. ii. a non-alcoholic. iii. a non-alcoholic with non-elevated cholesterol level. b) Are the events “alcoholic” and “non-elevated cholesterol levels” independent? Are they mutually exclusive? Explain why or why not. 10. The probability that a randomly selected student from college is female is 0.55 and that a student works more than 10 hours per week is 0.62. If these two events are independent, find the probability that a randomly selected student is a a) male and works for more than 10 hours per week. b) female or works for more than 10 hours per week. 11. A housing survey studied how City Sun homeowners get to work. Suppose that the survey consisted of a sample of 1,000 homeowners and 1,000 renters. Drives to Work Homeowner Renter Yes 824 681 No 176 319 a) If a respondent is selected at random, what if the probability that he or she i. drives to work? ii. drives to work and is a homeowner? iii. does not drive to work or is a renter? b) Given that the respondent drives to work, what then is the probability that he or she is a homeowner? c) Given that the respondent drives to work, what then is the probability that he or she is a renter? Chapter 3: Introduction to Probability 24
  • 25. SQQS1013 Elementary Statistics d) Are the two events, driving to work and the respondent is a homeowner, independent? e) Purchased more products and changed brands? f) Given that a consumer changed the brands they purchased, what then is the probability that the consumer purchased fewer products than before? 12. Due to the devaluation which occurred in country PQR, the consumers of that country were buying fewer products than before the devaluation. Based on a study conducted, the results were reported as the following: Brands Purchased Number of Products Purchased Fewer Same More Same 10 14 24 Changed 262 82 8 What is the probability that a consumer selected at random: b) purchased fewer products than before? c) purchased the same number or same brands? d) purchased more products and changed brands? e) given that a consumer changed the brands they purchased, what then is the probability that the consumer purchased fewer products than before? 13. A soft-drink bottling company maintains records concerning the number of unacceptable bottles of soft drink from the filling and capping machines. Based on past data, the probability that a bottle came from machine I and was non-conforming is 0.01 and the probability that a bottle came from machine II and was non- confirming is 0.0025. If a filled bottle of soft drink is selected at random, what is the probability that a) it is a non-confirming bottle? b) it was filled on machine I and is a conforming bottle? c) it was filled on machine II or is a conforming bottle? d) suppose you know that the bottle was produced on machine I, what is the probability that it is non-conforming? 14. Each year, ratings are compiled concerning the performance of new cars during the first 90 days of use. Based on a study, the probability that the new car needs a warranty repair is 0.04, the probability that the car manufactured by Country ABC is 0.60, and the probability that the new car needs a warranty repair and was manufactured by Country ABC is 0.025. a) What is the probability that the car needs a warranty repair given that Country ABC manufactured it? Chapter 3: Introduction to Probability 25
  • 26. SQQS1013 Elementary Statistics b) What is the probability that the car needs a warranty repair given that Country ABC did not manufacture it? c) Are need for a warranty repair and country manufacturing the car statistically independent? 15. CASTWAY is a direct selling company which has 350 authorized sale agents from all over the country. It is known that 168 of them are male. 40% of male sale agents has permanent job while half of female sale agents do not have permanent job. a) Draw a tree diagram to illustrate the above events. b) What is the probability that a randomly selected sale agent, i. has permanent job? ii. is a male given that he does not have permanent job? EXERCISE 2 1. Given P(M) = 0.53, P(N) = 0.58 and P(M∩N) = 0.33. a) Complete the Van Diagram above with the probabilities value. b) Is event M and event N are mutually exclusive? Prove it. c) Is event M and event N are independent event? Prove it 2. The organizer has organized three games during the Lam’s family day. There are run with one leg (G), fill water in the bottle (B) and tug & war (T). 40 participants had participated in these games. Below is the Vann Diagram shown the number of participants for every game during the family day. a) Based on the Diagram above, find: i. a value. ii. The number of participant who participate in tug & war only. iii. The number of participant who participate in one game only. iv. The number of participant who participate more than one game. Chapter 3: Introduction to Probability 26 S M N S B G T 5 2a 9 2 2a 7 5
  • 27. SQQS1013 Elementary Statistics b) If one participant has been selected at random, find the probability the participant; i. Participate in fill water in the bottle game and run with one leg game only. ii. Participate in all games iii. Participate in tug & war game given he/she has participated in run with one leg game. 3. Harmony Cultural Club has organized three competitions; singing, dance and act contests. The competition has been organized during the different time and each contestant can participate more than one contest. Below is the Van Diagram for 100 contestants during these competitions. Based on the Venn diagram; a) Find the number of contestants who participated in dance and act contests. b) If one contestant has been selected at random, what is the probability the contestant participate in; i. one contest only ii. more than one contest iii. singing contest given he/she had join in act contest iv. except dance contest. 4. Xpress Link is a courier company with 300 staff with the qualification level shows in the Van diagram below. Some of the staffs hold more than one qualification. Based on the Vann diagram above, a) Find the number of staff who holds diploma and bachelor degree only. Chapter 3: Introduction to Probability 27 singing act dance 15 18 20 12 2a a 5 bachelor degree master degree diploma 36 2k 4k 50k 102
  • 28. SQQS1013 Elementary Statistics b) What is the probability one staff who has been selected at random holds; i. qualifications except master degree ii. three qualifications. c) Is the staff holds diploma and master degree is an independent event? Prove it. 5. Given P(A) = 0.3, P(B) = 0.6 and P (A ∩ B) = 0.2. Draw the Venn diagram to represents this statement. Then, find: a) P(B’) b) P(A ∪ B) c) P(B|A) d) P(A’ ∩ B) e) Are A and B is mutually exclusive? Prove it. 6. 5% from the total radio sales at the Nora’s electric shop will be returned back for repair by the buyer because the malfunctions of the radio in first six month. Given two radios has been sold last week. a) Draw the tree diagram to represent the above event. b) Find the probability that: i. both radios will be return back for repair ii. none of the radio has been returned back for repair iii. one of the radio will be returned back for repair iv. the second radio will be returned back for repair given the first radio had been return for repair. c) Are the events returning back both the radios for repair is independent event? Prove it. 7. There are three shipping company in Baltravia country; company R, S and T. These three companies have a cargo ship and passenger ship. Table below shows the information about the companies. Company Ship Type Total Cargo Passenger R 20 20 40 S 40 20 60 T 30 40 70 Total 90 80 a) Find the probability choosing a cargo ship from company S b) Find the probability choosing a ship belong to the company T given that the ship is a passenger ship. c) Build the tree diagram to show the selection of a ship from each company. d) Based on the answer (c), find the probability: i. all are cargo ships ii. all are from the same type of ships. 8. A marketing manager wants to promote a new product of his company named Osom. He has two marketing plan which are plan A and plan B. The probability he will Chapter 3: Introduction to Probability 28
  • 29. SQQS1013 Elementary Statistics choose plan A is 1/3. The probability he does not succeed to promote the product when using plan A and plan B is 1/5 and 1/6. a) Draw the tree diagram to represent the situation b) What is the probability that he does not succeed to promote the product? c) If he fails to promote the product, what is the probability he has used the plan B? 9. Two shooters have been selected to represent Malaysia in USIA game. The probability the first shooter bid the target is ½ and the probability second shooter miss the target is 1/3. The game will be started by first shooter and followed by the second shooter. Draw the tree diagram to represent the events. Then, find the probability: a) first shooter and second shooter bid the target b) only one shooter bids the target c) none of the shooter bid the target Chapter 3: Introduction to Probability 29
  • 30. SQQS1013 Elementary Statistics Matrix No: ________________ Group: _________ TUTORIAL CHAPTER 3 QUESTION 1 Nora Kindergarten would like to conduct a Sport Day. TABLE 1 shows the number of children based on their sport’s group. TABLE 1 Group Boy (B) Girl (G) Total Tuah (T) 60 70 130 Jebat (J) 30 10 40 Lekiu (L) 50 20 70 Total 140 100 240 a. If a child is selected at random, what is the probability that the child is: i. in Tuah or Jebat group ii. a boy and in Lekiu group Chapter 3: Introduction to Probability Tutorial 30
  • 31. SQQS1013 Elementary Statistics iii. in group Jebat given that the child is a girl. b. Are the event “female” and “Tuah” dependent? Prove it? Chapter 3: Introduction to Probability Tutorial 31
  • 32. SQQS1013 Elementary Statistics QUESTION 2 There are 100 students enrolled at Faculty of Sciences. Courses offered are Mathematics (M), Physics (F) and Chemistry (K). 10 students enrolled all courses. 25 students enrolled in Mathematics and Physics courses. 20 students enrolled in Physics and Chemistry courses. 28 students enrolled in Mathematics and Chemistry courses. 60 students enrolled in Mathematics course. 50 students enrolled in Physics course. 53 students enrolled in Chemistry course. a. By using the given information, i. plot a Venn diagram. ii. how many students do not enrolled in either Mathematics course or Physics course? Chapter 3: Introduction to Probability Tutorial 32
  • 33. SQQS1013 Elementary Statistics b. Based on a(i), if the students were randomly selected, what is the probability that a student: i. enrolled in only one course? ii. enrolled in Physics and Chemistry courses but do not enrolled in Mathematics course. Chapter 3: Introduction to Probability Tutorial 33