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Probability
Theoretical Probability And Experimental
Probability

Probability
Finding Probability Using Complement of a
Known Event
Probability
A student tosses a coin 1000 times out of which 520
times head comes up and 480 times tail comes up.
The probability of getting a head is the ratio of the
number of times head comes up to the total
number of times he tosses the coin.
Probability of getting a head = 520/1000
= 0.52
Similarly, probability of getting a tail = 480/1000
= 0.48
These are the probabilities obtained from the
result of an experiment when we actually perform
the experiment. The probabilities that we found
above are called experimental (or empirical)
probabilities.
•
•
•
Using this formula, let us try to find the
probability of getting at least one head.
The numbers of possible outcomes by tossing two
coins simultaneously are as follows.
HH, HT, TH, TT
∴ Total number of outcomes = 4
The favorable outcomes for getting at least one
head are
HH, HT, TH
∴ Number of favorable outcomes = 3
Probability of getting at least one head = 3/4
= 0.75
Probability
(b) 7
Solution: (b) Getting 7
There is no favorable outcome as we
cannot get 7 by throwing a dice.
∴ Number of favorable outcomes = 0
∴ Probability of getting 7 on the upper
face of the dice = 0/6=0
Probability
(d) An even number
Solution: Getting an even number
The favorable outcomes are 2, 4, and 6.
∴ Number of favorable outcomes = 3
∴ Probability of getting an even number = 3/6 = ½

(e) a number less than or equal to 5
Solution: Getting a number less than equal to 5
The favorable outcomes are 1, 2, 3, 4, and 5.
∴ Number of favorable outcomes = 5
∴ Probability of getting a number less than equal
to 5 = 5/6
Probability
Example 2:
In tossing three coins simultaneously, find the
probability of getting
Solution: In tossing three coins, the possible
outcomes are HHH, HTT, THT, TTH, HHT, HTH,
THH, and TTT.
∴ Number of all possible outcomes = 8
(a) At least one head
Solution: Let E be the event of getting at least one
head. The outcomes favorable to E are HHH, HTT,
THT, TTH, HHT, HTH, and THH.
∴ Number of outcomes favorable to E = 7
∴ P (E) = 7/8
(b) at most one tail
Solution: Let E be the event of getting at most one
tail.
The outcomes favorable to event E are HHH, HHT,
HTH, and THH.
∴ Number of outcomes favorable to E = 4
∴ P (E) = 4/8 = ½

(c) at most two heads
Solution: Let E be the event of getting at most two
heads.
The outcomes favorable to E are HTT, THT, TTH,
HHT, HTH, THH and TTT.
∴ Number of outcomes favorable to E = 7
∴ P (E) = 7/8
Probability
(f) No head at all
Solution: Let E be the event of getting no head at all.
The outcome favorable to E is TTT.
∴ Number of outcomes favorable to E = 1
∴ P (E) = 1/8
(g) At least one head but at most two heads
Solution: (g) Let E be the event of getting at least one
head but at most two heads.
The outcomes favorable to E are HTT, THT, TTH, HHT,
HTH, and THH.
∴ Number of outcomes favorable to E = 6/8 = 3/4
Probability
From a pack of cards, five of club and spade, jack of
heart, ten of diamond and spade, and queen of club
is put aside and then the remaining cards are well
shuffled. Find the probability of getting
(a) a card of red queen
Solution: After taking out 6 cards (five of club and
spade, jack of heart, ten of diamond and spade, and
queen of club) from 52 cards, we are left with 46
cards.
∴ Number of possible outcomes = 46
(a) Let E be the event of getting a card of red queen.
Number of outcomes favorable to E = 2 (A queen of
diamond and a queen of heart)
∴ P (E) = 2/46 = 1/23
Probability
Probability
(f) An ace
Solution: Let E be the event of getting an ace.
Number of outcomes favorable to E = 4
∴ P (E) = 4/46 = 2/23
(g) A face card
Solution: Let E be the event of getting a face card.
Number of outcomes favorable to E = 10 (Already
two face cards have been removed)
∴ P (E) = 10/46 = 5/23
(h) a black face card
Solution: Let E be the event of getting a
black face card.
Number of outcomes favorable to E = 5
(Already queen of club has been removed)
∴ P (E) = 5/46
Finding Probability Using Complement
of a Known Event
•
•
•
The outcomes favorable to this event are 1, 2, 3, 4,
and 6.
Number of favorable outcomes = 5
P (not getting 5) = 5/6
We can also see that P (getting 5) + P (not getting
5) = 1/6 + 5/6 = 1
“Sum of probabilities of occurrence and non
occurrence of an event is 1”.
i.e. If E is the event, then P (E) + P (not E) = 1 … (1)
or we can write P(E) = 1 − P (not E)
Here, the events of getting a number 5
and not getting 5 are complements of
each other as we cannot find an
observation which is common to the
two observations.
Thus, not E is the complement of the
event E and is denoted by Ē= not E.
Using equation (1), we can write
P (E) + P( Ē) = 1
Example 1:
One card is drawn from a well shuffled deck. What is
the probability that the card will be
(i) a king?
Solution: Let E be the event ‘the card is a king’ and F be
the event ‘the card is not a king’.
Solution: (i) Since there are 4 kings in a deck,
Number of outcomes favorable to E = 4
Number of possible outcomes = 52
P (E) = 4/52 = 1/13
Here, the events E and F are complements of each
other.
∴ P(E) + P(F) = 1
P(F) = 1 − 1/13
12/13
Example 2:
If the probability of an event A is 0.12 and B is
0.88 and they belong to the same set of
observations, then show that A and B are
complementary events.
Solution:
It is given that P (A) = 0.12 and P (B) = 0.88
Now, P(A) + P(B) = 0.12 + 0.88 = 1
The events A and B are complementary events.
Probability
Example 4:
In a box, there are 2 red, 5 blue, and 7 black
marbles. One marble is drawn from the box at
random. What is the probability that the marble
drawn will be (i) red
Solution: Since the marble is drawn at random, all
the marbles are equally likely to be drawn.
Total number of marbles = 2 + 5 + 7 = 14
Let A be the event ‘the marble is red’, B be the
event ‘the marble is blue’ and C be the event ‘the
marble is black.
(i) Number of outcomes favorable to event A = 2
P (A) = 2/14 = 1/7
(ii) Blue
Solution: Number of outcomes favorable to event B = 5
∴ P (B) = 5/14

(iii) black
Solution: Number of outcomes favorable to event C = 7
P (C) = 7/14 = ½
(iv) not blue
Solution: We have, P (B)
The event of drawing a marble which is not blue is the
complement of event B.
P = 1 − P (B) = 1 − 5/14 = 9/14
Thus, the probability of drawing a marble which is not
blue is .
Thank you
Made by- Anushka Ninama
Class- 10th
Make sure 2 leave ur
comments….

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Probability

  • 2. Theoretical Probability And Experimental Probability Probability Finding Probability Using Complement of a Known Event
  • 4. A student tosses a coin 1000 times out of which 520 times head comes up and 480 times tail comes up. The probability of getting a head is the ratio of the number of times head comes up to the total number of times he tosses the coin. Probability of getting a head = 520/1000 = 0.52 Similarly, probability of getting a tail = 480/1000 = 0.48 These are the probabilities obtained from the result of an experiment when we actually perform the experiment. The probabilities that we found above are called experimental (or empirical) probabilities.
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  • 8. Using this formula, let us try to find the probability of getting at least one head. The numbers of possible outcomes by tossing two coins simultaneously are as follows. HH, HT, TH, TT ∴ Total number of outcomes = 4 The favorable outcomes for getting at least one head are HH, HT, TH ∴ Number of favorable outcomes = 3 Probability of getting at least one head = 3/4 = 0.75
  • 10. (b) 7 Solution: (b) Getting 7 There is no favorable outcome as we cannot get 7 by throwing a dice. ∴ Number of favorable outcomes = 0 ∴ Probability of getting 7 on the upper face of the dice = 0/6=0
  • 12. (d) An even number Solution: Getting an even number The favorable outcomes are 2, 4, and 6. ∴ Number of favorable outcomes = 3 ∴ Probability of getting an even number = 3/6 = ½ (e) a number less than or equal to 5 Solution: Getting a number less than equal to 5 The favorable outcomes are 1, 2, 3, 4, and 5. ∴ Number of favorable outcomes = 5 ∴ Probability of getting a number less than equal to 5 = 5/6
  • 14. Example 2: In tossing three coins simultaneously, find the probability of getting Solution: In tossing three coins, the possible outcomes are HHH, HTT, THT, TTH, HHT, HTH, THH, and TTT. ∴ Number of all possible outcomes = 8 (a) At least one head Solution: Let E be the event of getting at least one head. The outcomes favorable to E are HHH, HTT, THT, TTH, HHT, HTH, and THH. ∴ Number of outcomes favorable to E = 7 ∴ P (E) = 7/8
  • 15. (b) at most one tail Solution: Let E be the event of getting at most one tail. The outcomes favorable to event E are HHH, HHT, HTH, and THH. ∴ Number of outcomes favorable to E = 4 ∴ P (E) = 4/8 = ½ (c) at most two heads Solution: Let E be the event of getting at most two heads. The outcomes favorable to E are HTT, THT, TTH, HHT, HTH, THH and TTT. ∴ Number of outcomes favorable to E = 7 ∴ P (E) = 7/8
  • 17. (f) No head at all Solution: Let E be the event of getting no head at all. The outcome favorable to E is TTT. ∴ Number of outcomes favorable to E = 1 ∴ P (E) = 1/8 (g) At least one head but at most two heads Solution: (g) Let E be the event of getting at least one head but at most two heads. The outcomes favorable to E are HTT, THT, TTH, HHT, HTH, and THH. ∴ Number of outcomes favorable to E = 6/8 = 3/4
  • 19. From a pack of cards, five of club and spade, jack of heart, ten of diamond and spade, and queen of club is put aside and then the remaining cards are well shuffled. Find the probability of getting (a) a card of red queen Solution: After taking out 6 cards (five of club and spade, jack of heart, ten of diamond and spade, and queen of club) from 52 cards, we are left with 46 cards. ∴ Number of possible outcomes = 46 (a) Let E be the event of getting a card of red queen. Number of outcomes favorable to E = 2 (A queen of diamond and a queen of heart) ∴ P (E) = 2/46 = 1/23
  • 22. (f) An ace Solution: Let E be the event of getting an ace. Number of outcomes favorable to E = 4 ∴ P (E) = 4/46 = 2/23 (g) A face card Solution: Let E be the event of getting a face card. Number of outcomes favorable to E = 10 (Already two face cards have been removed) ∴ P (E) = 10/46 = 5/23
  • 23. (h) a black face card Solution: Let E be the event of getting a black face card. Number of outcomes favorable to E = 5 (Already queen of club has been removed) ∴ P (E) = 5/46
  • 24. Finding Probability Using Complement of a Known Event
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  • 28. The outcomes favorable to this event are 1, 2, 3, 4, and 6. Number of favorable outcomes = 5 P (not getting 5) = 5/6 We can also see that P (getting 5) + P (not getting 5) = 1/6 + 5/6 = 1 “Sum of probabilities of occurrence and non occurrence of an event is 1”. i.e. If E is the event, then P (E) + P (not E) = 1 … (1) or we can write P(E) = 1 − P (not E)
  • 29. Here, the events of getting a number 5 and not getting 5 are complements of each other as we cannot find an observation which is common to the two observations. Thus, not E is the complement of the event E and is denoted by Ē= not E. Using equation (1), we can write P (E) + P( Ē) = 1
  • 30. Example 1: One card is drawn from a well shuffled deck. What is the probability that the card will be (i) a king? Solution: Let E be the event ‘the card is a king’ and F be the event ‘the card is not a king’. Solution: (i) Since there are 4 kings in a deck, Number of outcomes favorable to E = 4 Number of possible outcomes = 52 P (E) = 4/52 = 1/13 Here, the events E and F are complements of each other. ∴ P(E) + P(F) = 1 P(F) = 1 − 1/13 12/13
  • 31. Example 2: If the probability of an event A is 0.12 and B is 0.88 and they belong to the same set of observations, then show that A and B are complementary events. Solution: It is given that P (A) = 0.12 and P (B) = 0.88 Now, P(A) + P(B) = 0.12 + 0.88 = 1 The events A and B are complementary events.
  • 33. Example 4: In a box, there are 2 red, 5 blue, and 7 black marbles. One marble is drawn from the box at random. What is the probability that the marble drawn will be (i) red Solution: Since the marble is drawn at random, all the marbles are equally likely to be drawn. Total number of marbles = 2 + 5 + 7 = 14 Let A be the event ‘the marble is red’, B be the event ‘the marble is blue’ and C be the event ‘the marble is black. (i) Number of outcomes favorable to event A = 2 P (A) = 2/14 = 1/7
  • 34. (ii) Blue Solution: Number of outcomes favorable to event B = 5 ∴ P (B) = 5/14 (iii) black Solution: Number of outcomes favorable to event C = 7 P (C) = 7/14 = ½ (iv) not blue Solution: We have, P (B) The event of drawing a marble which is not blue is the complement of event B. P = 1 − P (B) = 1 − 5/14 = 9/14 Thus, the probability of drawing a marble which is not blue is .
  • 35. Thank you Made by- Anushka Ninama Class- 10th Make sure 2 leave ur comments….