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Chapter 3 Statistics for Describing, Exploring, and Comparing Data Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. 3-1  Review and Preview 3-2  Measures of Center 3-3  Measures of Variation 3-4  Measures of Relative Standing and Boxplots
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Created by Tom Wegleitner, Centreville, Virginia Section 3-1  Review and Preview
[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Review
[object Object],[object Object],[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Preview
[object Object],[object Object],[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Preview
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Section 3-2 Measures of Center
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Key Concept Characteristics of center. Measures of center, including mean and median, as tools for analyzing data. Not only determine the value of each measure of center, but also interpret those values.
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Part 1
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Measure of Center ,[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Arithmetic Mean ,[object Object],[object Object],[object Object]
Notation ,[object Object],[object Object],[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved.
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Notation is pronounced ‘x-bar’ and denotes the mean of a set of  sample  values x   = n    x x   N µ   =    x
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Mean ,[object Object]
[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Median ,[object Object],[object Object],~
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Finding the Median 1. If the number of data values is odd, the median is the number located in the exact middle of the list. 2. If the number of data values is even, the median is found by computing the mean of the two middle numbers. First  sort  the values (arrange them in order), the follow one of these
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. 5.40  1.10  0.42 0.73  0.48  1.10  0.66  0.42   0.48  0.66 0.73  1.10  1.10  5.40 (in order - odd number of values) exact middle  MEDIAN   is 0.73  5.40  1.10  0.42 0.73  0.48  1.10 0.42   0.48  0.73 1.10  1.10  5.40 0.73 + 1.10 2 (in order - even number of values – no exact middle shared by two numbers) MEDIAN is 0.915
[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Mode Mode is the only measure of central tendency that can be used with  nominal  data Bimodal   two data values occur with the same greatest frequency Multimodal more than two data values occur with the same greatest frequency No Mode no data value is repeated
[object Object],[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. a.   5.40  1.10  0.42  0.73  0.48  1.10 b.   27  27  27  55  55  55  88  88  99 c.   1  2  3  6  7  8  9  10 Mode - Examples
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Definition Midrange   = maximum value + minimum value 2
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Midrange ,[object Object],(1) very easy to compute (2) reinforces that there are several ways to define the center (3) Avoids confusion with median
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Round-off Rule for  Measures of Center
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Critical Thinking Think about whether the results are reasonable.
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Part 2
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Mean from a Frequency  Distribution
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Mean from a Frequency  Distribution
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Weighted Mean When data values are assigned different weights, we can compute a  weighted mean . x   = w    ( w  •   x ) 
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Best Measure of  Center
[object Object],[object Object],[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Skewed and Symmetric
[object Object],[object Object],[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Skewed Left or Right
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Shape of the Distribution
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Skewness
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Recap In this section we have discussed: ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Section 3-3  Measures of Variation
Key Concept Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Discuss characteristics of variation, in particular, measures of variation, such as standard deviation, for analyzing data. Make  understanding  and   interpreting   the standard deviation a priority.
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Part 1
Definition ,[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Range = (maximum value) – (minimum value) It is very sensitive to extreme values; therefore not as useful as other measures of variation.
Round-Off Rule for Measures of Variation Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education When rounding the value of a measure of variation, carry one more decimal place than is present in the original set of data. Round only the final answer, not values in the middle of a calculation.
Definition Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The   standard deviation   of a set of sample values, denoted by  s , is a measure of variation of values about the mean.
Sample Standard  Deviation Formula Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education    ( x  –  x ) 2 n  –   1 s   =
Sample Standard Deviation (Shortcut Formula) Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education n  ( n  –   1 ) s   = n  x 2 )   –   (  x ) 2
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Standard Deviation -  Important Properties ,[object Object],[object Object],[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Comparing Variation in Different Samples It’s a good practice to compare two sample standard deviations only when the sample means are approximately the same. When comparing variation in samples with very different means, it is better to use the coefficient of variation, which is defined later in this section.
Population Standard  Deviation Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education 2    ( x  –  µ ) N    = This formula is similar to the previous formula, but instead, the population mean and population size are used.
Variance Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education ,[object Object],[object Object],[object Object]
Unbiased Estimator Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The sample variance  s 2  is an  unbiased estimator  of the population variance   2 ,  which means values of  s 2  tend to target the value of   2  instead of systematically tending to overestimate or underestimate   2 .
Variance - Notation Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education s   =   sample  standard deviation s 2   =  sample  variance    =   population  standard deviation    2   =   population  variance
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Part 2
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Range Rule of Thumb is based on the principle that for many data sets, the vast majority (such as 95%) of sample values lie within two standard deviations of the mean.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Range Rule of Thumb for  Interpreting a Known Value of the  Standard Deviation Informally define  usual   values in a data set to be those that are typical and not too extreme. Find rough estimates of the minimum and maximum “usual” sample values as follows: Minimum “usual” value  (mean) – 2    (standard deviation) = Maximum “usual” value  (mean) + 2    (standard deviation) =
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Range Rule of Thumb for  Estimating a Value of the Standard Deviation  s To roughly estimate the standard deviation from a collection of known sample data use where range = (maximum value) – (minimum value) range 4 s   
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Properties of the Standard Deviation ,[object Object],[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Properties of the Standard Deviation ,[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Empirical (or 68-95-99.7) Rule For  data sets having a distribution that is approximately bell shaped , the following properties apply: ,[object Object],[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The Empirical Rule
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The Empirical Rule
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The Empirical Rule
Chebyshev’s Theorem Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The proportion (or fraction) of any set of data lying within  K  standard deviations of the mean is always  at least  1–1/ K 2 , where  K  is any positive number greater than 1. ,[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Rationale for using  n  – 1 versus  n There are only  n  – 1 independent values. With a given mean, only  n  – 1 values can be freely assigned any number before the last value is determined. Dividing by  n  – 1 yields better results than dividing by  n . It causes  s 2  to target   2  whereas division by  n  causes  s 2  to underestimate   2 .
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Coefficient of Variation The   coefficient of variation   (or  CV ) for a set of nonnegative sample or population data, expressed as a percent, describes the standard deviation relative to the mean. Sample Population s x CV  =  100%  CV  =   100%
Recap Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education In this section we have looked at: ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Section 3-4 Measures of Relative Standing and Boxplots
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Key Concept This section introduces measures of relative standing, which are numbers showing the location of data values relative to the other values within a data set. They can be used to compare values from different data sets, or to compare values within the same data set.  The most important concept is the   z  score . We will also discuss percentiles and quartiles, as well as a new statistical graph called the boxplot.
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Part 1
[object Object],[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Z score
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Population Round  z  scores to 2 decimal places Measures of Position  z  Score x  –  µ z  =  z  = x  –  x s
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Interpreting  Z  Scores Whenever a value is less than the mean, its corresponding  z  score is negative Ordinary values:  –2 ≤  z  score ≤ 2 Unusual Values:  z  score < –2  or  z  score > 2
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Percentiles are measures of location. There are 99   percentiles  denoted  P 1 ,  P 2 , . . .  P 99 , which divide a set of data into 100 groups with about 1% of the values in each group.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Finding the Percentile  of a Data Value Percentile of value  x  =   •   100 number of values less than  x total number of values
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. n   total number of values in the data set k   percentile being used L locator that gives the  position  of a value P k   k th percentile Notation Converting from the  k th Percentile to the Corresponding Data Value L =  •  n k 100
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Converting from the  k th Percentile to the  Corresponding Data Value
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Quartiles ,[object Object],[object Object],[object Object],Are measures of location, denoted  Q 1 ,  Q 2 , and  Q 3 , which divide a set of data into four groups with about 25% of the values in each group.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Q 1 ,  Q 2 ,  Q 3   divide   ranked   scores into four equal parts Quartiles 25% 25% 25% 25% Q 3 Q 2 Q 1 (minimum) (maximum) (median)
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. ,[object Object],[object Object],Some Other Statistics ,[object Object],2 Q 3   –  Q 1 ,[object Object],2 Q 3   +  Q 1
[object Object],5-Number Summary Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved.
[object Object],Boxplot Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved.
Boxplots Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Boxplot of Movie Budget Amounts
Boxplots - Normal Distribution Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Normal Distribution: Heights from a Simple Random Sample of Women
Boxplots - Skewed Distribution Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Skewed Distribution: Salaries (in thousands of dollars) of NCAA Football Coaches
[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Part 2
Outliers ,[object Object],Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Important Principles ,[object Object],[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Outliers for Modified Boxplots For purposes of constructing  modified boxplots , we can consider outliers to be data values meeting specific criteria. In modified boxplots, a data value is an outlier if it is . . . above  Q 3  by an amount greater than 1.5    IQR below  Q 1  by an amount greater than 1.5    IQR or
Modified Boxplots Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Boxplots described earlier are called  skeletal  (or  regular ) boxplots. Some statistical packages provide  modified boxplots  which represent outliers as special points.
Modified Boxplot Construction Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. ,[object Object],[object Object],A modified boxplot is constructed with these specifications:
Modified Boxplots - Example Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Pulse rates of females listed in Data Set 1 in Appendix B.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Recap In this section we have discussed: ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Putting It All Together Always consider certain key factors: ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]

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Triola 11 chapter 3

  • 1. Chapter 3 Statistics for Describing, Exploring, and Comparing Data Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. 3-1 Review and Preview 3-2 Measures of Center 3-3 Measures of Variation 3-4 Measures of Relative Standing and Boxplots
  • 2. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Created by Tom Wegleitner, Centreville, Virginia Section 3-1 Review and Preview
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  • 6. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Section 3-2 Measures of Center
  • 7. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Key Concept Characteristics of center. Measures of center, including mean and median, as tools for analyzing data. Not only determine the value of each measure of center, but also interpret those values.
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  • 15. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Finding the Median 1. If the number of data values is odd, the median is the number located in the exact middle of the list. 2. If the number of data values is even, the median is found by computing the mean of the two middle numbers. First sort the values (arrange them in order), the follow one of these
  • 16. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. 5.40 1.10 0.42 0.73 0.48 1.10 0.66 0.42 0.48 0.66 0.73 1.10 1.10 5.40 (in order - odd number of values) exact middle MEDIAN is 0.73 5.40 1.10 0.42 0.73 0.48 1.10 0.42 0.48 0.73 1.10 1.10 5.40 0.73 + 1.10 2 (in order - even number of values – no exact middle shared by two numbers) MEDIAN is 0.915
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  • 26. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Weighted Mean When data values are assigned different weights, we can compute a weighted mean . x = w  ( w • x ) 
  • 27. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Best Measure of Center
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  • 31. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Skewness
  • 32.
  • 33. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Section 3-3 Measures of Variation
  • 34. Key Concept Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Discuss characteristics of variation, in particular, measures of variation, such as standard deviation, for analyzing data. Make understanding and interpreting the standard deviation a priority.
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  • 36.
  • 37. Round-Off Rule for Measures of Variation Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education When rounding the value of a measure of variation, carry one more decimal place than is present in the original set of data. Round only the final answer, not values in the middle of a calculation.
  • 38. Definition Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The standard deviation of a set of sample values, denoted by s , is a measure of variation of values about the mean.
  • 39. Sample Standard Deviation Formula Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education  ( x – x ) 2 n – 1 s =
  • 40. Sample Standard Deviation (Shortcut Formula) Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education n ( n – 1 ) s = n  x 2 ) – (  x ) 2
  • 41.
  • 42. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Comparing Variation in Different Samples It’s a good practice to compare two sample standard deviations only when the sample means are approximately the same. When comparing variation in samples with very different means, it is better to use the coefficient of variation, which is defined later in this section.
  • 43. Population Standard Deviation Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education 2  ( x – µ ) N  = This formula is similar to the previous formula, but instead, the population mean and population size are used.
  • 44.
  • 45. Unbiased Estimator Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The sample variance s 2 is an unbiased estimator of the population variance  2 , which means values of s 2 tend to target the value of  2 instead of systematically tending to overestimate or underestimate  2 .
  • 46. Variance - Notation Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education s = sample standard deviation s 2 = sample variance  = population standard deviation  2 = population variance
  • 47.
  • 48. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Range Rule of Thumb is based on the principle that for many data sets, the vast majority (such as 95%) of sample values lie within two standard deviations of the mean.
  • 49. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Range Rule of Thumb for Interpreting a Known Value of the Standard Deviation Informally define usual values in a data set to be those that are typical and not too extreme. Find rough estimates of the minimum and maximum “usual” sample values as follows: Minimum “usual” value (mean) – 2  (standard deviation) = Maximum “usual” value (mean) + 2  (standard deviation) =
  • 50. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Range Rule of Thumb for Estimating a Value of the Standard Deviation s To roughly estimate the standard deviation from a collection of known sample data use where range = (maximum value) – (minimum value) range 4 s 
  • 51.
  • 52.
  • 53.
  • 54. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The Empirical Rule
  • 55. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The Empirical Rule
  • 56. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education The Empirical Rule
  • 57.
  • 58. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Rationale for using n – 1 versus n There are only n – 1 independent values. With a given mean, only n – 1 values can be freely assigned any number before the last value is determined. Dividing by n – 1 yields better results than dividing by n . It causes s 2 to target  2 whereas division by n causes s 2 to underestimate  2 .
  • 59. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Copyright © 2010 Pearson Education Coefficient of Variation The coefficient of variation (or CV ) for a set of nonnegative sample or population data, expressed as a percent, describes the standard deviation relative to the mean. Sample Population s x CV =  100%  CV =   100%
  • 60.
  • 61. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Section 3-4 Measures of Relative Standing and Boxplots
  • 62. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Key Concept This section introduces measures of relative standing, which are numbers showing the location of data values relative to the other values within a data set. They can be used to compare values from different data sets, or to compare values within the same data set. The most important concept is the z score . We will also discuss percentiles and quartiles, as well as a new statistical graph called the boxplot.
  • 63.
  • 64.
  • 65.
  • 66. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Interpreting Z Scores Whenever a value is less than the mean, its corresponding z score is negative Ordinary values: –2 ≤ z score ≤ 2 Unusual Values: z score < –2 or z score > 2
  • 67. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Percentiles are measures of location. There are 99 percentiles denoted P 1 , P 2 , . . . P 99 , which divide a set of data into 100 groups with about 1% of the values in each group.
  • 68. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Finding the Percentile of a Data Value Percentile of value x = • 100 number of values less than x total number of values
  • 69. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. n total number of values in the data set k percentile being used L locator that gives the position of a value P k k th percentile Notation Converting from the k th Percentile to the Corresponding Data Value L = • n k 100
  • 70. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Converting from the k th Percentile to the Corresponding Data Value
  • 71.
  • 72. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Q 1 , Q 2 , Q 3 divide ranked scores into four equal parts Quartiles 25% 25% 25% 25% Q 3 Q 2 Q 1 (minimum) (maximum) (median)
  • 73.
  • 74.
  • 75.
  • 76. Boxplots Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Boxplot of Movie Budget Amounts
  • 77. Boxplots - Normal Distribution Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Normal Distribution: Heights from a Simple Random Sample of Women
  • 78. Boxplots - Skewed Distribution Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Skewed Distribution: Salaries (in thousands of dollars) of NCAA Football Coaches
  • 79.
  • 80.
  • 81.
  • 82. Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Outliers for Modified Boxplots For purposes of constructing modified boxplots , we can consider outliers to be data values meeting specific criteria. In modified boxplots, a data value is an outlier if it is . . . above Q 3 by an amount greater than 1.5  IQR below Q 1 by an amount greater than 1.5  IQR or
  • 83. Modified Boxplots Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Boxplots described earlier are called skeletal (or regular ) boxplots. Some statistical packages provide modified boxplots which represent outliers as special points.
  • 84.
  • 85. Modified Boxplots - Example Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Pulse rates of females listed in Data Set 1 in Appendix B.
  • 86.
  • 87.