1 / 30

Chapter 3 Section 4

Chapter 3 Section 4. Measures of Position. 1. 2. 3. 4. Chapter 3 – Section 4. Learning objectives Determine and interpret z -scores Determine and interpret percentiles Determine and interpret quartiles Check a set of data for outliers. Chapter 3 – Section 4.

malaya
Download Presentation

Chapter 3 Section 4

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Chapter 3Section 4 Measures of Position

  2. 1 2 3 4 Chapter 3 – Section 4 • Learning objectives • Determine and interpret z-scores • Determine and interpret percentiles • Determine and interpret quartiles • Check a set of data for outliers

  3. Chapter 3 – Section 4 • Mean / median describe the “center” of the data • Variance / standard deviation describe the “spread” of the data • This section discusses more precise ways to describe the relative position of a data value within the entire set of data

  4. 2 3 4 1 Chapter 3 – Section 4 • Learning objectives • Determine and interpret z-scores • Determine and interpret percentiles • Determine and interpret quartiles • Check a set of data for outliers

  5. Chapter 3 – Section 4 • The standard deviation is a measure of dispersion that uses the same dimensions as the data (remember the empirical rule) • The standard deviation is a measure of dispersion that uses the same dimensions as the data (remember the empirical rule) • The distance of a data value from the mean, calculated as the number of standard deviations, would be a useful measurement • The standard deviation is a measure of dispersion that uses the same dimensions as the data (remember the empirical rule) • The distance of a data value from the mean, calculated as the number of standard deviations, would be a useful measurement • This distance is called the z-score

  6. If the mean was 20 and the standard deviation was 6 • The value 26 would have • a z-score of 1.0 • (1.0 standard deviation • higher than the mean)

  7. If the mean was 20 and the standard deviation was 6 • The value 14 would have • a z-score of –1.0 • (1.0 standard deviation • lower than the mean)

  8. If the mean was 20 and the standard deviation was 6 • The value 17 would have • a z-score of –0.5 • (0.5 standard deviations • lower than the mean)

  9. If the mean was 20 and the standard deviation was 6 The value 20 would have a z-score of 0.0

  10. Chapter 3 – Section 4 • The population z-score is calculated using the population mean and population standard deviation • The population z-score is calculated using the population mean and population standard deviation • The sample z-score is calculated using the sample mean and sample standard deviation

  11. Chapter 3 – Section 4 • z-scores can be used to compare the relative positions of data values in different samples • z-scores can be used to compare the relative positions of data values in different samples • Pat received a grade of 82 on her statistics exam where the mean grade was 74 and the standard deviation was 12 • z-scores can be used to compare the relative positions of data values in different samples • Pat received a grade of 82 on her statistics exam where the mean grade was 74 and the standard deviation was 12 • Pat received a grade of 72 on her biology exam where the mean grade was 65 and the standard deviation was 10 • z-scores can be used to compare the relative positions of data values in different samples • Pat received a grade of 82 on her statistics exam where the mean grade was 74 and the standard deviation was 12 • Pat received a grade of 72 on her biology exam where the mean grade was 65 and the standard deviation was 10 • Pat received a grade of 91 on her kayaking exam where the mean grade was 88 and the standard deviation was 6

  12. Chapter 3 – Section 4 • Statistics • Grade of 82 • z-score of (82 – 74) / 12 = .67 • Statistics • Grade of 82 • z-score of (82 – 74) / 12 = .67 • Biology • Grade of 72 • z-score of (72 – 65) / 10 = .70 • Statistics • Grade of 82 • z-score of (82 – 74) / 12 = .67 • Biology • Grade of 72 • z-score of (72 – 65) / 10 = .70 • Kayaking • Grade of 81 • z-score of (91 – 88) / 6 = .50 • Statistics • Grade of 82 • z-score of (82 – 74) / 12 = .67 • Biology • Grade of 72 • z-score of (72 – 65) / 10 = .70 • Kayaking • Grade of 81 • z-score of (91 – 88) / 6 = .50 • Biology was the highest relative grade

  13. Remember the Empirical Rule: 68-95-99.7

  14. A manufacture of bolts has a quality-control policy that requires it to destroy any bolts that are more than 2 standard deviations from the mean. The mean of the bolts is 8 cm with a standard deviation of 0.05 cm. • For what lengths will the bolts be destroyed? • What percentage of the bolts will be destroyed?

  15. A manufacture of bolts has a quality-control policy that requires it to destroy any bolts that are more than 2 standard deviations from the mean. The mean of the bolts is 8 cm with a standard deviation of 0.05 cm. • For what lengths will the bolts be destroyed?

  16. A manufacture of bolts has a quality-control policy that requires it to destroy any bolts that are more than 2 standard deviations from the mean. The mean of the bolts is 8 cm with a standard deviation of 0.05 cm. • For what lengths will the bolts be destroyed? • What percentage of the bolts will be destroyed?

  17. 1 3 4 2 Chapter 3 – Section 4 • Learning objectives • Determine and interpret z-scores • Determine and interpret percentiles • Determine and interpret quartiles • Check a set of data for outliers

  18. Chapter 3 – Section 4 • The median divides the lower 50% of the data from the upper 50% • The median is the 50th percentile • If a number divides the lower 34% of the data from the upper 66%, that number is the 34th percentile

  19. Chapter 3 – Section 4 • The computation is similar to the one for the median • Calculation • Arrange the data in ascending order • Compute the index i using the formula • If i is an integer, take the ith data value • If i is not an integer, take the mean of the two values on either side of i

  20. Chapter 3 – Section 4 • Compute the 60th percentile of 1, 3, 4, 7, 8, 15, 16, 19, 23, 24, 27, 31, 33, 34 • Compute the 60th percentile of 1, 3, 4, 7, 8, 15, 16, 19, 23, 24, 27, 31, 33, 34 • Calculations • There are 14 numbers (n = 14) • The 60th percentile (k = 60) • The index • Compute the 60th percentile of 1, 3, 4, 7, 8, 15, 16, 19, 23, 24, 27, 31, 33, 34 • Calculations • There are 14 numbers (n = 14) • The 60th percentile (k = 60) • The index • Take the 9th value, or P60 = 23, as the 60th percentile

  21. Chapter 3 – Section 4 • Compute the 28th percentile of 1, 3, 4, 7, 8, 15, 16, 19, 23, 24, 27, 31, 33, 54 • Compute the 28th percentile of 1, 3, 4, 7, 8, 15, 16, 19, 23, 24, 27, 31, 33, 54 • Calculations • There are 14 numbers (n = 14) • The 28th percentile (k = 28) • The index • Compute the 28th percentile of 1, 3, 4, 7, 8, 15, 16, 19, 23, 24, 27, 31, 33, 54 • Calculations • There are 14 numbers (n = 14) • The 28th percentile (k = 28) • The index • Take the average of the 4th and 5th values, orP28 = (7 + 8) / 2 = 7.5, as the 28th percentile

  22. 1 2 4 3 Chapter 3 – Section 4 • Learning objectives • Determine and interpret z-scores • Determine and interpret percentiles • Determine and interpret quartiles • Check a set of data for outliers

  23. Chapter 3 – Section 4 • The quartiles are the 25th, 50th, and 75th percentiles • Q1 = 25th percentile / also median of the lower 50% • Q2 = 50th percentile = median • Q3 = 75th percentile / also median of the upper 50% • Quartiles are the most commonly used percentiles • The 50th percentile and the second quartile Q2 are both other ways of defining the median

  24. Chapter 3 – Section 4 • Quartiles divide the data set into four equal parts • Quartiles divide the data set into four equal parts • Quartiles divide the data set into four equal parts • Quartiles divide the data set into four equal parts • The topquarter are the values between Q3 and the maximum • Quartiles divide the data set into four equal parts • The topquarter are the values between Q3 and the maximum • The bottomquarter are the values between the minimum and Q1

  25. Chapter 3 – Section 4 • Quartiles divide the data set into four equal parts • The interquartilerange (IQR) is the difference between the third and first quartiles IQR = Q3 – Q1 • The IQR is a resistant measurement of dispersion

  26. 1 2 3 4 Chapter 3 – Section 4 • Learning objectives • Determine and interpret z-scores • Determine and interpret percentiles • Determine and interpret quartiles • Check a set of data for outliers

  27. Chapter 3 – Section 4 • Extreme observations in the data are referred to as outliers • Outliers should be investigated • Extreme observations in the data are referred to as outliers • Outliers should be investigated • Outliers could be • Chance occurrences • Measurement errors • Data entry errors • Sampling errors • Extreme observations in the data are referred to as outliers • Outliers should be investigated • Outliers could be • Chance occurrences • Measurement errors • Data entry errors • Sampling errors • Outliers are not necessarily invalid data

  28. Chapter 3 – Section 4 • One way to check for outliers uses the quartiles • Outliers can be detected as values that are significantly too high or too low, based on the known spread • One way to check for outliers uses the quartiles • Outliers can be detected as values that are significantly too high or too low, based on the known spread • The fences used to identify outliers are • Lower fence = LF = Q1 – 1.5  IQR • Upper fence = UF = Q3 + 1.5  IQR • One way to check for outliers uses the quartiles • Outliers can be detected as values that are significantly too high or too low, based on the known spread • The fences used to identify outliers are • Lower fence = LF = Q1 – 1.5  IQR • Upper fence = UF = Q3 + 1.5  IQR • Values less than the lower fence or more than the upper fence could be considered outliers

  29. Chapter 3 – Section 4 • Is the value 54 an outlier? 1, 3, 4, 7, 8, 15, 16, 19, 23, 24, 27, 31, 33, 54 • Calculations • Q1 = (4 + 7) / 2 = 5.5 / or median of lower 50% is 7 • Q2 = (16 + 19)/2 = 17.5 • Q3 = (27 + 31) / 2 = 29 / or median of upper 50% is 27 • IQR = 29 – 5.5 = 23.5 / or 27 – 7 = 20 • UF = Q3 + 1.5  IQR = 29 + 1.5  23.5 = 64 • Or UF = Q3 + 1.5  IQR = 29 + 1.5  20 = 59

  30. Summary: Chapter 3 – Section 4 • z-scores • Measures the distance from the mean in units of standard deviations • Can compare relative positions in different samples • Percentiles and quartiles • Divides the data so that a certain percent is lower and a certain percent is higher • Outliers • Extreme values of the variable • Can be identified using the upper and lower fences

More Related