Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25...

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Describing Location in a Distribution

Transcript of Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25...

Page 1: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Describing Location in a Distribution

Page 2: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Measuring Position: Percentiles

• Here are the scores of 25 students in Mr. Pryor’s statistics class on their first test:

79 81 80 77 73 83 74 93 78 80 75 67 73 77 83 86 90 79 85 83 89 84 82 77 72• Set this up into a stemplot.

Page 3: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Stemplot

Page 4: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Percentile

• Jenny had an 86, what percentile is she?• Percentile – the pth percentile of a distribution is

the value with p percent of the observations less than it.

• Hint: Norman, who earned a 72 has only one person who scored below his score. Since only 1 of the 25 students in the class is below his 72, his percentile is computed as follows: 1/25 = 0.04, or 4%. So Norman scored at the 4th percentile.

Page 5: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Find Percentiles

• Find the percentiles of: • Katie, who scored 93.• The two students who earned scores of 80.

Page 6: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

The Rules…

• When we shift data by adding or subtracting the same constant to every data value, measures of location/center change, but measures of spread stay the same.

• When we rescale data by multiplying or dividing by the same constant to every data value, measures of location/center AND measures of spread change.

Page 7: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

In Other Words …

• Adding (or Subtracting) a Constant:– Adding the same number to each observation• Adds a to measures of center and location (mean,

median, quartiles, percentiles), but• Does not change the shape of the distribution or

measures of spread (range, IQR, standard deviation)

Page 8: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

• Multiplying (or Dividing) by a Constant:– Multiplying or dividing each observation by the

same number b • Multiplies (divides) measures of center and location

(mean, median, quartiles, percentiles) by b• Multiplies (divides) measures of spread (range, IQR,

standard deviation by b but• Does NOT change the shape of the distribution

Page 9: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Practice

• Suppose the average score on a national test is 100 with a standard deviation of 10. If each score is increased by 5, what happens to the mean and standard deviation?

• Suppose the average score on a national test is 100 with a standard deviation of 10. If each score is increased by 50%, what happens to the mean and standard deviation?

Page 10: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Back to Standard Deviation …

• The standard deviation tells us how the whole collection of values varies, so it’s a natural ruler for comparing an individual to a group.

• As the most common measure of variation, the standard deviation plays a crucial role in how we look at data.

Page 11: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Z-Scores.

• We compare individual data values to their mean, relative to their standard deviation using the following formula:

• We call the resulting values standardized values, denoted as z. They can also be called z-scores.

y yz

s

Page 12: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

How do we compare??

The z-score helps us make comparisons. This z-score is simply a measure of “how many standard deviations from the mean”

zvalue mean

stdev

Page 13: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

What can z-scores tell us??

A negative z-score tells us that the data value is below the mean.

A positive z-score tells us that the data value is above the mean

A z-score of 0 tells us a data value is right at the mean.

The further a z-score is from 0, the more unusual it is…

Page 14: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Example

• The average height of a man is 5’10”, with a standard deviation of 3”.

• The average height of a woman is 5’4” with a standard deviation of 4”.

• Who is more extreme in height, a woman who is 5’8” or a man who is 6’2”?

• CDC Anthropometric Reference Data for Children and Adults: U.S. Population, 1999–2002 - Page 20, Table 19

Page 15: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Another Example

Page 16: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Yet Another Example

Page 17: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Who is the best athlete?

Page 18: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Example

80 students each took an English test and a math test. Here are some statistics:

• Math– Average = 75– S.D. = 1.47

• English – Average = 80– S.D. = 1.19

Page 19: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Plots of the tests

Page 20: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Plots of the tests

Page 21: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Who did better?

• Suppose that both classes are graded on a curve

• The top English score was 85• The top math score was 80• Who did better?

Page 22: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

The ruler

• To answer the question of “who scored higher, relative to the rest of the class”, we need standardize each variable to see how many “standard deviations” away each is from their means…

Page 23: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

How to standardize?

• Subtract mean from the value, and then divide by the standard deviation.

• So, we shift the data’s mean, then scale it down

• This expresses the distance in comparable terms..

Page 24: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Back to our example

• For the top English score:(85-80)/1.19 = 4.20

• For the top math score:(80-75)/1.47 = 3.40

• So, the english student did better.

Page 25: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

To formalize this…

• Expressing distance in standard deviations standardizes the performances.

• We subtract the mean score, then divide by the standard deviation

• Again, this is known as a “z-score”

Page 26: Describing Location in a Distribution. Measuring Position: Percentiles Here are the scores of 25 students in Mr. Pryor’s statistics class on their first.

Slide 6- 26

Benefits of Standardizing

• Standardized values have been converted from their original units to the standard statistical unit of standard deviations from the mean.

• Thus, we can compare values that are measured on different scales, with different units, or from different populations.