© 2005 thomson/south-western slide 13 © 2005 thomson/south-western slide 7 seventy efficiency...

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1 1 Slide © 2005 Thomson/South-Western Slides Prepared by JOHN S. LOUCKS St. Edward’s University 2 Slide © 2005 Thomson/South-Western Chapter 3 Descriptive Statistics: Numerical Measures Part A Measures of Location Measures of Variability 3 Slide © 2005 Thomson/South-Western Measures of Location If the measures are computed for data from a sample, they are called sample statistics . If the measures are computed for data from a population, they are called population parameters . A sample statistic is referred to as the point estimator of the corresponding population parameter. Mean Median Mode Percentiles Quartiles

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Page 1: © 2005 Thomson/South-Western Slide 13 © 2005 Thomson/South-Western Slide 7 Seventy efficiency apartments were randomly sampled in a small college town. The monthly rent prices for

1

1Slide© 2005 Thomson/South-Western

Slides Prepared byJOHN S. LOUCKS

St. Edward’s University

2Slide© 2005 Thomson/South-Western

Chapter 3Descriptive Statistics: Numerical Measures

Part A

� Measures of Location� Measures of Variability

3Slide© 2005 Thomson/South-Western

Measures of Location

If the measures are computedfor data from a sample,

they are called sample statistics.

If the measures are computedfor data from a population,

they are called population parameters.

A sample statistic is referred toas the point estimator of the

corresponding population parameter.

� Mean� Median� Mode� Percentiles� Quartiles

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4Slide© 2005 Thomson/South-Western

Mean

� The mean of a data set is the average of all the data values.

� The sample mean is the point estimator of the population mean µ.

xx

5Slide© 2005 Thomson/South-Western

Sample Mean xx

Number ofobservationsin the sample

Sum of the valuesof the n observations

ixx

n=∑ ix

xn

=∑

6Slide© 2005 Thomson/South-Western

Population Mean µ

Number ofobservations inthe population

Sum of the valuesof the N observations

ix

Nµ =

∑ ix

Nµ =

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7Slide© 2005 Thomson/South-Western

Seventy efficiency apartmentswere randomly sampled ina small college town. Themonthly rent prices forthese apartments are listedin ascending order on the next slide.

Sample Mean

Example: Apartment Rents

8Slide© 2005 Thomson/South-Western

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

Sample Mean

9Slide© 2005 Thomson/South-Western

Sample Mean

34,356 490.8070

ixx

n= = =∑ 34,356 490.80

70ix

xn

= = =∑

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

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10Slide© 2005 Thomson/South-Western

Median

Whenever a data set has extreme values, the medianis the preferred measure of central location.

A few extremely large incomes or property valuescan inflate the mean.

The median is the measure of location most oftenreported for annual income and property value data.

The median of a data set is the value in the middlewhen the data items are arranged in ascending order.

11Slide© 2005 Thomson/South-Western

Median

12 14 19 26 2718 27

For an odd number of observations:

in ascending order

26 18 27 12 14 27 19 7 observations

the median is the middle value.

Median = 19

12Slide© 2005 Thomson/South-Western

12 14 19 26 2718 27

Median

For an even number of observations:

in ascending order

26 18 27 12 14 27 30 8 observations

the median is the average of the middle two values.

Median = (19 + 26)/2 = 22.5

19

30

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13Slide© 2005 Thomson/South-Western

Median

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

Averaging the 35th and 36th data values:Median = (475 + 475)/2 = 475

14Slide© 2005 Thomson/South-Western

Mode

The mode of a data set is the value that occurs withgreatest frequency.The greatest frequency can occur at two or moredifferent values.If the data have exactly two modes, the data arebimodal.If the data have more than two modes, the data aremultimodal.

15Slide© 2005 Thomson/South-Western

Mode

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

450 occurred most frequently (7 times)Mode = 450

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16Slide© 2005 Thomson/South-Western

Percentiles

A percentile provides information about how thedata are spread over the interval from the smallestvalue to the largest value.Admission test scores for colleges and universitiesare frequently reported in terms of percentiles.

17Slide© 2005 Thomson/South-Western

� The pth percentile of a data set is a value such that at least p percent of the items take on this value or less and at least (100 - p) percent of the items take on this value or more.

Percentiles

18Slide© 2005 Thomson/South-Western

Percentiles

Arrange the data in ascending order.

Compute index i, the position of the pth percentile.

i = (p/100)n

If i is not an integer, round up. The pth percentileis the value in the ith position.

If i is an integer, the pth percentile is the averageof the values in positions i and i+1.

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19Slide© 2005 Thomson/South-Western

90th Percentile

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

i = (p/100)n = (90/100)70 = 63Averaging the 63rd and 64th data values:

90th Percentile = (580 + 590)/2 = 585

20Slide© 2005 Thomson/South-Western

90th Percentile

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

“At least 90%of the items

take on a valueof 585 or less.”

“At least 10%of the items

take on a valueof 585 or more.”

63/70 = .9 or 90% 7/70 = .1 or 10%

21Slide© 2005 Thomson/South-Western

Quartiles

Quartiles are specific percentiles.First Quartile = 25th PercentileSecond Quartile = 50th Percentile = MedianThird Quartile = 75th Percentile

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22Slide© 2005 Thomson/South-Western

Third Quartile

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

Third quartile = 75th percentilei = (p/100)n = (75/100)70 = 52.5 = 53

Third quartile = 525

23Slide© 2005 Thomson/South-Western

Measures of Variability

It is often desirable to consider measures of variability(dispersion), as well as measures of location.

For example, in choosing supplier A or supplier B wemight consider not only the average delivery time foreach, but also the variability in delivery time for each.

24Slide© 2005 Thomson/South-Western

Measures of Variability

� Range� Interquartile Range� Variance� Standard Deviation� Coefficient of Variation

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25Slide© 2005 Thomson/South-Western

Range

The range of a data set is the difference between thelargest and smallest data values.It is the simplest measure of variability.It is very sensitive to the smallest and largest datavalues.

26Slide© 2005 Thomson/South-Western

Range

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

Range = largest value - smallest valueRange = 615 - 425 = 190

27Slide© 2005 Thomson/South-Western

Interquartile Range

The interquartile range of a data set is the differencebetween the third quartile and the first quartile.It is the range for the middle 50% of the data.

It overcomes the sensitivity to extreme data values.

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28Slide© 2005 Thomson/South-Western

Interquartile Range

425 430 430 435 435 435 435 435 440 440440 440 440 445 445 445 445 445 450 450450 450 450 450 450 460 460 460 465 465465 470 470 472 475 475 475 480 480 480480 485 490 490 490 500 500 500 500 510510 515 525 525 525 535 549 550 570 570575 575 580 590 600 600 600 600 615 615

3rd Quartile (Q3) = 5251st Quartile (Q1) = 445

Interquartile Range = Q3 - Q1 = 525 - 445 = 80

29Slide© 2005 Thomson/South-Western

The variance is a measure of variability that utilizesall the data.

Variance

It is based on the difference between the value ofeach observation (xi) and the mean ( for a sample,µ for a population).

xx

30Slide© 2005 Thomson/South-Western

Variance

The variance is computed as follows:

The variance is the average of the squareddifferences between each data value and the mean.

for asample

for apopulation

σ µ22

=−∑( )x

Niσ µ2

2=

−∑( )xNis

xi xn

22

1=

−∑−

( )s

xi xn

22

1=

−∑−

( )

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31Slide© 2005 Thomson/South-Western

Standard Deviation

The standard deviation of a data set is the positivesquare root of the variance.

It is measured in the same units as the data, makingit more easily interpreted than the variance.

32Slide© 2005 Thomson/South-Western

The standard deviation is computed as follows:

for asample

for apopulation

Standard Deviation

s s= 2s s= 2 σ σ= 2σ σ= 2

33Slide© 2005 Thomson/South-Western

The coefficient of variation is computed as follows:

Coefficient of Variation

100 %sx

⎛ ⎞×⎜ ⎟⎝ ⎠

100 %sx

⎛ ⎞×⎜ ⎟⎝ ⎠

The coefficient of variation indicates how large thestandard deviation is in relation to the mean.

for asample

for apopulation

100 %σµ

⎛ ⎞×⎜ ⎟

⎝ ⎠100 %σ

µ⎛ ⎞

×⎜ ⎟⎝ ⎠

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34Slide© 2005 Thomson/South-Western

⎛ ⎞ ⎛ ⎞⎜ ⎟ ⎜ ⎟× = × =⎜ ⎟ ⎜ ⎟⎝ ⎠ ⎝ ⎠

54.74100 % 100 % 11.15%490.80

sx

⎛ ⎞ ⎛ ⎞⎜ ⎟ ⎜ ⎟× = × =⎜ ⎟ ⎜ ⎟⎝ ⎠ ⎝ ⎠

54.74100 % 100 % 11.15%490.80

sx

22 ( )

2, 996.161

ix xs

n−

= =−

∑ 22 ( )

2, 996.161

ix xs

n−

= =−

2 2996.47 54.74s s= = =2 2996.47 54.74s s= = =

the standarddeviation is

about 11% ofof the mean

� Variance

� Standard Deviation

� Coefficient of Variation

Variance, Standard Deviation,And Coefficient of Variation

35Slide© 2005 Thomson/South-Western

End of Chapter 3, Part A