Download - Part II igma Freud & Descriptive Statistics Chapter 3 Viva La Difference: Understanding Variability
Part IIigma Freud & Descriptive
Statistics
Chapter 3
Viva La Difference: Understanding Variability
What you will learn in Chapter 3
• Variability is valuable as a descriptive tool
• Difference between variance & standard deviation
• How to compute:• Range
• Inter-quartile Range
• Standard Deviation
• Variance
Why Variability is Important Variability
• how different scores are from one particular score• Spread
• Dispersion
What is the “score” of interest here?• Ah ha!! It’s the MEAN!!
So…variability is really a measure of how each score in a group of scores differs from the mean of that set of scores.
Measures of Variability Four types of variability that examine the
amount of spread or dispersion in a group of scores…• Range
• Inter-quartile Range
• Standard Deviation
• Variance
Typically report the average and the variability together to describe a distribution.
Computing the Range
Range is the most “general” estimate of variability…
Two types…• Exclusive Range
• R = h - l
• Inclusive Range• R = h – l + 1
(Note: R is the range, h is the highest score, l is the lowest score)
Chapter 3 6
Measures of variation Range
Range
• The difference between the highest and lowest numbers in a set of numbers.
2, 35, 77, 93, 120, 540
540 – 2 = 538
Chapter 3 7
Measures of variation Range
What is the range of:
2, 3, 3, 3, 4, 5, 6, 6, 7, 9, 11, 13, 15, 15, 15, 16
24, 57, 81, 96, 107, 152, 179, 211
1001, 1467, 1479, 1680, 1134
Difference between upper (third) and lower (first) quartiles
Quartiles divide data into four equal groups• Lower (first) quartile is 25th percentile
• Middle (second) quartile is 50th percentile and is the median
• Upper (third) quartile is 75th percentile
Interquartile range
Calculating the interquartile range for high temperatures
HighDate Temperature
7-Jan 328-Jan 326-Jan 35 <===Bottom Half Middle Value = First Quartile = 35
10-Jan 415-Jan 42 <===Middle Value4-Jan 43 <===Middle Value9-Jan 46
11-Jan 52 <===Top Half Middle Value = Third Quartile = 522-Jan 593-Jan 60
Median = Second Quartile = 42.5
interquartile range = 52 – 35 = 17
Stem and Leaf 0730 Q1 Fall 2010 (N=22)
2|349 3|03344555666677779 4|01 Q1= .25 (22)=5.5 data point round up to 6th data
point=value of 33 Q2= n+1/2=23/2=11.5 = avg of 11th and 12th data
pt = 35.5 Q3= .75(22)=16.5 =round up to17th data point= Value of 37
Chapter 3 10
Value can be considered to be an outlier if it falls more than 1.5 times the interquartile range above the upper quartile or more than 1.5 times the range below the lower quartile
Example for high temperatures• Interquartile range is 17
• 1.5 times interquartile range is 25.5
• Outliers would be values• Above 52 + 25.5 = 77.5 (none)
• Below 35 – 25.5 = 9.5 (none)
Interquartile range and outliers
Review: Steps to Quartiles, Interquartile Range,and Checking for Outliers
1) Put values in ascending OR descending order 2) Multiply .25 (n) for Q1
3) Multiply .75 (n) for Q3
4) Q3 - Q1 = IQR
5) Q1 – 1.5 (IQR)= value below smallest value in data set;
6) Q3 + 1.5 (IQR)= value above largest value in data set;
Let’s practice Finding Outliers
What is the median, Q1, Q3, range, and IQR for the following? Then check for outliers.
10, 25, 35, 65, 100, 255, 350, 395 (n=8) 10, 65, 75, 99, 299 (n=5) 5, 39, 45, 59, 64, 74 (n=6)
Chapter 3 13
Computing Standard Deviation
Standard Deviation (SD) is the most frequently reported measure of variability
SD = average amount of variability in a set of scores
What do these symbols represent?
Why n – 1?
The standard deviation is intended to be an estimate of the POPULATION standard deviation…• We want it to be an “unbiased estimate”
• Subtracting 1 from n artificially inflates the SD…making it larger
In other words…we want to be “conservative” in our estimate of the population
Things to Remember…
Standard deviation is computed as the average distance from the mean
The larger the standard deviation the greater the variability
Like the mean…standard deviation is sensitive to extreme scores
If s = 0, then there is no variability among scores…they must all be the same value.
Computing Variance
Variance = standard deviation squared
So…what do these symbols represent? Does the formula look familiar?
Standard Deviation or Variance
While the formulas are quite similar…the two are also quite different.• Standard deviation is stated in original units
• Variance is stated in units that are squared
• Which do you think is easier to interpret???
Same mean, different standard deviation; Sample variance and Sample standard deviation: {20,31,50,69,80}
Each number x1 Mean Distance from Mean
20 50 -30
31 50 -19
50 50 0
69 50 19
80 50 30
Chapter 3 19
Then square each distance from mean and add together…
(-30)2 + (-19)2 + (0)2+ (19)2 + (30)2 900+ 361+ 0+ 361 +900= 2522 Divide by N-1 (N=5) 2522/4=630.5= Sample Variance To find sample standard deviation, take
square root of variance= 25.11
Chapter 3 20
Same mean, different standard deviation: {39,44,50,56,61}
Each number x1 Mean Distance from Mean
39 50 -11
44 50 -6
50 50 0
56 50 6
61 50 11
Chapter 3 21
Which data set has more variability?
(-11)2 + (-6)2 + (0)2 + (11)2 + (6)2
121+ 36+ 0+ 121+ 36= 314 Divide by N-1 gives us sample variance 314/4=78.5 Square root of 78.5 gives us sample
standard deviation=8.86
Chapter 3 22
Chapter 3 23
Measures of variation Standard deviation
How about a more user-friendly equation?
1
2
2
NN
xx
S
Using Excel’s VAR Function
Using the Computer to Compute Measures of Variability
Glossary Terms to Know
Variability• Range
• Standard deviation• Mean deviation
• Unbiased estimate
• Variance