Section 2.4 Measures of Variation. Section 2.4 Objectives Determine the range of a data set Determine the variance and standard deviation of a population.

Slides:



Advertisements
Similar presentations
STATISTICS ELEMENTARY MARIO F. TRIOLA
Advertisements

Statistics 1: Introduction to Probability and Statistics Section 3-3.
The procedure for finding the variance and standard deviation for grouped data is similar to that for finding the mean for grouped data, and.
Descriptive Statistics
Section 2.4 Measures of Variation Larson/Farber 4th ed.
Measures of Variation Section 2.4 Statistics Mrs. Spitz Fall 2008.
Descriptive Statistics
2.4 PKBjB0 Why we need to learn something so we never sound like this.
3 Averages and Variation
A Look at Means, Variances, Standard Deviations, and z-Scores
Section 2.4 Measures of Variation.
LECTURE 12 Tuesday, 6 October STA291 Fall Five-Number Summary (Review) 2 Maximum, Upper Quartile, Median, Lower Quartile, Minimum Statistical Software.
Descriptive Statistics
SECTION 3.2 MEASURES OF SPREAD Copyright © The McGraw-Hill Companies, Inc. Permission required for reproduction or display.
Chapter 13 Statistics © 2008 Pearson Addison-Wesley. All rights reserved.
12.3 – Measures of Dispersion Dispersion is another analytical method to study data. Two of the most common measures of dispersion are the range and the.
Copyright © 2015, 2012, and 2009 Pearson Education, Inc. 1 Chapter Descriptive Statistics 2.
Unit 3 Section 3-3 – Day : Measures of Variation  Range – the highest value minus the lowest value.  The symbol R is used for range.  Variance.
Probabilistic and Statistical Techniques
Chapter 3 Descriptive Measures
Descriptive Statistics
Slide Slide 1 Section 3-3 Measures of Variation. Slide Slide 2 Key Concept Because this section introduces the concept of variation, which is something.
Descriptive Statistics Measures of Variation. Essentials: Measures of Variation (Variation – a must for statistical analysis.) Know the types of measures.
 The range of a data set is the difference between the maximum and minimum data entries in the set. The find the range, the data must be quantitative.
Section 2.4 Measures of Variation Larson/Farber 4th ed. 1.
Descriptive Statistics Chapter 2. § 2.4 Measures of Variation.
AP Stats BW 9/19 Below is a list of gas mileage ratings for selected passenger cars in miles per gallon. Choose the correct histogram of the data. 53,
Section 3.2 Measures of Dispersion 1.Range 2.Variance 3.Standard deviation 4.Empirical Rule for bell shaped distributions 5.Chebyshev’s Inequality for.
Chapter 6 1. Chebychev’s Theorem The portion of any data set lying within k standard deviations (k > 1) of the mean is at least: 2 k = 2: In any data.
What is variability in data? Measuring how much the group as a whole deviates from the center. Gives you an indication of what is the spread of the data.
1 2.4 Describing Distributions Numerically – cont. Describing Symmetric Data.
Statistics Numerical Representation of Data Part 2 – Measure of Variation.
Descriptive Statistics
Section 3-3 Measures of Variation. WAITING TIMES AT DIFFERENT BANKS Jefferson Valley Bank (single waiting line) Bank of Providence.
SECTION 12-3 Measures of Dispersion Slide
© 2008 Pearson Addison-Wesley. All rights reserved Chapter 1 Section 13-3 Measures of Dispersion.
Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 1 Measures of Variance Section 2-5 M A R I O F. T R I O L A Copyright © 1998, Triola,
Descriptive Statistics-IV (Measures of Variation)
Copyright © 2015, 2012, and 2009 Pearson Education, Inc. 1 Chapter Descriptive Statistics 2.
Refer to Ex 3-18 on page Record the info for Brand A in a column. Allow 3 adjacent other columns to be added. Do the same for Brand B.
Unit 2 Section 2.4 – Day 2.
Measures of Variation 1 Section 2.4. Section 2.4 Objectives 2 Determine the range of a data set Determine the variance and standard deviation of a population.
Section 3-2 Measures of Variation.
Section 2.4 Measures of Variation Day 1. Range The difference between the maximum and minimum data entries in the set. The data must be quantitative.
Chapter 2 Descriptive Statistics 1 Larson/Farber 4th ed.
2.4 Measures of Variation Coach Bridges NOTES. What you should learn…. How to find the range of a data set How to find the range of a data set How to.
Chapter 4 Histograms Stem-and-Leaf Dot Plots Measures of Central Tendency Measures of Variation Measures of Position.
Closing prices for two stocks were recorded on ten successive Fridays. Mean = 61.5 Median = 62 Mode = 67 Mean = 61.5 Median = 62 Mode =
Chapter 4 Measures of Central Tendency Measures of Variation Measures of Position Dot Plots Stem-and-Leaf Histograms.
Sect.2.4 Measures of variation Objective: SWBAT find the range of a data set Find the variance and standard deviation of a population and of a sample How.
Section 2.4 Measures of Variation 1 of 149 © 2012 Pearson Education, Inc. All rights reserved.
Section 2.4 Measures of Variation 1 of 149 © 2012 Pearson Education, Inc. All rights reserved.
Copyright © Cengage Learning. All rights reserved. Probability and Statistics.
2.4 Measures of Variation Prob & Stats Mrs. O’Toole.
2.4 Measures of Variation The Range of a data set is simply: Range = (Max. entry) – (Min. entry)
Chapter 4 Histograms Stem-and-Leaf Dot Plots Measures of Central Tendency Measures of Variation Measures of Position.
 2012 Pearson Education, Inc. Slide Chapter 12 Statistics.
Copyright © 2015, 2012, and 2009 Pearson Education, Inc. 1 Chapter Descriptive Statistics 2.
Algebra II Descriptive Statistics 1 Larson/Farber 4th ed.
Descriptive Statistics Measures of Variation
Descriptive Statistics
Chapter 12 Statistics 2012 Pearson Education, Inc.
Chapter 2 Descriptive Statistics.
Teacher Introductory Statistics Lesson 2.4 D
2.4 Measures of Variation.
Section 2.4 Measures of Variation.
Sample Standard Deviation
Chapter 12 Statistics.
Two Data Sets Stock A Stock B
Section 2.4 Measures of Variation Larson/Farber 4th ed.
Presentation transcript:

Section 2.4 Measures of Variation

Section 2.4 Objectives Determine the range of a data set Determine the variance and standard deviation of a population and of a sample Use the Empirical Rule and Chebychev’s Theorem to interpret standard deviation

Range The difference between the maximum and minimum data entries in the set. The data must be quantitative. Range = (Max. data entry) – (Min. data entry)

Example: Finding the Range A corporation hired 10 graduates. The starting salaries for each graduate are shown. Find the range of the starting salaries. Starting salaries (1000s of dollars)

Solution: Finding the Range Ordering the data helps to find the least and greatest salaries Range = (Max. salary) – (Min. salary) = 47 – 37 = 10 The range of starting salaries is 10 or $10,000. minimum maximum

Deviation, Variance, and Standard Deviation Deviation The difference between the data entry, x, and the mean of the data set. Population data set:  Deviation of x = x – μ Sample data set:  Deviation of

Example: Finding the Deviation A corporation hired 10 graduates. The starting salaries for each graduate are shown. Find the deviation of the starting salaries. Starting salaries (1000s of dollars) Solution: First determine the mean starting salary.

Solution: Finding the Deviation Determine the deviation for each data entry. Salary ($1000s), x Deviation ($1000s) x – μ 4141 – 41.5 = – – 41.5 = – – 41.5 = – – 41.5 = – 41.5 = – 41.5 = – – 41.5 = – 41.5 = – – 41.5 = – – 41.5 = 0.5 Σx = 415 Σ(x – μ) = 0

Solution: Finding the Population Standard Deviation Determine SS x N = 10 Salary, xDeviation: x – μSquares: (x – μ) – 41.5 = –0.5(–0.5) 2 = – 41.5 = –3.5(–3.5) 2 = – 41.5 = –2.5(–2.5) 2 = – 41.5 = 3.5(3.5) 2 = – 41.5 = 5.5(5.5) 2 = – 41.5 = –0.5(–0.5) 2 = – 41.5 = 2.5(2.5) 2 = – 41.5 = –0.5(–0.5) 2 = – 41.5 = –4.5(–4.5) 2 = – 41.5 = 0.5(0.5) 2 = 0.25 Σ(x – μ) = 0 SS x = 88.5

Deviation, Variance, and Standard Deviation Population Variance Population Standard Deviation Sum of squares, SS x

Finding the Population Variance & Standard Deviation In Words In Symbols 1.Find the mean of the population data set. 2.Find the deviation of each entry. 3.Square each deviation. 4.Add to get the sum of squares. x – μ (x – μ) 2 SS x = Σ(x – μ) 2

Finding the Population Variance & Standard Deviation 5.Divide by N to get the population variance. 6.Find the square root of the variance to get the population standard deviation. In Words In Symbols

Example: Finding the Population Standard Deviation A corporation hired 10 graduates. The starting salaries for each graduate are shown. Find the population variance and standard deviation of the starting salaries. Starting salaries (1000s of dollars) Recall μ = 41.5.

Solution: Finding the Population Standard Deviation Population Variance Population Standard Deviation The population standard deviation is about 3.0, or $3000.

Deviation, Variance, and Standard Deviation (for a sample) Sample Variance Sample Standard Deviation

Finding the Sample Variance & Standard Deviation In Words In Symbols 1.Find the mean of the sample data set. 2.Find the deviation of each entry. 3.Square each deviation. 4.Add to get the sum of squares.

Finding the Sample Variance & Standard Deviation 5.Divide by n – 1 to get the sample variance. 6.Find the square root of the variance to get the sample standard deviation. In Words In Symbols

Example: Finding the Sample Standard Deviation The starting salaries are for the Chicago branches of a corporation. The corporation has several other branches, and you plan to use the starting salaries of the Chicago branches to estimate the starting salaries for the larger population. Find the sample standard deviation of the starting salaries. Starting salaries (1000s of dollars)

Solution: Finding the Sample Standard Deviation Determine SS x n = 10 Salary, xDeviation: x – μSquares: (x – μ) – 41.5 = –0.5(–0.5) 2 = – 41.5 = –3.5(–3.5) 2 = – 41.5 = –2.5(–2.5) 2 = – 41.5 = 3.5(3.5) 2 = – 41.5 = 5.5(5.5) 2 = – 41.5 = –0.5(–0.5) 2 = – 41.5 = 2.5(2.5) 2 = – 41.5 = –0.5(–0.5) 2 = – 41.5 = –4.5(–4.5) 2 = – 41.5 = 0.5(0.5) 2 = 0.25 Σ(x – μ) = 0 SS x = 88.5

Solution: Finding the Sample Standard Deviation N= 5 µ = Σx/N x x – μ(x – μ) – 10 = 0(0) 2 = 0 88 – 10 = -2(–2) 2 = = -1(–1) 2 = Σ(x – μ) = 0 Σ(x – μ) 2 = 88.5

Interpreting Standard Deviation Standard deviation is a measure of the typical amount an entry deviates from the mean. The more the entries are spread out, the greater the standard deviation.

Interpreting Standard Deviation: Empirical Rule (68 – 95 – 99.7 Rule) For data with a (symmetric) bell-shaped distribution, the standard deviation has the following characteristics: About 68% of the data lie within one standard deviation of the mean. About 95% of the data lie within two standard deviations of the mean. About 99.7% of the data lie within three standard deviations of the mean.

Interpreting Standard Deviation: Empirical Rule (68 – 95 – 99.7 Rule) 68% within 1 standard deviation 34% 99.7% within 3 standard deviations 2.35% 95% within 2 standard deviations 13.5%

Example: Using the Empirical Rule In a survey conducted by the National Center for Health Statistics, the sample mean height of women in the United States (ages 20-29) was 64.3 inches, with a sample standard deviation of 2.62 inches. Estimate the percent of the women whose heights are between inches and 64.3 inches.

Solution: Using the Empirical Rule Because the distribution is bell-shaped, you can use the Empirical Rule. 34% % = 47.5% of women are between and 64.3 inches tall.

Chebychev’s Theorem The portion of any data set lying within k standard deviations (k > 1) of the mean is at least: k = 2: In any data set, at least of the data lie within 2 standard deviations of the mean. k = 3: In any data set, at least of the data lie within 3 standard deviations of the mean..

Example: Using Chebychev’s Theorem The age distribution for Florida is shown in the histogram. Apply Chebychev’s Theorem to the data using k = 2. What can you conclude?

Solution: Using Chebychev’s Theorem k = 2: μ – 2σ = 39.2 – 2(24.8) = – 10.4 (use 0 since age can’t be negative) μ + 2σ = (24.8) = 88.8 At least 75% of the population of Florida is between 0 and 88.8 years old.

Section 2.4 Summary Determined the range of a data set Determined the variance and standard deviation of a population and of a sample Used the Empirical Rule and Chebychev’s Theorem to interpret standard deviation