© The McGraw-Hill Companies, Inc., 2000 10-1 Chapter 10 Testing the Difference between Means and Variances.

Slides:



Advertisements
Similar presentations
Numbers Treasure Hunt Following each question, click on the answer. If correct, the next page will load with a graphic first – these can be used to check.
Advertisements

1 A B C
1
Copyright © 2003 Pearson Education, Inc. Slide 1 Computer Systems Organization & Architecture Chapters 8-12 John D. Carpinelli.
Chapter 1 The Study of Body Function Image PowerPoint
Copyright © 2011, Elsevier Inc. All rights reserved. Chapter 6 Author: Julia Richards and R. Scott Hawley.
Author: Julia Richards and R. Scott Hawley
1 Copyright © 2013 Elsevier Inc. All rights reserved. Appendix 01.
STATISTICS HYPOTHESES TEST (I)
STATISTICS INTERVAL ESTIMATION Professor Ke-Sheng Cheng Department of Bioenvironmental Systems Engineering National Taiwan University.
Properties Use, share, or modify this drill on mathematic properties. There is too much material for a single class, so you’ll have to select for your.
David Burdett May 11, 2004 Package Binding for WS CDL.
CALENDAR.
Lecture 2 ANALYSIS OF VARIANCE: AN INTRODUCTION
Chapter 7 Sampling and Sampling Distributions
Biostatistics Unit 5 Samples Needs to be completed. 12/24/13.
Break Time Remaining 10:00.
You will need Your text Your calculator
Elementary Statistics
PP Test Review Sections 6-1 to 6-6
Chapter 16 Goodness-of-Fit Tests and Contingency Tables
Chi-Square and Analysis of Variance (ANOVA)
Exarte Bezoek aan de Mediacampus Bachelor in de grafische en digitale media April 2014.
Hypothesis Tests: Two Independent Samples
Copyright © 2012, Elsevier Inc. All rights Reserved. 1 Chapter 7 Modeling Structure with Blocks.
1 RA III - Regional Training Seminar on CLIMAT&CLIMAT TEMP Reporting Buenos Aires, Argentina, 25 – 27 October 2006 Status of observing programmes in RA.
Basel-ICU-Journal Challenge18/20/ Basel-ICU-Journal Challenge8/20/2014.
1..
© 2012 National Heart Foundation of Australia. Slide 2.
Adding Up In Chunks.
McGraw-Hill, Bluman, 7th ed., Chapter 9
Please enter data on page 477 in your calculator.
: 3 00.
5 minutes.
1 hi at no doifpi me be go we of at be do go hi if me no of pi we Inorder Traversal Inorder traversal. n Visit the left subtree. n Visit the node. n Visit.
Statistical Inferences Based on Two Samples
Analyzing Genes and Genomes
© The McGraw-Hill Companies, Inc., Chapter 12 Chi-Square.
Essential Cell Biology
Converting a Fraction to %
Chapter Thirteen The One-Way Analysis of Variance.
Ch 14 實習(2).
Chapter 8 Estimation Understandable Statistics Ninth Edition
Clock will move after 1 minute
PSSA Preparation.
Experimental Design and Analysis of Variance
Essential Cell Biology
Immunobiology: The Immune System in Health & Disease Sixth Edition
Simple Linear Regression Analysis
Physics for Scientists & Engineers, 3rd Edition
Energy Generation in Mitochondria and Chlorplasts
Select a time to count down from the clock above
Murach’s OS/390 and z/OS JCLChapter 16, Slide 1 © 2002, Mike Murach & Associates, Inc.
9. Two Functions of Two Random Variables
Adapted by Peter Au, George Brown College McGraw-Hill Ryerson Copyright © 2011 McGraw-Hill Ryerson Limited.
© McGraw-Hill, Bluman, 5th ed., Chapter 9
Aim: How do we test a comparison group? Exam Tomorrow.
Section 9.5 Testing the Difference Between Two Variances Bluman, Chapter 91.
Chapter 9 Testing the Difference Between Two Means, Two Proportions, and Two Variances Copyright © 2012 The McGraw-Hill Companies, Inc. Permission required.
Chapter 9 Section 2 Testing the Difference Between Two Means: t Test 1.
11.5 Testing the Difference Between Two Variances
© The McGraw-Hill Companies, Inc., Chapter 10 Testing the Difference between Means, Variances, and Proportions.
© The McGraw-Hill Companies, Inc., Chapter 9 Testing the Difference between Two Means.
Testing the Difference between Means, Variances, and Proportions
Testing the Difference Between Two Means
Testing the Difference between Means and Variances
Chapter 9 Testing the Difference Between Two Means, Two Proportions, and Two Variances.
Testing the Difference Between Two Variances
Chapter 9 Testing the Difference Between Two Means, Two Proportions, and Two Variances Copyright © 2012 The McGraw-Hill Companies, Inc. Permission required.
Presentation transcript:

© The McGraw-Hill Companies, Inc., Chapter 10 Testing the Difference between Means and Variances

© The McGraw-Hill Companies, Inc., Outline 10-1 Introduction 10-2 Testing the Difference between Two Means: Large Samples 10-3 Testing the Difference between Two Variances

© The McGraw-Hill Companies, Inc., Outline 10-4 Testing the Difference between Two Means: Small Independent Samples 10-5 Testing the Difference between Two Means: Small Dependent Samples

© The McGraw-Hill Companies, Inc., Objectives Test the difference between two large sample means using the z- test. Test the difference between two variances or standard deviations. Test the difference between two means for small independent samples.

© The McGraw-Hill Companies, Inc., Objectives Test the difference between two means for small dependent samples.

© The McGraw-Hill Companies, Inc., Testing the Difference between Two Means: 10-2 Testing the Difference between Two Means: Large Samples Assumptions for this test: Samples are independent. The sampling populations must be normally distributed. Standard deviations are known or samples must be at least 30.

© The McGraw-Hill Companies, Inc., Testing the Difference between Two Means: 10-2 Testing the Difference between Two Means: Large Samples  1 2, 1

© The McGraw-Hill Companies, Inc., Formula for the z Test for Comparing Two Means from Independent Populations

© The McGraw-Hill Companies, Inc., z Test for Comparing Two Means from Independent Populations z Test for Comparing Two Means from Independent Populations - Example A survey found that the average hotel room rate in Toronto was $88.42 and the average room rate in Ottawa was $ Assume that the data were obtained from two samples of 50 hotels each and that the standard deviations were $5.62 and $4.83 respectively. At  = 0.05, can it be concluded that there was no significant difference in the rates?

© The McGraw-Hill Companies, Inc., Step 1: Step 1: State the hypotheses and identify the claim. H 0 :     (claim) H 1 :     Step 2: Step 2: Find the critical values. Since  = 0.05 and the test is a two-tailed test, the critical values are z =  Step 3: Step 3: Compute the test value z Test for Comparing Two Means from Independent Populations z Test for Comparing Two Means from Independent Populations - Example

© The McGraw-Hill Companies, Inc., z Test for Comparing Two Means from Independent Populations z Test for Comparing Two Means from Independent Populations - Example

© The McGraw-Hill Companies, Inc., Step 4: Step 4: Make the decision. Reject the null hypothesis at  = 0.05, since 7.45 > Step 5: Step 5: Summarize the results. There is enough evidence to reject the claim that the means are equal. Hence, there is a significant difference in the hotel rates between Toronto and Ottawa z Test for Comparing Two Means from Independent Populations z Test for Comparing Two Means from Independent Populations - Example

© The McGraw-Hill Companies, Inc., P-Values The P-values for the tests can be determined using the same procedure as shown in Section 9-3. The P-value for the previous example will be: P-value = 2  P(z > 7.45)  2(0) = 0. You will reject the null hypothesis since the P-value < which is <  = 0.05.

© The McGraw-Hill Companies, Inc., Testing the Difference Between Two Variances For the comparison of two variances or standard deviations, an F-test is used. The sampling distribution of the variances is called the F distribution.

© The McGraw-Hill Companies, Inc., Characteristics of the F Distribution The values of F cannot be negative. The distribution is positively skewed. The mean value of F is approximately equal to 1. The F distribution is a family of curves based on the degrees of freedom of the variance of the numerator and denominator.

© The McGraw-Hill Companies, Inc., Curves for the F Distribution

© The McGraw-Hill Companies, Inc., Formula for the F -Test

© The McGraw-Hill Companies, Inc., The populations from which the samples were obtained must be normally distributed. The samples must be independent of each other Assumptions for Testing the Difference between Two Variances

© The McGraw-Hill Companies, Inc., A researcher wishes to see whether the variances of the heart rates (in beats per minute) of smokers are different from the variances of heart rates of people who do not smoke. Two samples are selected, and the data are given on the next slide. Using  = 0.05, is there enough evidence to support the claim?  10-3 Testing the Difference between Two Variances Testing the Difference between Two Variances - Example

© The McGraw-Hill Companies, Inc., For smokers n 1 = 26 and = 36; for nonsmokers n 2 = 18 and = 10. Step 1: Step 1: State the hypotheses and identify the claim. H 0 :   H 1 :   (claim) 10-3 Testing the Difference between Two Variances Testing the Difference between Two Variances - Example s 2 1 s 2 2  2 1  2 2  2 1  2 2

© The McGraw-Hill Companies, Inc., Step 2: Step 2: Find the critical value. Since  = 0.05 and the test is a two-tailed test, use the table. Here d.f. N. = 26 – 1 = 25, and d.f.D. = 18 – 1 = 17. The critical value is F = Step 3: Step 3: Compute the test value. F = / = 36/10 = Testing the Difference between Two Variances Testing the Difference between Two Variances - Example s 2 2 s 2 1

© The McGraw-Hill Companies, Inc., Step 4: Step 4: Make the decision. Reject the null hypothesis, since 3.6 > Step 5: Step 5: Summarize the results. There is enough evidence to support the claim that the variances are different Testing the Difference between Two Variances Testing the Difference between Two Variances - Example

© The McGraw-Hill Companies, Inc., Testing the Difference between Two Variances Testing the Difference between Two Variances - Example  

© The McGraw-Hill Companies, Inc., An instructor hypothesizes that the standard deviation of the final exam grades in her statistics class is larger for the male students than it is for the female students. The data from the final exam for the last semester are: males n 1 = 16 and s 1 = 4.2; females n 2 = 18 and s 2 = Testing the Difference between Two Variances Testing the Difference between Two Variances - Example

© The McGraw-Hill Companies, Inc., Is there enough evidence to support her claim, using  = 0.01? Step 1: Step 1: State the hypotheses and identify the claim. H 0 :     H 1 :   (claim) 10-3 Testing the Difference between Two Variances Testing the Difference between Two Variances - Example  2 1  2 2  2 1  2 2

© The McGraw-Hill Companies, Inc., Step 2: Step 2: Find the critical value. Here, d.f.N. = 16 –1 = 15, and d.f.D. = 18 –1 = 17. For  = 0.01 table, the critical value is F = Step 3: Step 3: Compute the test value. F = (4.2) 2 /(2.3) 2 = Testing the Difference between Two Variances Testing the Difference between Two Variances - Example

© The McGraw-Hill Companies, Inc., Step 4: Step 4: Make the decision. Reject the null hypothesis, since 3.33 > Step 5: Step 5: Summarize the results. There is enough evidence to support the claim that the standard deviation of the final exam grades for the male students is larger than that for the female students Testing the Difference between Two Variances Testing the Difference between Two Variances - Example

© The McGraw-Hill Companies, Inc., Testing the Difference between Two Variances Testing the Difference between Two Variances - Example  

© The McGraw-Hill Companies, Inc., When the sample sizes are small (< 30) and the population variances are unknown, a t-test is used to test the difference between means. The two samples are assumed to be independent and the sampling populations are normally or approximately normally distributed Testing the Difference between Two Means: 10-4 Testing the Difference between Two Means: Small Independent Samples

© The McGraw-Hill Companies, Inc., There are two options for the use of the t-test. When the variances of the populations are equal and when they are not equal. The F-test can be used to establish whether the variances are equal or not Testing the Difference between Two Means: 10-4 Testing the Difference between Two Means: Small Independent Samples

© The McGraw-Hill Companies, Inc.,    t XX s n s n dfsmallerofnorn      Testing the Difference between Two Means: 10-4 Testing the Difference between Two Means: Small Independent Samples - Test Value Formula Unequal Variances

© The McGraw-Hill Companies, Inc., Testing the Difference between Two Means: 10-4 Testing the Difference between Two Means: Small Independent Samples - Test Value Formula Equal Variances    t XX nsns nnnn dfnn        ()()...

© The McGraw-Hill Companies, Inc., The average size of a farm in Waterloo County is 199 acres, and the average size of a farm in Perth County is 191 acres. Assume the data were obtained from two samples with standard deviations of 12 acres and 38 acres, respectively, and the sample sizes are 10 farms from Waterloo County and 8 farms in Perth County. Can it be concluded at  = 0.05 that the average size of the farms in the two counties is different? 10-4 Difference between Two Means: Small Independent Samples Difference between Two Means: Small Independent Samples - Example

© The McGraw-Hill Companies, Inc., Assume the populations are normally distributed. First we need to use the F-test to determine whether or not the variances are equal. The critical value for the F-test for  = 0.05 is The test value = 38 2 /12 2 = Difference between Two Means: Small Independent Samples Difference between Two Means: Small Independent Samples - Example

© The McGraw-Hill Companies, Inc., Since > 4.20, the decision is to reject the null hypothesis and conclude the variances are not equal. Step 1: Step 1: State the hypotheses and identify the claim for the means. H 0 :     H 1 :    (claim) 10-4 Difference between Two Means: Small Independent Samples Difference between Two Means: Small Independent Samples - Example

© The McGraw-Hill Companies, Inc., Step 2: Step 2: Find the critical values. Since  = 0.05 and the test is a two-tailed test, the critical values are t = +/–2.365 with d.f. = 8 – 1 = 7. Step 3: Step 3: Compute the test value. Substituting in the formula for the test value when the variances are not equal gives t = Difference between Two Means: Small Independent Samples Difference between Two Means: Small Independent Samples - Example

© The McGraw-Hill Companies, Inc., Step 4: Step 4: Make the decision. Do not reject the null hypothesis, since 0.57 < Step 5: Step 5: Summarize the results. There is not enough evidence to support the claim that the average size of the farms is different. Note: Note: If the the variances were equal - use the other test value formula Difference between Two Means: Small Independent Samples Difference between Two Means: Small Independent Samples - Example

© The McGraw-Hill Companies, Inc., When the values are dependent, employ a t-test on the differences. Denote the differences with the symbol D, the mean of the population of differences with  D, and the sample standard deviation of the differences with s D Testing the Difference between Two Means: 10-5 Testing the Difference between Two Means: Small Dependent Samples

© The McGraw-Hill Companies, Inc., Testing the Difference between Two Means: 10-5 Testing the Difference between Two Means: Small Dependent Samples - Formula for the test value.

© The McGraw-Hill Companies, Inc., Note: Note: This test is similar to a one sample t-test, except it is done on the differences when the samples are dependent Testing the Difference between Two Means: 10-5 Testing the Difference between Two Means: Small Dependent Samples - Formula for the test value.