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Chapter 11 Hypothesis Testing II

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1 Chapter 11 Hypothesis Testing II
Statistics for Business and Economics 6th Edition Chapter 11 Hypothesis Testing II

2 Chapter Goals Setelah menyelesaikan bab ini, anda akan mampu :
Melakukan uji hipotesis untuk perbedaan dua rata-rata populasi Data berpasangan Populasi Independen, variansi populasi diketahui Populasi Independen, variansi populasi tak diketahui Melakukan uji hipotesis dua proporsi (sampel besar ) Use the F table to find critical F values Complete an F test for the equality of two variances

3 Two Sample Tests Two Sample Tests Population Means, Matched Pairs
Population Means, Independent Samples Population Proportions Population Variances Examples: Same group before vs. after treatment Group 1 vs. independent Group 2 Proportion 1 vs. Proportion 2 Variance 1 vs. Variance 2 (Note similarities to Chapter 9)

4 Matched Pairs Tests Means of 2 Related Populations di = xi - yi
Paired or matched samples Repeated measures (before/after) Use difference between paired values: Compute the average and standard dev of di Assumptions: Both Populations Are Normally Distributed di = xi - yi

5 Test Statistic: Matched Pairs
The test statistic for the mean difference is a t value, with n – 1 degrees of freedom: Where D0 = hypothesized mean difference sd = sample standard dev. of differences n = the sample size (number of pairs)

6 Decision Rules: Matched Pairs
Paired Samples Lower-tail test: H0: μx – μy  0 H1: μx – μy < 0 Upper-tail test: H0: μx – μy ≤ 0 H1: μx – μy > 0 Two-tail test: H0: μx – μy = 0 H1: μx – μy ≠ 0 a a a/2 a/2 -ta ta -ta/2 ta/2 Reject H0 if t < -tn-1, a Reject H0 if t > tn-1, a Reject H0 if t < -tn-1 , a/2 or t > tn-1 , a/2 has n - 1 d.f. Where

7 Matched Pairs Example  d = = - 4.2
Assume you send your salespeople to a “customer service” training workshop. Has the training made a difference in the number of complaints? You collect the following data: di d = Complaints: S.person Before (1) After (2) di -21 n = - 4.2

8 Critical Value = ± 4.604 d.f. = n - 1 = 4
Matched Pairs: Solution Has the training made a difference in the number of complaints? Reject Reject H0: μx – μy = 0 H1: μx – μy  0 /2 /2  = .01 d = - 4.2 - 1.66 Critical Value = ± d.f. = n - 1 = 4 Decision: Do not reject H0 (t stat is not in the reject region) Test Statistic: Conclusion: There is not a significant change in the number of complaints.

9 Difference Between Two Means
Tujuan: Menguji perbedaan dua rata-rata populasi independent, μx – μy Sumber data berbeda, pop 1 dan pop 2 Tidak berhubungan atau berpasangan Independen Sampel yang diambil dari satu populasi tidak berpengaruh terhadap sampel dari populasi lain

10 Difference Between Two Means
Population means, independent samples σx2 and σy2 known Test statistic is a z value σx2 and σy2 unknown σx2 and σy2 assumed equal Test statistic is a a value from the Student’s t distribution σx2 and σy2 assumed unequal

11 Population means, independent samples
σx2 and σy2 Known Population means, independent samples Assumptions: Samples are randomly and independently drawn both population distributions are normal Population variances are known * σx2 and σy2 known σx2 and σy2 unknown

12 Population means, independent samples
σx2 and σy2 Known When σx2 and σy2 are known and both populations are normal, the variance of X – Y is Population means, independent samples * σx2 and σy2 known …and the statistic has a standard normal distribution σx2 and σy2 unknown

13 Hypothesis Tests for Two Population Means
Two Population Means, Independent Samples Lower-tail test: H0: μx  μy H1: μx < μy i.e., H0: μx – μy  0 H1: μx – μy < 0 Upper-tail test: H0: μx ≤ μy H1: μx > μy i.e., H0: μx – μy ≤ 0 H1: μx – μy > 0 Two-tail test: H0: μx = μy H1: μx ≠ μy i.e., H0: μx – μy = 0 H1: μx – μy ≠ 0

14 Two Population Means, Independent Samples, Variances Known
Decision Rules Two Population Means, Independent Samples, Variances Known Lower-tail test: H0: μx – μy  0 H1: μx – μy < 0 Upper-tail test: H0: μx – μy ≤ 0 H1: μx – μy > 0 Two-tail test: H0: μx – μy = 0 H1: μx – μy ≠ 0 a a a/2 a/2 -za za -za/2 za/2 Reject H0 if z < -za Reject H0 if z > za Reject H0 if z < -za/2 or z > za/2

15 σx2 and σy2 Unknown, Assumed Equal
Assumptions: Samples are randomly and independently drawn Populations are normally distributed Population variances are unknown but assumed equal Population means, independent samples σx2 and σy2 known σx2 and σy2 unknown * σx2 and σy2 assumed equal σx2 and σy2 assumed unequal

16 σx2 and σy2 Unknown, Assumed Equal
Test Hypotheses: The population variances are assumed equal, so use the two sample standard deviations and pool them to estimate σ use a t value with (nx + ny – 2) degrees of freedom Population means, independent samples σx2 and σy2 known σx2 and σy2 unknown * σx2 and σy2 assumed equal σx2 and σy2 assumed unequal

17 Test Statistic, σx2 and σy2 Unknown, Equal
The test statistic for μx – μy is: σx2 and σy2 unknown * σx2 and σy2 assumed equal σx2 and σy2 assumed unequal Where t has (n1 + n2 – 2) d.f., and

18 σx2 and σy2 Unknown, Assumed Unequal
Assumptions: Samples are randomly and independently drawn Populations are normally distributed Population variances are unknown and assumed unequal Population means, independent samples σx2 and σy2 known σx2 and σy2 unknown σx2 and σy2 assumed equal * σx2 and σy2 assumed unequal

19 σx2 and σy2 Unknown, Assumed Unequal
Forming interval estimates: The population variances are assumed unequal, so a pooled variance is not appropriate use a t value with  degrees of freedom, where Population means, independent samples σx2 and σy2 known σx2 and σy2 unknown σx2 and σy2 assumed equal * σx2 and σy2 assumed unequal

20 Test Statistic, σx2 and σy2 Unknown, Unequal
The test statistic for μx – μy is: σx2 and σy2 unknown σx2 and σy2 assumed equal * σx2 and σy2 assumed unequal Where t has  degrees of freedom:

21 Two Population Means, Independent Samples, Variances Unknown
Decision Rules Two Population Means, Independent Samples, Variances Unknown Lower-tail test: H0: μx – μy  0 H1: μx – μy < 0 Upper-tail test: H0: μx – μy ≤ 0 H1: μx – μy > 0 Two-tail test: H0: μx – μy = 0 H1: μx – μy ≠ 0 a a a/2 a/2 -ta ta -ta/2 ta/2 Reject H0 if t < -tn-1, a Reject H0 if t > tn-1, a Reject H0 if t < -tn-1 , a/2 or t > tn-1 , a/2 Where t has n - 1 d.f.

22 Pooled Variance t Test: Example
You are a financial analyst for a brokerage firm. Is there a difference in dividend yield between stocks listed on the NYSE & NASDAQ? You collect the following data: NYSE NASDAQ Number Sample mean Sample std dev Assuming both populations are approximately normal with equal variances, is there a difference in average yield ( = 0.05)?

23 Calculating the Test Statistic
The test statistic is:

24 Solution t Decision: Reject H0 at a = 0.05 Conclusion:
H0: μ1 - μ2 = 0 i.e. (μ1 = μ2) H1: μ1 - μ2 ≠ 0 i.e. (μ1 ≠ μ2)  = 0.05 df = = 44 Critical Values: t = ± Test Statistic: .025 .025 2.0154 t 2.040 Decision: Conclusion: Reject H0 at a = 0.05 There is evidence of a difference in means.

25 Two Population Proportions
Goal: Test hypotheses for the difference between two population proportions, Px – Py Assumptions: Both sample sizes are large, nP(1 – P) > 9 Population proportions

26 Two Population Proportions
The random variable is approximately normally distributed Population proportions

27 Test Statistic for Two Population Proportions
The test statistic for H0: Px – Py = 0 is a z value: Population proportions Where Statistics for Business and Economics, 6e © 2007 Pearson Education, Inc.

28 Decision Rules: Proportions
Population proportions Lower-tail test: H0: px – py  0 H1: px – py < 0 Upper-tail test: H0: px – py ≤ 0 H1: px – py > 0 Two-tail test: H0: px – py = 0 H1: px – py ≠ 0 a a a/2 a/2 -za za -za/2 za/2 Reject H0 if z < -za Reject H0 if z > za Reject H0 if z < -za/2 or z > za/2

29 Example: Two Population Proportions
Is there a significant difference between the proportion of men and the proportion of women who will vote Yes on Proposition A? In a random sample, 36 of 72 men and 31 of 50 women indicated they would vote Yes Test at the .05 level of significance

30 Example: Two Population Proportions
(continued) The hypothesis test is: H0: PM – PW = 0 (the two proportions are equal) H1: PM – PW ≠ 0 (there is a significant difference between proportions) The sample proportions are: Men: = 36/72 = .50 Women: = 31/50 = .62 The estimate for the common overall proportion is: Statistics for Business and Economics, 6e © 2007 Pearson Education, Inc.

31 Example: Two Population Proportions
Reject H0 Reject H0 The test statistic for PM – PW = 0 is: .025 .025 -1.96 1.96 -1.31 Decision: Do not reject H0 Conclusion: There is not significant evidence of a difference between men and women in proportions who will vote yes. Critical Values = ±1.96 For  = .05

32 Hypothesis Tests for Two Variances
Population Variances Goal: Test hypotheses about two population variances H0: σx2  σy2 H1: σx2 < σy2 Lower-tail test F test statistic H0: σx2 ≤ σy2 H1: σx2 > σy2 Upper-tail test H0: σx2 = σy2 H1: σx2 ≠ σy2 Two-tail test The two populations are assumed to be independent and normally distributed

33 Hypothesis Tests for Two Variances
The random variable Tests for Two Population Variances F test statistic Has an F distribution with (nx – 1) numerator degrees of freedom and (ny – 1) denominator degrees of freedom Denote an F value with 1 numerator and 2 denominator degrees of freedom by

34 Test Statistic Tests for Two
Population Variances The critical value for a hypothesis test about two population variances is F test statistic where F has (nx – 1) numerator degrees of freedom and (ny – 1) denominator degrees of freedom

35 Decision Rules: Two Variances
Use sx2 to denote the larger variance. H0: σx2 = σy2 H1: σx2 ≠ σy2 H0: σx2 ≤ σy2 H1: σx2 > σy2 /2 F F Do not reject H0 Reject H0 Do not reject H0 Reject H0 rejection region for a two-tail test is: where sx2 is the larger of the two sample variances

36 Example: F Test You are a financial analyst for a brokerage firm. You want to compare dividend yields between stocks listed on the NYSE & NASDAQ. You collect the following data: NYSE NASDAQ Number Mean Std dev Is there a difference in the variances between the NYSE & NASDAQ at the  = 0.10 level?

37 F Test: Example Solution
Form the hypothesis test: H0: σx2 = σy2 (there is no difference between variances) H1: σx2 ≠ σy2 (there is a difference between variances) Find the F critical values for  = .10/2: Degrees of Freedom: Numerator (NYSE has the larger standard deviation): nx – 1 = 21 – 1 = 20 d.f. Denominator: ny – 1 = 25 – 1 = 24 d.f.

38 F Test: Example Solution
The test statistic is: H0: σx2 = σy2 H1: σx2 ≠ σy2 /2 = .05 F Do not reject H0 Reject H0 F = is not in the rejection region, so we do not reject H0 Conclusion: There is not sufficient evidence of a difference in variances at  = .10

39 Two-Sample Tests in EXCEL
For paired samples (t test): Tools | data analysis… | t-test: paired two sample for means For independent samples: Independent sample Z test with variances known: Tools | data analysis | z-test: two sample for means For variances… F test for two variances: Tools | data analysis | F-test: two sample for variances

40 Two-Sample Tests in PHStat

41 Sample PHStat Output Input Output

42 Sample PHStat Output Input Output


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