Comparing More than Two Means Mean AMean BMean C Slide 14.1.

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Presentation transcript:

Comparing More than Two Means Mean AMean BMean C Slide 14.1

Analysis of Variance Null Hypothesis Slide 14.2

Analysis of Variance Slide 14.3A

Analysis of Variance Slide 14.3

ANOVA Example Computation Slide 14.4A

ANOVA Example Computation Slide 14.4B

ANOVA Example Computation Slide 14.4C

ANOVA Example Computation Slide 14.4D

ANOVA Example Computation Slide 14.4E

ANOVA Example Computation Slide 14.4

Hartley’s H for Homogeneous Variances Slide 14.5A

Hartley’s H for Homogeneous Variances Slide 14.5B

Hartley’s H for Homogeneous Variances Slide 14.5C

Hartley’s H for Homogeneous Variances Slide 14.5

Public Speaking Take Don’t Take international students national students Slide 14.6A Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.6B Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.6 Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.7A Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.7B Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.7C Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.7D Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.7E Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.7F Chi Square Example

Public Speaking Take Don’t Take international students national students Slide 14.7 Chi Square Example

Contingency Coefficient Slide 14.8A

Contingency Coefficient Slide 14.8B

Contingency Coefficient Slide 14.8C

Contingency Coefficient Slide 14.8