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Assignment 1 February 15, 2008Slides by Mark Hancock
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Factorial (Two-Way) ANOVA February 15, 2008Slides by Mark Hancock
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You will be able to perform a factorial analysis of variance (ANOVA) and interpret the meaning of the results (both main effects and interactions). February 15, 2008Slides by Mark Hancock
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Variables (Revisited) Independent Variables – a.k.a. Factors Dependent Variables – a.k.a. Measures February 15, 2008Slides by Mark Hancock
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Factor e.g., technique: – TreeMap vs. Phylotrees vs. ArcTrees How many levels does the “technique” factor have? February 15, 2008Slides by Mark Hancock
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Factorial Design Remember the assignment Two factors: – gender (male, female) – technique (TreeMap, Phylotrees, ArcTrees) February 15, 2008Slides by Mark Hancock
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Factorial Design MaleFemale TreeMap Group 1Group 2 Phylotrees Group 3Group 4 ArcTrees Group 5Group 6 Gender Technique FactorsLevels Cells February 15, 2008Slides by Mark Hancock
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How did we test these six groups? February 15, 2008Slides by Mark Hancock
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What did we find out? What could we have found out? Was what we did valid? February 15, 2008Slides by Mark Hancock
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Factorial ANOVA What is the null hypothesis? February 15, 2008Slides by Mark Hancock
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Factorial ANOVA What are the null hypotheses? February 15, 2008Slides by Mark Hancock
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Main Effects February 15, 2008Slides by Mark Hancock
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Main Effects MaleFemale TreeMap µ1µ1 µ2µ2 Phylotrees µ3µ3 µ4µ4 ArcTrees µ5µ5 µ6µ6 Gender Technique µ TreeMap µ Phylotrees µ ArcTrees µ Male µ Female February 15, 2008Slides by Mark Hancock
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Null Hypotheses Main effect of gender: µ Male = µ Female Main effect of technique: µ TreeMap = µ Phylotrees = µ ArcTrees February 15, 2008Slides by Mark Hancock
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Example NightDay Headlights µ1µ1 µ2µ2 No Headlights µ3µ3 µ4µ4 Time of Day Lights Do headlights help see pedestrians? February 15, 2008Slides by Mark Hancock
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Example NightDay Headlights good No Headlights badgood Time of Day Lights Do headlights help see pedestrians? February 15, 2008Slides by Mark Hancock
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Results? Main effects – Day is “better” than night – Headlights are “better” than no headlights Is that the real story? February 15, 2008Slides by Mark Hancock
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What about the cell means? What other null hypothesis could we test? µ 1 = µ 2 = … = µ 4 Why not? February 15, 2008Slides by Mark Hancock
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Interactions February 15, 2008Slides by Mark Hancock
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What is our third null hypothesis? e.g. conclusion: – The effect of headlights depends on whether it is day or night. Null hypothesis in words: – The main effect of one factor does not depend on the levels of another factor. February 15, 2008Slides by Mark Hancock
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Alternative Hypothesis The main effect of factor X depends on the levels of factor Y. February 15, 2008Slides by Mark Hancock
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Null Hypothesis Level 1Level 2 Level 1 µ 11 µ 12 Level 2 µ 21 µ 22 Level 3 µ 31 µ 32 Factor 1 Factor 2 February 15, 2008Slides by Mark Hancock
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Null Hypothesis µ 11 – µ 12 = µ 21 – µ 22 = µ 31 – µ 32 In general: µ ij – µ i’j = µ ij’ – µ i’j’ for all combinations of i, i’, j, j’ February 15, 2008Slides by Mark Hancock
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Null Hypothesis February 15, 2008Slides by Mark Hancock
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Null Hypotheses Main effects: – row means are equal – column means are equal Interaction: – the pattern of differences in one row/column do not account for the pattern of differences in another row/column February 15, 2008Slides by Mark Hancock
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Factorial ANOVA Math February 15, 2008Slides by Mark Hancock
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F-scores Calculate F for each null hypothesis February 15, 2008Slides by Mark Hancock
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Sum of Squares (revisited) February 15, 2008Slides by Mark Hancock
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Sum of Squares (revisited) February 15, 2008Slides by Mark Hancock
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Factorial ANOVA Table Degrees of Freedom Sum of Squares Mean SquareF Factor 1 Factor 2 Interaction Within Groups Total February 15, 2008Slides by Mark Hancock
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Example Degrees of Freedom Sum of Squares Mean SquareF Gender1712.89 6.38 Condition1462.25 4.14 Gender × Condition 11.21 0.01 Error (Within Groups) 9610,720.82111.68 Total9911,897.17 February 15, 2008Slides by Mark Hancock
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Break: 15 Minutes February 15, 2008Slides by Mark Hancock
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Example February 15, 2008Slides by Mark Hancock
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Example February 15, 2008Slides by Mark Hancock
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Example SourceSS df MSFP between groups273.391 rows153.271 17.67<.01 columns120.061 13.84<.01 interaction0.061 0.01ns within groups (error) 312.31368.68 TOTAL585.7039 February 15, 2008Slides by Mark Hancock
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Three-Way ANOVA February 15, 2008Slides by Mark Hancock
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What’s different about a three-way ANOVA? February 15, 2008Slides by Mark Hancock
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Example Factors: – Gender (Male, Female) – Screen Orientation (Horizontal, Vertical) – Screen Size (Small, Medium, Large) February 15, 2008Slides by Mark Hancock
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Null Hypotheses Main effects – gender, screen orientation, screen size (no diff) Interactions (2-way) – gender × screen orientation – gender × screen size – screen orientation × screen size (no pattern) Interactions (3-way) – gender × screen orientation × screen size (?) February 15, 2008Slides by Mark Hancock
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Three-way Alternate Hypothesis Interpretation #1: – The main effect of a factor depends on the levels of both of the other two factors Interpretation #2: – The interaction effect between two factors depends on the level of another February 15, 2008Slides by Mark Hancock
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Level 1Level 2 Level 1 µ 111 µ 121 Level 2 µ 211 µ 221 Level 3 µ 311 µ 321 Factor 1 Factor 2 Level 1Level 2 Level 1 µ 112 µ 122 Level 2 µ 212 µ 222 Level 3 µ 312 µ 322 Factor 1 Factor 2 Level 1Level 2 Factor 3 February 15, 2008Slides by Mark Hancock
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Factorial ANOVA Table Degrees of Freedom Sum of Squares Mean Square F Factor 1 Factor 2 Factor 3 Factor 1 × Factor 2 Factor 1 × Factor 3 Factor 2 × Factor 3 Factor 1 × Factor 2 × Factor 3 Within Groups Total February 15, 2008Slides by Mark Hancock
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Between-Participants vs. Within-Participants February 15, 2008Slides by Mark Hancock
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Participant Assignment Level 1Level 2 Level 1 N = 10 Level 2 N = 10 Level 3 N = 10 Factor 1 Factor 2 February 15, 2008Slides by Mark Hancock
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Between Participants Level 1Level 2 Level 1 Group 1Group 2 Level 2 Group 3Group 4 Level 3 Group 5Group 6 Factor 1 Factor 2 February 15, 2008Slides by Mark Hancock
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Within Participants Level 1Level 2 Level 1 Group 1 Level 2 Group 1 Level 3 Group 1 Factor 1 Factor 2 February 15, 2008Slides by Mark Hancock
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Mixed Design Level 1Level 2 Level 1 Group 1Group 2 Level 2 Group 1Group 2 Level 3 Group 1Group 2 Factor 1 Factor 2 February 15, 2008Slides by Mark Hancock
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How does this change the math? February 15, 2008Slides by Mark Hancock
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T-test Independent Variance Paired Variance February 15, 2008Slides by Mark Hancock
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One-Way ANOVA Independent Repeated Measures Degrees of Freedom Sum of Squares Mean SquareF Between Groups Within Groups Total Degrees of Freedom Sum of Squares Mean Square F Factor Subjects Error (Factor × Subjects) Total February 15, 2008Slides by Mark Hancock
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Two-Way ANOVA Degrees of Freedom Sum of Squares Mean Square F Subjects Factor 1 Factor 1 × Subjects Factor 2 Factor 2 × Subjects Factor 1 × Factor 2 Factor 1 × Factor 2 × Subjects Total February 15, 2008Slides by Mark Hancock
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Post-hoc Analysis February 15, 2008Slides by Mark Hancock
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Main Effects Main effect for factor with two levels – No need to do post-hoc Main effect for factor with >2 levels – Same as one-way ANOVA – Pairwise t-tests February 15, 2008Slides by Mark Hancock
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How do we (correctly) interpret the results when there’s an interaction effect? February 15, 2008Slides by Mark Hancock
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Example There is a significant interaction between gender and technique. example answer: men were quicker with TreeMaps than with Phylotrees and ArcTrees, but women were quicker with ArcTrees than with Phylotrees and TreeMaps. February 15, 2008Slides by Mark Hancock
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Example February 15, 2008Slides by Mark Hancock
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Post-hoc Tests For each level of one factor – pairwise comparisons of each level of the other Hold level of one factor constant February 15, 2008Slides by Mark Hancock
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Three-Way Interactions Much more difficult to interpret Same strategy: hold levels of two factors constant and perform pairwise comparisons Alternate strategy: don’t bother (use graphs) February 15, 2008Slides by Mark Hancock
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