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ANOVA With More Than One IV. 2-way ANOVA. So far, 1-Way ANOVA, but can have 2 or more IVs. IVs aka Factors . Example: Study aids for exam IV 1: workbook or not IV 2: 1 cup of coffee or not. Main Effects. Main Effects and Interactions.
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2-way ANOVA • So far, 1-Way ANOVA, but can have 2 or more IVs. IVs aka Factors. • Example: Study aids for exam • IV 1: workbook or not • IV 2: 1 cup of coffee or not
Main Effects and Interactions • Main effects seen by row and column means; Slopes and breaks. • Interactions seen by lack of parallel lines. • Interactions are a main reason to use multiple IVs
Single Main Effect for B (Coffee only)
Single Main Effect for A (Workbook only)
Two Main Effects; Both A & B Both workbook and coffee
Interaction (1) Interactions take many forms; all show lack of parallel lines. Coffee has no effect without the workbook.
Interaction (2) People with workbook do better without coffee; people without workbook do better with coffee.
Interaction (3) Coffee always helps, but it helps more if you use workbook.
Labeling Factorial Designs • Levels – each IV is referred to by its number of levels, e.g., 2X2, 3X2, 4X3 designs. Two by two factorial ANOVA.
Example Factorial Design (1) • Effects of fatigue and alcohol consumption on driving performance. • Fatigue • Rested (8 hrs sleep then awake 4 hrs) • Fatigued (24 hrs no sleep) • Alcohol consumption • None (control) • 2 beers • Blood alcohol .08 %
Cells of the Design DV – closed course driving performance ratings from instructors.
Factorial Example Results Main Effects? Interactions? Both main effects and the interaction appear significant.
ANOVA Summary Table Two Factor, Between Subjects Design
Review • In a 3 X 3 ANOVA • How many IVs are there? • How many df does factor A have • How many df does the interaction have
Test • We can see the main effect for a variable if we examine means of the dependent variable while ________ • Considering the joint effects of both variables • Examining a single value of a second factor • Examining each cell • Ignoring the other variable
Test • In two-way ANOVA, the term interaction means • Both IVs have an impact on the DV • The effect of one IV depends on the value of the other IV • The on IV has no effect unless the other IV has a certain value • There is a crossover – a graph of two lines shows an ‘X’.