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2 factor ANOVA 2 X 3 Dose by drug (row by column) Drug A Drug B Drug C High dose Sample 1 Sample 2 Sample 3 Low dose Sample 4 Sample 5 Sample 6 We would test for 1) Mean differences between doses (factor A) 2) Mean differences between drugs (factor B) 3) Mean differences produced by the two factors acting together - interactions All three tests combined into one – reduces chance of type I error. Get three F ratios -one for each test Total variability Between treatments variability Factor A Factor B Interaction Within treatments variability F= variance between the means for Factor A (row means) variance expected from error F= variance between the means for Factor B (column means) variance expected from error F = variance not explained by main effects variance expected from error What is a main effect? • We collapse across one factor and compare the other factor. 18 student class 24 student class 30 student class Program 1 85 80 75 80 Program 2 75 70 65 70 80 75 70 18 student class 24 student class 30 student class Program 1 85 80 75 80 Program 2 75 70 65 70 80 75 70 Interactions • There is an interaction if the effect of one factor depends on the level of another factor. • The influence of one variable changes according to the level of another variable. • A X B interaction Degrees of freedom 2 factor Factor A has a levels and df= a-1 Factor B has b levels and df = b-1 Interaction df = (a-1)(b-1) Error df = N - ab All possible combinations of a 2 factor analysis Yes A Yes B Yes AXB Yes A No B Yes AXB No A Yes B Yes AXB No A No B Yes AXB Yes A Yes B No AXB Yes A No A No B Yes B No AXB No AXB No A No B No AXB Example: College Drinking There is a line connecting each level of the means for A1, A2, and A3. If we did not consider Gender, then this line would be the main effect of A. In Panel 1, the means differ so there would be a main effect of A. This is not the case in Panel 2. In Panel 3, all the B1s are higher than B2. Thus, there is a main effect of B. Note that A has no effect for B1 or B2. So there is no effect of A or an AB interaction. The latter is because A has no differential effect dependent on B. In Panel 4, A has an effect such that as Year increases drinking increases. Gender (B) has an effect as the B1 line is higher than the B2 line. Big Point Alert - The B1 line is parallel to B2 line. Year effects each Gender in the same fashion. There is No Interaction! In Panel 5, A has an effect such that as drinking increases with age for all groups. B has an effect, as the B1 line is higher than the B2 line. Big Point Alert - The B1 line is Steeper than the B2 line. Thus, the year can have a different effect dependent on your gender. The lines are not parallel. This is an Interaction. In Panel 6 the slopes are opposite. This is a cute one. If you compute the average for B1 vs. B2, forgetting about Year, then there is no effect of gender. If you average the Years forgetting about Gender, the years don't differ. You would get No main effects. There is only an Interaction. That's why we check it first. In testing food products for palatability, General Foods employed a 7-point scale from -3 (terrible to +3 (excellent) with 0 representing "average". The experiment reported here involved the effects on palatability of a course versus fine screen and of a low versus high concentration of a liquid component. Mean food palatability determined by screen size and liquid composition Between-Subjects Factors N liquid s creen .00 1.00 .00 1.00 8 8 8 8 Descriptive Statistics Dependent Variable: score liquid .00 1.00 Total s creen .00 1.00 Total .00 1.00 Total .00 1.00 Total Mean 41.7500 36.0000 38.8750 103.5000 77.2500 90.3750 72.6250 56.6250 64.6250 Std. Deviation 25.55223 17.83255 20.62895 18.91208 15.08587 21.15884 39.01991 26.83248 33.38837 N 4 4 8 4 4 8 8 8 16 Tests of Between-Subjects Effects Dependent Variable: score Source Corrected Model Intercept liquid s creen liquid * s creen Error Total Corrected Total Type III Sum of Squares 12053.250 a 66822.250 10609.000 1024.000 420.250 4668.500 83544.000 16721.750 df 3 1 1 1 1 12 16 15 Mean Square 4017.750 66822.250 10609.000 1024.000 420.250 389.042 a. R Squared = .721 (Adjusted R Squared = .651) F 10.327 171.761 27.270 2.632 1.080 Sig. .001 .000 .000 .131 .319 There was a significant effect of liquid concentration on palatability. F(1,12) = 27.27 p<.05 MS = 10609. The higher concentration of the liquid component was reported to be significantly more palatable than the lower concentration. There was no significant effect of screen size, F(1,12) = 2.632 p>.05 MS = 1024. There was no significant interaction, F(1,12) = 1.08, p>.05, MS = 420.25. Reporting results of complex design • • • • • • • • What kind of test description of variables and definitions of levels (conditions) of each summary statistics for cells in design matrix (figure) report F tests for main effects and interactions effect size statement of power for nonsignificant results description of statistically significant main effect analytical comparisons post hoc where appropriate – to clarify sources of systematic variation • simple post hoc effects analysis when interaction is statistically significant • description of statistically significant interactions – looking at cell means • conclusion from analysis Total variability Between treatments variability Factor A Factor B Interaction Within treatments variability The analysis is based on the following linear model: We will calculate F-ratios for each of these: FA FB FAB • • • • • MS A, MS B, MS AB, & MS Within Groups MS A estimates σ2α MS B estimates σ2 β MS AB estimates σ2αβ MS Within-Groups estimates σ2ε design