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General linear models One and Two-way ANOVA in SPSS Repeated measures ANOVA Multiple linear regression 2-way ANOVA in SPSS Example 14.1 2 2-way ANOVA in SPSS Click Add 3 Repeated measures The stroop test BLUE 4 The model 5 Assumptions 6 If the sphericity does not hold… a) The trick: Greenhouse and Geisser b) Repeated MANOVA c) More complex models 7 And now in SPSS 8 Multiple linear regression • • • • • Regression: One variable is considered dependent on the other(s) Correlation: No variables are considered dependent on the other(s) Multiple regression: More than one independent variable Linear regression: The independent factor is scalar and linearly dependent on the independent factor(s) Logistic regression: The independent factor is categorical (hopefully only two levels) and follows a s-shaped relation. 9 Remember the simple linear regression? If Y is linearly dependent on X, simple linear regression is used: Y j X j is the intercept, the value of Y when X = 0 is the slope, the rate in which Y increases when X increases 10 I the relation linear? 12 10 8 6 4 2 0 -2 -4 -3 -2 -1 0 1 2 3 11 Multiple linear regression If Y is linearly dependent on more than one independent variable: Y j 1 X 1 j 2 X 2 j is the intercept, the value of Y when X1 and X2 = 0 1 and 2 are termed partial regression coefficients 1 expresses the change of Y for one unit of X when 2 is kept constant 4.5 4 3.5 3 2.5 2 1.5 1 0.5 0 7 6 25 5 20 4 15 3 10 2 5 1 0 12 Multiple linear regression – residual error and estimations As the collected data is not expected to fall in a plane an error term must be added Y j 1 X 1 j 2 X 2 j j The error term sums up to be zero. Estimating the dependent factor and the population parameters: Yˆj a b1 X 1 j b2 X 2 j 4.5 4 3.5 3 2.5 2 1.5 1 0.5 0 7 6 25 5 20 4 15 3 10 2 5 1 0 13 Multiple linear regression – general equations In general an finite number (m) of independent variables may be used to estimate the hyperplane m Y j i X ij j i 1 The number of sample points must be two more than the number of variables 14 Multiple linear regression – least sum of squares The principle of the least sum of squares are usually used to perform the fit: Y n j 1 j Yˆj 2 15 Multiple linear regression – An example 16 Multiple linear regression – The fitted equation 17 Multiple linear regression – Are any of the coefficients significant? F = regression MS / residual MS 18 Multiple linear regression – Is it a good fit? R2 = 1-regression SS / total SS • Is an expression of how much of the variation can be described by the model • When comparing models with different numbers of variables the adjusted R-square should be used: Ra2 = 1 – regression MS / total MS The multiple regression coefficient: R = sqrt(R2) The standard error of the estimate = sqrt(residual MS) 19 Multiple linear regression – Which of the coefficient are significant? • • • • • sbi is the standard error of the regression parameter bi t-test tests if bi is different from 0 t = bi / sbi is the residual DF p values can be found in a table 20 Multiple linear regression – Which of the are most important? • The standardized regression coefficient , b’ is a normalized version of b b bi ' i x y 2 i 2 21 Multiple linear regression - multicollinearity • • • If two factors are well correlated the estimated b’s becomes inaccurate. Collinearity, intercorrelation, nonorthogonality, illconditioning Tolerance or variance inflation factors can be computed • Extreme correlation is called singularity and on of the correlated variables must be removed. 22 Multiple linear regression – Pairvise correlation coefficients rxy xy ; xy X x y 2 2 2 i X Yi Y ; x X i X 2 23 Multiple linear regression – Assumptions The same as for simple linear regression: 1. Y’s are randomly sampled 2. The residuals are normal distributed 3. The residuals have equal variance 4. The X’s are fixed factors (their error are small). 5. The X’s are not perfectly correlated 24