Custom Hypothesis Tests Index table removed to save space...
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1 Univari Analysis of Variance ( Simple Main Effect) Between-Subjects Factors 3 Value Label N 36 Gradu 36 Alone Gradu Tests of Between-Subjects Effects Corrected Model Intercept * Total Corrected Total Type III Sum of Squares df Mean Square F a a. R Squared =.44 (Adjusted R Squared =.397) Custom Hypothesis Tests Index table removed to save space... Page
2 Custom Hypothesis Tests # Results (K Matrix) a Estim a. Based on the user-specified contrast coefficients (L') matrix: vs Gradu within Alone Squares df Mean Square F Custom Hypothesis Tests # Results (K Matrix) a Estim a. Based on the user-specified contrast coefficients (L') matrix: vs Gradu within Squares df Mean Square F Page
3 Custom Hypothesis Tests #3 Results (K Matrix) a Estim a. Based on the user-specified contrast coefficients (L') matrix: vs Gradu within Gradu Squares df Mean Square F Page 3
4 Univari Analysis of Variance ( Type Simple Main Effect) Between-Subjects Factors 3 Value Label N 36 Gradu 36 Alone Gradu Tests of Between-Subjects Effects Corrected Model Intercept * Total Corrected Total Type III Sum of Squares df Mean Square F a a. R Squared =.44 (Adjusted R Squared =.397) Custom Hypothesis Tests Index table removed to save space... Page 4
5 Custom Hypothesis Tests # L L3 Results (K Matrix) a Estim Estim Estim a. Based on the user-specified contrast coefficients (L') matrix: within Squares df Mean Square F Page 5
6 Custom Hypothesis Tests # L L3 Results (K Matrix) a Estim Estim Estim a. Based on the user-specified contrast coefficients (L') matrix: within Gradu Squares df Mean Square F Page 6
7 Univari Analysis of Variance (Post Hoc for Type Simple Main Effect within ) Between-Subjects Factors 3 Value Label N 36 Gradu 36 Alone Gradu Tests of Between-Subjects Effects Corrected Model Intercept * Total Corrected Total Type III Sum of Squares df Mean Square F a a. R Squared =.44 (Adjusted R Squared =.397) Custom Hypothesis Tests Index table removed to save space... Page 7
8 Custom Hypothesis Tests # a. Results (K Matrix) a Estim Based on the user-specified contrast coefficients (L') matrix: Alone vs within Squares df Mean Square F Custom Hypothesis Tests # Results (K Matrix) a Estim a. Based on the user-specified contrast coefficients (L') matrix: Alone vs Gradu within Squares df Mean Square F Page 8
9 Custom Hypothesis Tests #3 a. Results (K Matrix) a Estim Based on the user-specified contrast coefficients (L') matrix: vs Gradu within Squares df Mean Square F Page 9
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