Regression. Page 1. Variables Entered/Removed b Variables. Variables Removed. Enter. Method. Psycho_Dum

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1 Regression Model Variables Entered/Removed b Variables Entered Variables Removed Method Meds_Dum,. Enter Psycho_Dum a. All requested variables entered. b. Dependent Variable: Beck's Depression Score Model R Model Summary R Square Adjusted R Square Std. Error of the Estimate.338 a a. Predictors: (Constant), Meds_Dum, Psycho_Dum Model Regression Residual Total Sum of Squares AOVA b a. Predictors: (Constant), Meds_Dum, Psycho_Dum b. Dependent Variable: Beck's Depression Score df Coefficients a Square F Sig. a Model (Constant) Psycho_Dum Meds_Dum Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig a. Dependent Variable: Beck's Depression Score UIAOVA bdi BY group /ITERCEPT=ICLUDE /POSTHOC=group(DUETT) /PRIT=OPOWER ETASQ DESCRIPTIVE /DESIG=group. Page

2 Univariate Analysis of Variance otes Output Created 08-Sep-0 :40:36 Comments Input Data Active Dataset Filter Weight Split File C:\Documents and Settings\ajg40\Desktop\Depression Regression AOVA.sav DataSet of Rows in Working Data File Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics are based on all cases with valid data for all variables in the model. Syntax Resources Processor Time Elapsed Time UIAOVA bdi BY group /ITERCEPT=ICLUDE /POSTHOC=group(DUETT) /PRIT=OPOWER ETASQ DESCRIPTIVE /DESIG=group :00: :00:00.56 [DataSet] C:\Documents and Settings\ajg40\Desktop\Depression Regression AOV A.sav Between-Subjects Factors Value Label Psychotherap y Medication 3 Control Page

3 Psychotherapy Medication Descriptive Statistics Std. Deviation Total group Error Total Type III Sum of Squares a Corrected Total df 83 Square F Sig..000 Partial Eta Squared oncent. Parameter Observed Power b.000 group 0.74 a. R Squared =.5 (Adjusted R Squared =.093) b. Computed using alpha =.05 Post Hoc Tests Page 3

4 Beck's Depression Score Dunnett t (-sided) a Multiple Comparisons (I) (J) Difference (I- J) Std. Error Sig. Psychotherapy * Medication * Beck's Depression Score Dunnett t (-sided) a (I) Psychotherapy (J) Multiple Comparisons 95% Confidence Interval Lower Bound Upper Bound -.78 Medication Based on observed means. The error term is Square(Error) = a. Dunnett t-tests treat one group as a control, and compare all other groups against it. *. The mean difference is significant at the.05 level. UIAOVA bdi BY group /ITERCEPT=ICLUDE /POSTHOC=group(DUETTR) /PRIT=OPOWER ETASQ DESCRIPTIVE /DESIG=group. Univariate Analysis of Variance Page 4

5 otes Output Created 08-Sep-0 :4:50 Comments Input Data Active Dataset Filter Weight Split File C:\Documents and Settings\ajg40\Desktop\Depression Regression AOVA.sav DataSet of Rows in Working Data File Missing Value Handling Definition of Missing User-defined missing values are treated as missing. Cases Used Statistics are based on all cases with valid data for all variables in the model. Syntax Resources Processor Time Elapsed Time UIAOVA bdi BY group /ITERCEPT=ICLUDE /POSTHOC=group(DUETTR) /PRIT=OPOWER ETASQ DESCRIPTIVE /DESIG=group :00: :00:00.66 [DataSet] C:\Documents and Settings\ajg40\Desktop\Depression Regression AOV A.sav Between-Subjects Factors Value Label Psychotherap y Medication 3 Control Psychotherapy Descriptive Statistics Std. Deviation.877 Medication Total Page 5

6 group Error Total Type III Sum of Squares a Corrected Total df 83 Square F Sig..000 Partial Eta Squared oncent. Parameter Observed Power b.000 group 0.74 a. R Squared =.5 (Adjusted R Squared =.093) b. Computed using alpha =.05 Post Hoc Tests Beck's Depression Score Dunnett t (>control) a (I) Psychotherapy (J) Multiple Comparisons 95% Confidence Interval Difference (I- J) Std. Error Sig. Lower Bound Medication Based on observed means. The error term is Square(Error) = a. Dunnett t-tests treat one group as a control, and compare all other groups against it. UIAOVA bdi BY group /ITERCEPT=ICLUDE Page 6

7 /POSTHOC=group(DUETTL) /PRIT=OPOWER ETASQ DESCRIPTIVE /DESIG=group. Univariate Analysis of Variance [DataSet] C:\Documents and Settings\ajg40\Desktop\Depression Regression AOV A.sav Between-Subjects Factors Value Label Psychotherap y Medication 3 Control Psychotherapy Medication Descriptive Statistics Std. Deviation Total group Error Total Type III Sum of Squares a Corrected Total df 83 Square F Sig..000 Partial Eta Squared Page 7

8 oncent. Parameter Observed Power b.000 group 0.74 a. R Squared =.5 (Adjusted R Squared =.093) b. Computed using alpha =.05 Post Hoc Tests Beck's Depression Score Dunnett t (<control) a Multiple Comparisons 95% Confidence Interval (I) (J) Difference (I- J) Std. Error Sig. Upper Bound Psychotherapy * Medication * Based on observed means. The error term is Square(Error) = a. Dunnett t-tests treat one group as a control, and compare all other groups against it. *. The mean difference is significant at the.05 level. Page 8

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