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1 /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT Favorability /METHOD=ENTER zcontemp ZAnxious6 zallcontact. Regression Notes Output Created Comments Input Missing Value Handling Syntax Data Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used 25-JAN :21:57 /Users/bettencourta/Docu ments/mollie's Seems newst for Anxiety intergroup Generalization Data/India_TwoDataset_Al l_ps_august_2015.sav DataSet1 User-defined missing values are treated as missing. Statistics are based on cases with no missing values for any variable used. 328 /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT Favorability /METHOD=ENTER zcontemp ZAnxious6 zallcontact. Page 1

2 Resources Notes Processor Time Elapsed Time Memory Required Additional Memory Required for Residual Plots bytes 0 bytes 00:00: :00:00.00 [DataSet1] /Users/bettencourta/Documents/Mollie's Seems newst for Anxiety inte rgroup Generalization Data/India_TwoDataset_All_Ps_August_2015.sav Entered/Removed a Entered 1 InterContemp Anx6, (allcontact), (Contemp), (Anxious6) b Removed Method. Enter a. Dependent Variable: Favorability b. All requested variables entered. R R Square Summary Adjusted R Square Std. Error of the Estimate a a. Predictors: (Constant),,, (Contemp), Page 2

3 ANOVA a 1 Regression Residual Total Sum of Squares df Mean Square F Sig b a. Dependent Variable: Favorability b. Predictors: (Constant),,, (Contemp), Coefficients a (Contemp) Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig Coefficients a (Contemp) 95.0% Confidence Interval for B Lower Bound Upper Bound a. Dependent Variable: Favorability /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) Page 3

4 /DEPENDENT PositiveTraits /METHOD=ENTER zcontemp ZAnxious6 zallcontact. Regression Notes Output Created Comments Input Missing Value Handling Syntax Resources Data Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time Memory Required Additional Memory Required for Residual Plots 25-JAN :22:33 /Users/bettencourta/Docu ments/mollie's Seems newst for Anxiety intergroup Generalization Data/India_TwoDataset_Al l_ps_august_2015.sav DataSet1 User-defined missing values are treated as missing. Statistics are based on cases with no missing values for any variable used. 328 /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT PositiveTraits /METHOD=ENTER zcontemp ZAnxious6 zallcontact bytes 0 bytes 00:00: :00:00.00 Page 4

5 Entered/Removed a Entered 1 InterContemp Anx6, (allcontact), (Contemp), (Anxious6) b Removed Method. Enter a. Dependent Variable: positivetraits b. All requested variables entered. R R Square Summary Adjusted R Square Std. Error of the Estimate a a. Predictors: (Constant),,, (Contemp), ANOVA a 1 Regression Residual Total Sum of Squares df Mean Square F Sig b a. Dependent Variable: positivetraits b. Predictors: (Constant),,, (Contemp), Page 5

6 Coefficients a (Contemp) Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig Coefficients a (Contemp) 95.0% Confidence Interval for B Lower Bound Upper Bound a. Dependent Variable: positivetraits /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT favorother /METHOD=ENTER zcontemp ZAnxious6 zallcontact. Regression Page 6

7 Output Created Comments Input Missing Value Handling Syntax Resources Data Notes Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time Memory Required Additional Memory Required for Residual Plots 25-JAN :22:59 /Users/bettencourta/Docu ments/mollie's Seems newst for Anxiety intergroup Generalization Data/India_TwoDataset_Al l_ps_august_2015.sav DataSet1 User-defined missing values are treated as missing. Statistics are based on cases with no missing values for any variable used. 328 /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT favorother /METHOD=ENTER zcontemp ZAnxious6 zallcontact bytes 0 bytes 00:00: :00:00.00 Page 7

8 Entered/Removed a Entered 1 InterContemp Anx6, (allcontact), (Contemp), (Anxious6) b Removed Method. Enter a. Dependent Variable: Favorother b. All requested variables entered. R R Square Summary Adjusted R Square Std. Error of the Estimate a a. Predictors: (Constant),,, (Contemp), ANOVA a 1 Regression Residual Total Sum of Squares df Mean Square F Sig b a. Dependent Variable: Favorother b. Predictors: (Constant),,, (Contemp), Page 8

9 Coefficients a (Contemp) Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig Coefficients a (Contemp) 95.0% Confidence Interval for B Lower Bound Upper Bound a. Dependent Variable: Favorother /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT NegativeOther /METHOD=ENTER zcontemp ZAnxious6 zallcontact gender reli gionvector. Regression Page 9

10 Output Created Comments Input Missing Value Handling Syntax Resources Data Notes Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time Memory Required Additional Memory Required for Residual Plots 25-JAN :24:23 /Users/bettencourta/Docu ments/mollie's Seems newst for Anxiety intergroup Generalization Data/India_TwoDataset_Al l_ps_august_2015.sav DataSet1 User-defined missing values are treated as missing. Statistics are based on cases with no missing values for any variable used. 328 /STATISTICS COEFF OUTS CI(95) R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT NegativeOther /METHOD=ENTER zcontemp ZAnxious6 zallcontact gender religionvector bytes 0 bytes 00:00: :00:00.00 Page 10

11 Entered/Removed a Entered 1 religionvector, Gender?, InterContemp Anx6, (Anxious6), (Contemp), (allcontact) b Removed Method. Enter a. Dependent Variable: Negativeother b. All requested variables entered. R R Square Summary Adjusted R Square Std. Error of the Estimate a a. Predictors: (Constant), religionvector, Gender?,,, (Contemp), ANOVA a 1 Regression Residual Total Sum of Squares df Mean Square F Sig b a. Dependent Variable: Negativeother b. Predictors: (Constant), religionvector, Gender?,,, (Contemp), Page 11

12 Coefficients a (Contemp) Gender? religionvector Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig Coefficients a (Contemp) Gender? religionvector 95.0% Confidence Interval for B Lower Bound Upper Bound a. Dependent Variable: Negativeother Page 12

DataSet2. <none> <none> <none>

DataSet2. <none> <none> <none> GGraph Notes Output Created 09-Dec-0 07:50:6 Comments Input Active Dataset Filter Weight Split File DataSet Syntax Resources N of Rows in Working Data File Processor Time Elapsed Time 77 GGRAPH /GRAPHDATASET

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