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*************NO YOGA!!!!!!!************************************. temporary. select if human gt 1 and Q_TotalDuration gt 239 and subjectnum ne 672 and subj ectnum ne 115 and subjectnum ne 104 and subjectnum ne 28 and subjectnum ne 57 and subjectnum ne 738 and subjectnum ne 499 and subjectnu m ne 476. /STATISTICS COEFF OUTS CI(95) BCOV R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT favorability /METHOD=ENTER ZAnxious6 zallcontact. Regression Notes Output Created Comments Input Missing Value Handling Data Active Dataset Filter Weight Split File N of Rows in Working Data File Definition of Missing Cases Used 25-JAN-2017 17:13:16 /Users/bettencourta/Docu ments/mollie's Seems newst for Anxiety intergroup Generalization Data/2017_No_HR_No_le ss4minutes_new_super_ Merged_3_datasets.sav DataSet1 User-defined missing values are treated as missing. Statistics are based on cases with no missing values for any variable used. 371 Page 1

Syntax Resources Notes Processor Time Elapsed Time Memory Required Additional Memory Required for Residual Plots /STATISTICS COEFF OUTS CI(95) BCOV R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT favorability /METHOD=ENTER ZAnxious6 zallcontact. 11232 bytes 0 bytes 00:00:00.01 00:00:00.00 Entered/Removed a Entered 1 (allcontact),, IntAn x6, (Anxious6) b Removed Method. Enter b. All requested variables entered. R R Square Summary Adjusted R Square Std. Error of the Estimate 1.781 a.611.606.66219 a. Predictors: (Constant),,,, Page 2

ANOVA a 1 Regression Residual Total Sum of Squares df Mean Square F Sig. 250.426 4 62.607 142.774.000 b 159.614 364.439 410.041 368 b. Predictors: (Constant),,,, Coefficients a Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig. 4.596.035 133.019.000 -.005.038 -.004 -.137.891 -.559.040 -.517-14.028.000.085.037.077 2.324.021.413.039.394 10.644.000 Coefficients a 95.0% Confidence Interval for B Lower Bound Upper Bound 4.528 4.664 -.079.069 -.638 -.481.013.158.337.490 Page 3

Coefficient Correlations a 1 Correlations Covariances (allcontact) (Anxious6) 1.000 -.059.099.462 -.059 1.000 -.070 -.047.099 -.070 1.000.042.462 -.047.042 1.000.002-8.533E-5.000.001-8.533E-5.001-9.595E-5-7.019E-5.000-9.595E-5.001 6.193E-5.001-7.019E-5 6.193E-5.002 temporary. select if human gt 1 and Q_TotalDuration gt 239 and subjectnum ne 42 and subje ctnum ne 195 and subjectnum ne 180 and subjectnum ne 672 and subjectnum ne 11 5 and subjectnum ne 57. /STATISTICS COEFF OUTS CI(95) BCOV R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT POSITIVETRAITS /METHOD=ENTER ZAnxious6 zallcontact. Regression Page 4

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-2017 17:13:44 /Users/bettencourta/Docu ments/mollie's Seems newst for Anxiety intergroup Generalization Data/2017_No_HR_No_le ss4minutes_new_super_ Merged_3_datasets.sav DataSet1 User-defined missing values are treated as missing. Statistics are based on cases with no missing values for any variable used. /STATISTICS COEFF OUTS CI(95) BCOV R ANOVA /CRITERIA=PIN(.05) POUT(.10) /DEPENDENT POSITIVETRAITS /METHOD=ENTER ZAnxious6 zallcontact. 11232 bytes 0 bytes 373 00:00:00.01 00:00:00.00 Page 5

Entered/Removed a Entered 1 (allcontact),, IntAn x6, (Anxious6) b Removed Method. Enter b. All requested variables entered. R R Square Summary Adjusted R Square Std. Error of the Estimate 1.606 a.367.360.59933 a. Predictors: (Constant),,,, ANOVA a 1 Regression Residual Total Sum of Squares df Mean Square F Sig. 76.321 4 19.080 53.119.000 b 131.466 366.359 207.787 370 b. Predictors: (Constant),,,, Page 6

Coefficients a Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig. 3.709.031 118.769.000 -.007.034 -.008 -.197.844 -.273.037 -.349-7.446.000.068.033.086 2.059.040.266.035.357 7.582.000 Coefficients a 95.0% Confidence Interval for B Lower Bound Upper Bound 3.648 3.770 -.073.060 -.345 -.201.003.133.197.335 Coefficient Correlations a 1 Correlations Covariances (allcontact) (Anxious6) 1.000 -.053.098.464 -.053 1.000 -.065 -.038.098 -.065 1.000.049.464 -.038.049 1.000.001-6.299E-5.000.001-6.299E-5.001-7.251E-5-4.644E-5.000-7.251E-5.001 5.977E-5.001-4.644E-5 5.977E-5.001 Page 7