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1 NOMREG ctra (BASE='' ORDER=ASCENDING) WITH /CRITERIA CIN(95) DELTA(0) MXITER(100) MXSTEP(5) CHKSEP(20) LCONVERGE(0) PCONVERGE( ) SINGULAR( ) /STEPWISE = PIN(05) POUT(01) MINEFFECT(0) RULE(SINGLE) ENTRYMETHOD(LR) /PRINT = CELLPROB CLASSTABLE FIT PARAMETER SUMMARY LRT CPS STEP MFI IC Nmial Regrei Nte Output Created Cmmet Iput Miig Value Hadlig Sytax Reurce Data Active Dataet Filter Weight Split File N f Rw i Wrkig Data File Defiiti f Miig Cae Ued Elaped Time Prcer Time 22-MAR :25:41 E:\MacEwa\Teachig\tat 371\Nte\ctraceptiveav DataSet0 <e> freq <e> 21 Uer-defied miig value are treated a miig Statitic are baed all cae with valid data fr all variable i the mdel NOMREG ctra (BASE='' ORDER=ASCENDING) WITH /CRITERIA CIN(95) DELTA(0) MXITER(100) MXSTEP(5) CHKSEP(20) LCONVERGE(0) PCONVERGE( ) SINGULAR( ) /STEPWISE = PIN(05) POUT(01) MINEFFECT(0) RULE(SINGLE) ENTRYMETHOD(LR) /PRINT = CELLPROB CLASSTABLE FIT PARAMETER SUMMARY LRT CPS STEP MFI IC 0:00:0009 0:00:0006 [DataSet0] E:\MacEwa\Teachig\tat 371\Nte\ctraceptiveav P 1

2 Cae Prceig Summary ctra Valid Miig Ttal Subppulati Margial N Percet % % % % Mdel Fittig Ifrmati Mdel Itercept Oly Fial Mdel Fittig Criteria Likelihd Rati Tet -2 Lg AIC BIC Likelihd Chi-Square df Sig Gde-f-Fit Pear Deviace Chi-Square df Sig Peud R-Square Cx ad Sell Nlkerke McFadde Likelihd Rati Tet Effect Itercept Mdel Fittig Criteria Likelihd Rati Tet -2 Lg AIC f BIC f Likelihd f Reduced Reduced Reduced Mdel Mdel Mdel Chi-Square df Sig The chi-quare tatitic i the differece i -2 lg-likelihd betwee the fial mdel ad a reduced mdel The reduced mdel i frmed by mittig a effect frm the fial mdel The ull hypthei i that all parameter f that effect are 0 Parameter Etimate ctra a Itercept Itercept B Std Errr Wald df Sig Exp(B) P 2

3 Parameter Etimate 95% Cfidece Iterval fr Exp(B) ctra a Lwer Bud Upper Bud Itercept Itercept a The referece categry i: NOMREG ctra (BASE='' ORDER=ASCENDING) WITH /CRITERIA CIN(95) DELTA(0) MXITER(100) MXSTEP(5) CHKSEP(20) LCONVERGE(0) PCONVERGE( ) SINGULAR( ) /STEPWISE = PIN(05) POUT(01) MINEFFECT(0) RULE(SINGLE) ENTRYMETHOD(LR) /PRINT = CELLPROB CLASSTABLE FIT PARAMETER SUMMARY LRT CPS STEP MFI IC Nmial Regrei P 3

4 Nte Output Created Cmmet Iput Miig Value Hadlig Sytax Reurce Data Active Dataet Filter Weight Split File N f Rw i Wrkig Data File Defiiti f Miig Cae Ued Elaped Time Prcer Time 22-MAR :25:55 E:\MacEwa\Teachig\tat 371\Nte\ctraceptiveav DataSet0 <e> freq <e> 21 Uer-defied miig value are treated a miig Statitic are baed all cae with valid data fr all variable i the mdel NOMREG ctra (BASE='' ORDER=ASCENDING) WITH /CRITERIA CIN(95) DELTA(0) MXITER(100) MXSTEP(5) CHKSEP(20) LCONVERGE(0) PCONVERGE( ) SINGULAR( ) /STEPWISE = PIN(05) POUT(01) MINEFFECT(0) RULE(SINGLE) ENTRYMETHOD(LR) /PRINT = CELLPROB CLASSTABLE FIT PARAMETER SUMMARY LRT CPS STEP MFI IC 0:00:0011 0:00:0011 [DataSet0] E:\MacEwa\Teachig\tat 371\Nte\ctraceptiveav Cae Prceig Summary ctra Valid Miig Ttal Subppulati Margial N Percet % % % % P 4

5 Mdel Fittig Ifrmati Mdel Itercept Oly Fial Mdel Fittig Criteria Likelihd Rati Tet -2 Lg AIC BIC Likelihd Chi-Square df Sig Gde-f-Fit Pear Deviace Chi-Square df Sig Peud R-Square Cx ad Sell Nlkerke McFadde Likelihd Rati Tet Effect Itercept AIC f Reduced Mdel Fittig Criteria BIC f Reduced -2 Lg Likelihd f Reduced Likelihd Rati Tet Mdel Mdel Mdel Chi-Square df Sig The chi-quare tatitic i the differece i -2 lg-likelihd betwee the fial mdel ad a reduced mdel The reduced mdel i frmed by mittig a effect frm the fial mdel The ull hypthei i that all parameter f that effect are 0 Parameter Etimate ctra a Itercept Itercept B Std Errr Wald df Sig Exp(B) P 5

6 Parameter Etimate 95% Cfidece Iterval fr Exp(B) ctra a Lwer Bud Upper Bud Itercept Itercept a The referece categry i: Claificati Oberved Overall Percet Predicted Percet Crrect % % % 690% 0% 310% 551% Oberved ad Predicted Frequecie ctra Frequecy Percet Pear Oberved Predicted Reidual Oberved Predicted % 774% % 194% % 32% % 638% % 231% % 132% % 490% % 202% % 309% % 392% % 145% % 463% % 381% % 100% % 519% % 473% % 69% % 457% % 673% % 43% % 283% The percet are baed ttal berved frequecie i each ubppulati P 6

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