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Regression€Logistic Regression€é˙˙˙€€(Title€Logistic Regressioní˙˙˙ź"ArialalPŠ{\rtf1\ansi\deff0{\fonttbl{\f0\fswiss\fprq2\fcharset0 Arial;}} {\colortbl ;\red0\green0\blue0;} \viewkind4\uc1\pard\cf1\lang1033\b\f0\fs28 Logistic Regression\par } ˙˙NavNoteý”ţ˙˙€€(Notes€Logistic Regression˙˙PTPivotControllerdddd˙˙ PVPivotView˙˙ PMPivotModel˙˙NDimensional__DspCell˙˙IndexedCollection ˙˙DspCell€˙˙ DspNumber€D‹wH¤óB13-APR-2007 15:00:30&€€€( &€€€(˙˙D:\Saved\WINWORD\MGS9950\fox-data\chile.sav &€€€(VoteIntent<3 (FILTER)&€€€(&€€€(&€€)€(€t›@1757&€€€(2User-defined missing values are treated as missing&€€€(™LOGISTIC REGRESSION VoteIntent /METHOD = ENTER Gender Age MOIncomeSTD /METHOD = ENTER StatQuo /CRITERIA = PIN(.05) POUT(.10) ITERATE(20) CUT(.5) . &€€)€ €{ŽGáz´? 0:00:00.08NotesLogisticRegression_Notes˙˙PMPivotItemTree˙˙AbstractTreeBranch˙˙PMModelItemInfo€€(ContentsH€J€t€€(Output CreatedH€J€t€€(CommentsH€J€t€€(InputH€J€t€€(DataH€J€ t€€(FilterH€J€ t€€(WeightH€J€ t€€( Split FileH€J€t€€(N of Rows in 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€"€$€$€&€€)€(€S_÷<Ü@@33.721&€€)€(€đ?1&€€)€(€ŚlS;>.000$€&€€)€(€Ü^ˆ@ A@35.252&€€)€(€đ?1&€€)€(€.000$€&€€)€(€^ݑ Ž?.059&€€)€(€đ?1&€€)€(€Ó§ÉŚîŕé?.809$€&€€)€(€„ąŞňŽQ@70.234&€€)€(€@3&€€)€(€ú2UMÂ!ń<.000Variables not in the Equation2LogisticRegression_Table_VariablesnotintheEquationF€H€J€€€( StatisticsH€J€ó7t€€(ScoreH€J€ô7t€€(dfH€J€ő7t€€(Sig.ƒ‡F€H€J€€€(VarnameH€J€€€(Step 0H€J€ö7t€€( VariablesH€J€˙˙˙˙€€(GenderH€J€˙˙˙˙€€(AgeH€J€˙˙˙˙€€( MOIncomeSTDH€J€÷7t€€(Overall Statistics˜œ ¤K†€zKKK4†€‹KKirr€€(Variables not in the Equation€€(€€(Ž€6€€“€˙˙˙•€Čx xó˙˙˙ź"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čhh((ó˙˙˙"Arial(cont.)$H$xĽ€M€€€(Block 1: Method = Enter€Ä€Çű˙˙°ű˙˙€€(Title€ČLogistic Regressioní˙˙˙ź"ArialalP­{\rtf1\ansi\deff0{\fonttbl{\f0\fswiss\fprq2\fcharset0 Arial;}} {\colortbl ;\red0\green0\blue0;} \viewkind4\uc1\pard\cf1\lang1033\b\f0\fs28 Block 1: Method = Enter\par } Ź€Žű˙˙‚ű˙˙€€(#Omnibus Tests of 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TableK†€ŤKK^^†€ŔKK†€ÓK7߀€(€€(Ž€6€€“€˙˙˙•€Čx xó˙˙˙ź"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čhh((ó˙˙˙"Arial(cont.)$H$xĽ€Ź€^ů˙˙‰ťř˙˙€€(Variables in the Equation€ ýLogistic Regression€dddd€ €"€$€$€&€€)€(€~VŃ Ţâż-.590&€€)€(€2“aš?.099&€€)€(€9fkűĎŽA@35.366&€€)€(€đ?1&€€)€(€×R&uęx'>.000&€€)€(€jL;מá?.555$€&€€)€(€•;Ě7ŤÇ”ż-.020&€€)€(€ ‡Dsk?.003&€€)€(€úřŽ"wVB@36.676&€€)€(€đ?1&€€)€(€¸`×4ř>.000&€€)€(€ ×Ìo[ď?.980$€&€€)€(€̞Ŕ˝ŚşKż-.001&€€)€(€L2ˆ|ţ8Š?.049&€€)€(€ÓńŘ=…V3?.000&€€)€(€đ?1&€€)€(€˙¸ő0şď?.986&€€)€(€Č|ůď?.999$€&€€)€(€í‘>§Sĺú?1.681&€€)€(€]Ź]_YiĘ?.206&€€)€(€đâşi–—P@66.369&€€)€(€đ?1&€€)€(€RÍĘčyóş<.000&€€)€(€Đf˘Â{@5.371Variables in the Equation/LogisticRegression_Table_VariablesintheEquationF€H€J€€€( StatisticsH€J€ë7t€€(BH€J€ě7t€€(S.E.H€J€í7t€€(WaldH€J€ô7t€€(dfH€J€ő7t€€(Sig.H€J€î7t€€(Exp(B)W[_cgkF€H€J€ű7t€€(VariableH€J€€$€€(Step 1H€J€˙˙˙˙€€(GenderH€J€˙˙˙˙€€(AgeH€J€˙˙˙˙€€( MOIncomeSTDH€J€ň7t€€(Constanty}…€(8Variable(s) entered on step 1: Gender, Age, MOIncomeSTD.(s) vK†€RKKKKKK9†€oKKiKi€€(Variables in the Equation€€(€€(Ž€6€€“€˙˙˙•€Čx xó˙˙˙ź"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čhh((ó˙˙˙"Arial(cont.)$H$xĽ€€€€(Block 2: Method = Enter€¨€™ř˙˙‚ř˙˙€€(Title€ŹLogistic Regressioní˙˙˙ź"ArialalP­{\rtf1\ansi\deff0{\fonttbl{\f0\fswiss\fprq2\fcharset0 Arial;}} {\colortbl ;\red0\green0\blue0;} \viewkind4\uc1\pard\cf1\lang1033\b\f0\fs28 Block 2: Method = Enter\par } Ź€`ř˙˙‚ć÷˙˙€€(#Omnibus Tests of Model Coefficients€ °Logistic Regression€dddd€ €"€$€$€$€&€€)€(€˙đťޘ@1579.530&€€)€(€đ?1&€€)€(€.000$€&€€)€(€˙đťޘ@1579.530&€€)€(€đ?1&€€)€(€.000$€&€€)€(€‰Ë k˙@1650.855&€€)€(€@4&€€)€(€.000#Omnibus Tests of Model Coefficients8LogisticRegression_Table_OmnibusTestsofModelCoefficientsF€H€J€€€( StatisticsH€J€ý7t€€( Chi-squareH€J€ô7t€€(dfH€J€ő7t€€(Sig.ÝáĺF€H€J€ţ7t€€(ModelH€J€8t€€(StepH€J€8t€€(BlockH€J€ţ7t€€(ModelîňöF€H€J€8t€€(StepH€J€€€(Step 1˙K†€ŘTKKT†€éKKK5†€úK7€€(#Omnibus Tests of Model Coefficients€€(€€(Ž€6€€“€˙˙˙•€Čx xó˙˙˙ź"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čhh((ó˙˙˙"Arial(cont.)$H$xĽ€´Ź€Ä÷˙˙œ:÷˙˙€€( Model Summary€ Logistic Regression€dddd€ €"€$€$€&€€$€)€(€RЧŤ¤n†@717.830&€€)€(€§}ÔwŇă?.619&€€)€(€Ük4čnę?.826 Model Summary%LogisticRegression_Table_ModelSummaryF€H€J€€€( StatisticsH€J€8t€€(-2 Log likelihoodH€J€8t€€(Cox & Snell R SquareH€J€8t€€(Nagelkerke R Square9=AF€H€J€8t€€(StepH€J€˙˙˙˙€)€(€đ?1J€(bEstimation terminated at iteration number 6 because parameter estimates changed by less than .001.+K†€4PU^^†€EK2€€€( Model Summary€€(€€(Ž€6€€“€˙˙˙•€Čx xó˙˙˙ź"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čhh((ó˙˙˙"Arial(cont.)$H$xĽ€$Ź€÷˙˙URö˙˙€€(Classification Table€ mLogistic Regression€dddd€ €"€$€$€$€&€€)€(€ˆ@770&€€)€(€€Q@70&€€)€(€ŤŞŞŞŞęV@91.7$€&€€)€(€€M@59&€€)€(€P‰@810&€€)€(€'9fAzMW@93.2$€&€€)€(€ţOŇéW@92.5Classification Table,LogisticRegression_Table_ClassificationTableF€H€J€ŕ7t€€( PredictedH€J€˙˙˙˙€€(1=for,2=againstH€J€˙˙˙˙€)€(€đ?1H€J€˙˙˙˙€)€(€@2H€J€ä7t€€(Percentage Correct˜œ F€H€J€á7t€€(ObservedH€J€˙˙˙˙€€(1=for,2=againstH€J€˙˙˙˙€›H€J€˙˙˙˙€ŸH€J€ĺ7t€€(Overall Percentage­°łF€H€J€8t€€(StepH€J€€€(Step 1ꁁ€(The cut value is .500 €$€€(Classification TableK†€KK^^†€¤KK†€ˇK7Ă€€(€€(Ž€6€€“€˙˙˙•€Čx xó˙˙˙ź"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čhh((ó˙˙˙"Arial(cont.)$H$xĽ€qŹ€0ö˙˙‰ző˙˙€€(Variables in the Equation€ áLogistic Regression€dddd€ €"€$€$€&€€)€(€ PE8^Ôăż-.620&€€)€(€=&€€€(&€€)€(€t›@1757&€€€(3User defined missing values are treated as missing.&€€€(All non-missing data are used.&€€€(gDESCRIPTIVES VARIABLES=Gender Age StatQuo VoteIntent MOIncomeSTD /STATISTICS=MEAN STDDEV MIN MAX . &€€)€ €{ŽGáz„? 0:00:00.01NotesDescriptives_NotesF€H€J€ t€€(ContentsH€J€t€€(Output CreatedH€J€t€€(CommentsH€J€t€€(InputH€J€t€€(DataH€J€ t€€(FilterH€J€ t€€(WeightH€J€ t€€( Split FileH€J€t€€(N of Rows in Working Data FileH€J€t€€(Missing Value HandlingH€J€ t€€(Definition of MissingH€J€t€€( Cases UsedH€J€ t€€(SyntaxH€J€t€€( ResourcesH€J€ t€€( Elapsed Time ÚŢćęîňöţ  á†€Ő iTKKKK}‡\Kc‡€€(Notes€€(€€(Ž€6€€“€˙˙˙•€Čx xó˙˙˙ź"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čx ó˙˙˙"Arial“€˙˙˙•€Čhh((ó˙˙˙"Arial(cont.)$H$xĽ€Ż§€ő˙˙łő˙˙€€(Active Dataset€- Descriptivesó˙˙˙"Courier Newr NewPŐ{\rtf1\ansi\deff0{\fonttbl{\f0\fswiss\fprq2\fcharset0 Courier New;}} 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