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1 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 NAME=" graphdataset" VARIABLES= Height MISSING=LISTWISE REPORTMISSING=NO /GRAPHSPEC SOURCE=INLINE BEGIN GPL SOURCE: s=usersource(id ("graphdataset")) DATA: =col(source(s), name("")) DATA: Height=col(source(s), name ("Height")) GUIDE: axis(dim(), label ("")) GUIDE: axis(dim(), label("height")) ELEMENT: point(position (*Height)) END GPL 00:00: :00:004 [DataSet] Page

2 Height REGRESSION /MISSING LISTWISE /STATISTICS COEFF OUTS R ANOVA /CRITERIA=PIN(05) POUT(0) /NOORIGIN /DEPENDENT Height /METHOD=ENTER Page

3 Notes Output Created 09-Dec-0 07:5:6 Comments Input Active Dataset Filter Weight Split File DataSet Missing Value Handling Syntax Resources N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time Memory Required Additional Memory Required for Plots User-defined missing values are treated as missing Statistics are based on cases with no missing values for any variable used REGRESSION /MISSING LISTWISE /STATISTICS COEFF OUTS R ANOVA /CRITERIA=PIN(05) POUT(0) /NOORIGIN /DEPENDENT Height /METHOD=ENTER 448 bytes 0 bytes 77 00:00: :00:058 [DataSet] Variables ed/removed b Variables ed Variables Removed Method a a All requested variables entered b Dependent Variable: Height R Summary R Square Adjusted R Square Std Error of the Estimate 68 a a Predictors:, Page

4 ANOVA b Sum of Squares 890 df Mean Square 890 F 56 Sig 00 a a Predictors:, b Dependent Variable: Height Coefficients a Unstandardized Coefficients Standardized Coefficients B Std Error Beta t Sig a Dependent Variable: Height SORT CASES BY Group SPLIT FILE LAYERED BY Group REGRESSION /MISSING LISTWISE /STATISTICS COEFF OUTS R ANOVA /CRITERIA=PIN(05) POUT(0) /NOORIGIN /DEPENDENT Height /METHOD=ENTER Page 4

5 Notes Output Created 09-Dec-0 07:5:0 Comments Input Active Dataset Filter Weight Split File DataSet Group Missing Value Handling Syntax Resources N of Rows in Working Data File Definition of Missing Cases Used Processor Time Elapsed Time Memory Required Additional Memory Required for Plots User-defined missing values are treated as missing Statistics are based on cases with no missing values for any variable used REGRESSION /MISSING LISTWISE /STATISTICS COEFF OUTS R ANOVA /CRITERIA=PIN(05) POUT(0) /NOORIGIN /DEPENDENT Height /METHOD=ENTER 448 bytes 0 bytes 77 00:00:007 00:00:009 [DataSet] Warnings There are no valid cases in split file Group= for models with dependent variable Height Statistics cannot be computed No valid cases found in split file Group= Equation-building skipped Page 5

6 Group Variables ed/removed b,c Variables ed a a a a a a a Variables Removed Method 8 a a All requested variables entered b There are no valid cases in one or more split files Statistics cannot be computed c Dependent Variable: Height Group R 9 a 945 a 87 a 9 a 87 a 000 a 46 a Summary b R Square Adjusted R Square -5 Std Error of the Estimate a a Predictors:, b There are no valid cases in one or more split files Statistics cannot be computed Page 6

7 ANOVA b,c Group Sum of Squares 076 df Mean Square 076 F 9800 Sig 089 a a a a a a a a a Predictors:, b There are no valid cases in one or more split files Statistics cannot be computed c Dependent Variable: Height Page 7

8 Coefficients a,b Unstandardized Coefficients Standardized Coefficients Group B Std Error Beta t Sig a There are no valid cases in one or more split files Statistics cannot be computed b Dependent Variable: Height Excluded Variables a a There are no valid cases in one or more split files Statistics cannot be computed Page 8

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