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1 MIXED mathach /CRITERIA=CIN(95) MXITER(00) MXSTEP(5) SCORING() SINGULAR( ) HCONVERGE(0, ABSOLUTE) LCONVERGE(0, ABSOLUTE) PCONVERGE( , ABSOLUTE) /FIXED= SSTYPE() /RANDOM=INTERCEPT SUBJECT() COVTYPE(VC). [DataSet] C:\Documents and Settings\uyj000\Desktop\HLMExample0.sav a 2 Components s a. As of version.5, the syntax rules for the RANDOM subcommand have changed. Your command syntax may yield results that differ from those produced by prior versions. If you are using version syntax, please consult the current syntax reference guide for more information Page

2 Type III Tests of a Source Numerator df df s of a Paramet er df t Sig. Lower Bound Upper Bound s s of s a [subject = MIXED mathach WITH /CRITERIA=CIN(95) MXITER(00) MXSTEP(5) SCORING() SINGULAR( ) HCONVERGE(0, ABSOLUTE) LCONVERGE(0, ABSOLUTE) PCONVERGE( , ABSOLUTE) /FIXED= SSTYPE() /RANDOM=INTERCEPT SUBJECT() COVTYPE(VC). [DataSet] C:\Documents and Settings\uyj000\Desktop\HLMExample0.sav Page 2

3 a Components s 4 a. As of version.5, the syntax rules for the RANDOM subcommand have changed. Your command syntax may yield results that differ from those produced by prior versions. If you are using version syntax, please consult the current syntax reference guide for more information Type III Tests of a Source Numerator df df s of a Paramet er df t Sig. Lower Bound Upper Bound s Page

4 s of s a [subject = MIXED mathach WITH /CRITERIA=CIN(95) MXITER(00) MXSTEP(5) SCORING() SINGULAR( ) HCONVERGE(0, ABSOLUTE) LCONVERGE(0, ABSOLUTE) PCONVERGE( , ABSOLUTE) /FIXED= SSTYPE() /RANDOM=INTERCEPT SUBJECT() COVTYPE(UN). [DataSet] C:\Documents and Settings\uyj000\Desktop\HLMExample0.sav + a 2 4 Unstructured s 6 a. As of version.5, the syntax rules for the RANDOM subcommand have changed. Your command syntax may yield results that differ from those produced by prior versions. If you are using version syntax, please consult the current syntax reference guide for more information Page 4

5 Type III Tests of a Source Numerator df df s of a Paramet er df t Sig. Lower Bound Upper Bound s s of s a + [subject = UN (,) UN (2,) UN (2,2) MIXED mathach WITH /CRITERIA=CIN(95) MXITER(00) MXSTEP(5) SCORING() SINGULAR( ) HCONVERGE(0, ABSOLUTE) LCONVERGE(0, ABSOLUTE) PCONVERGE( , ABSOLUTE) /FIXED= * * SSTYPE() /RANDOM=INTERCEPT SUBJECT() COVTYPE(UN). [DataSet] C:\Documents and Settings\uyj000\Desktop\HLMExample0.sav Page 5

6 * * + a 2 8 Unstructured s 0 a. As of version.5, the syntax rules for the RANDOM subcommand have changed. Your command syntax may yield results that differ from those produced by prior versions. If you are using version syntax, please consult the current syntax reference guide for more information Type III Tests of a Source Numerator df df * * Page 6

7 s of a df t Sig * * * Lower Bound Upper Bound * s s of a s of s a + [subject = UN (,) UN (2,) UN (2,2) Page 7

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