CHAPTER 5 EXAMPLES: CONFIRMATORY FACTOR …
DATA: FILE IS ex5.1.dat; The DATA command is used to provide information about the data set to be analyzed. The FILE option is used to specify the name of the file that contains the data to be analyzed, ex5.1.dat. Because the data set is in free format, the default, a FORMAT statement is not required. VARIABLE: NAMES ARE y1-y6;
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