로짓모형을 이용한 질적 종속변수의 분석

Application of Logit Model in Qualitative Dependent Variables

  • 이길순 (신구전문대학 가정과) ;
  • 유완 (연세대학교 건축공학과)
  • Lee, Kil-Soon (Dept. of Home Economics Shingu Junior College) ;
  • Yu, Wann (Dept. of Architect Engineering, Yonsei University)
  • 발행 : 1992.06.01

초록

Regression analysis has become a standard statistical tool in the behavioral science. Because of its widespread popularity. regression has been often misused. Such is the case when the dependent variable is a qualitative measure rather than a continuous, interval measure. Regression estimates with a qualitative dependent variable does not meet the assumptions underlying regression. It can lead to serious errors in the standard statistical inference. Logit model is recommended as alternatives to the regression model for qualitative dependent variables. Researchers can employ this model to measure the relationship between independent variables and qualitative dependent variables without assuming that logit model was derived from probabilistic choice theory. Coefficients in logit model are typically estimated by the method of Maximum Likelihood Estimation in contrast to ordinary regression model which estimated by the method of Least Squares Estimation. Goodness of fit in logit model is based on the likelihood ratio statistics and the t-statistics is used for testing the null hypothesis.

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