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Interval Regression Models Using Variable Selection
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 Title & Authors
Interval Regression Models Using Variable Selection
Choi Seung-Hoe;
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This study confirms that the regression model of endpoint of interval outputs is not identical with that of the other endpoint of interval outputs in interval regression models proposed by Tanaka et al. (1987) and constructs interval regression models using the best regression model given by variable selection. Also, this paper suggests a method to minimize the sum of lengths of a symmetric difference among observed and predicted interval outputs in order to estimate interval regression coefficients in the proposed model. Some examples show that the interval regression model proposed in this study is more accuracy than that introduced by Inuiguchi et al. (2001).
Interval Regression;Least Squares Method;Symmetric Difference;
 Cited by
공분산분석 모형에서의 변수선택 정리,윤상후;박정수;

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