Detects and collinearity in regression model‎ using information theory

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Abstract:

‎In this paper‎, ‎collinearity in regression models is introduced and then the procedures on how to‎ " ‎remove it‎" ‎are studied‎. ‎Moreover preliminary definitions have been given‎. ‎And the end of this paper‎, ‎collinearity in regression model will be recognition and a solution will be introduced for remove it‎.   

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Journal title

volume 21  issue 1

pages  13- 21

publication date 2016-09

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