Interval linear regression

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Abstract:

‎In this paper‎, ‎we have studied the analysis an interval linear regression model for fuzzy data‎. ‎In section one‎, ‎we have introduced the concepts required in this thesis and then we illustrated linear regression fuzzy sets and some primary definitions‎. ‎In section two‎, ‎we have introduced various methods of interval linear regression analysis‎. ‎In section three‎, ‎we have implemented numerical examples of the chapter two‎. ‎Finally‎, ‎we have improved some methods of interval linear regression analysis that considered in section four‎. ‎We will showed performance of three methods by several examples‎. ‎All computations of examples are done by alabama package by R software‎.

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Journal title

volume 21  issue 1

pages  65- 80

publication date 2016-09

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