Classification with Evidential Associative Rules

نویسندگان

  • Ahmed Samet
  • Eric Lefevre
  • Sadok Ben Yahia
چکیده

Mining database provides valuable information such as frequent patterns and especially associative rules. The associative rules have various applications and assets mainly data classification. The appearance of new and complex data support such as evidential databases has led to redefine new methods to extract pertinent rules. In this paper, we intend to propose a new approach for pertinent rule’s extraction on the basis of confidence measure redefinition. The confidence measure is based on conditional probability basis and sustains previous works. We also propose a classification approach that combines evidential associative rules within information fusion system. The proposed methods are thoroughly experimented on several constructed evidential databases and showed performance improvement.

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تاریخ انتشار 2014