Analysis on the Adaptive Selection Process of MAS-Based Data Mining Model

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Abstract:

To solve the problem of inefficiency of DM artificial modeling and difficulty of knowledge reuse, this paper studies DM application characteristics, technical characteristics and business data characteristics, probes for the automatic DM modeling method and designs the evaluation system of DM modeling. Based on the DM automatic modeling research and combined MAS, we set up the framework of MAS DM modeling automatic selection, and assess the feasibility of severity selection process by data analysis.

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1672-1675

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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