INFORMATION PROCESSING USING INTELLIGENT ALGORITHMSBY SOLVING WCCI 2010 TASKS


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The article focused on the urgent problem of selection of strategies to deal with ill-structured problems involving
the processing of both quantitative and qualitative data, high dimensionality and omissions in the data.
This article provides a detailed analysis of the prediction models for data processing. Experiments confirm the
effectiveness of intelligent algorithms, developed by the authors.

Bibliografia

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