Study on the Key Technology of Personalized Recommendation of Case-Based Reasoning

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The key technology of personalized recommendation based on CBR involves the representation and the organization of case, construction and maintenance of multiple cases library, judging of the similarity of case and methods of retrieval, and the combination of personalized recommendation technology. The four interrelated aspects are the important links to design the personalized recommendation system. This paper studies the key technology of the personalized recommendation system based on CBR.

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2271-2275

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August 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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