Research on the Evaluation Models of Network Video Users

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Abstract:

Evaluation model is widely used in the individuals and enterprises. Because of the rapid development of the Internet video transmission, the request of the credibility of the video portal is much higher. So the research of the Internet video portal evaluation model becomes a significant issue. This paper realized the evaluation and classification of the user group based on the data mining evaluation classification technology and the principle of fuzzy clustering, and through the construction of the mathematical model and behavioral analysis of Internet video users. This paper also evaluates the effectiveness of the model through the existing evaluation model algorithm and the analysis of the samples.

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2620-2624

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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