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Web multimedia information retrieval using improved Bayesian algorithm 被引量:3

Web multimedia information retrieval using improved Bayesian algorithm
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摘要 The main thrust of this paper is application of a novel data mining approach on the log of user' s feedback to improve web multimedia information retrieval performance. A user space model was constructed based on data mining, and then integrated into the original information space model to improve the accuracy of the new information space model. It can remove clutter and irrelevant text information and help to eliminate mismatch between the page author' s expression and the user' s understanding and expectation. User spacemodel was also utilized to discover the relationship between high-level and low-level features for assigning weight. The authors proposed improved Bayesian algorithm for data mining. Experiment proved that the au-thors' proposed algorithm was efficient. The main thrust of this paper is application of a novel data mining approach on the log of user's feedback to improve web multimedia information retrieval performance. A user space model was constructed based on data mining, and then integrated into the original information space model to improve the accuracy of the new information space model. It can remove clutter and irrelevant text information and help to eliminate mismatch between the page author's expression and the user's understanding and expectation. User space model was also utilized to discover the relationship between high level and low level features for assigning weight. The authors proposed improved Bayesian algorithm for data mining. Experiment proved that the authors' proposed algorithm was efficient.
出处 《Journal of Zhejiang University Science》 EI CSCD 2003年第4期415-420,共6页 浙江大学学报(自然科学英文版)
关键词 Relevant feedback Web log mining Improved Bayesian algorithm User space model 数据挖掘 Web 多媒体 信息检索 贝叶斯算法 用户空间模型
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