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    Abstract:

    Traditional information retrieval technologies satisfy users’ need to a great extent. However, for their all-purpose characteristics, they can not satisfy any query from the different background, with the different intention and at the different time. A personalized search algorithm by using content-based filtering is presented in this paper. The user model is represented as the probability distribution over the domain classification model. A method of computing similarity and a method of revising user model are provided. Compared with the vector space model, the probability model is more effective on describing a user’s interests.

    Reference
    [1]Zeng C, Xing CX, Zhou LZ. A survey of personalization technology. Journal of Software, 2002,13(10):1952~1961 (in Chinese with English abstract).
    [2]Pretschner A. Ontology based personalized search [MS. Thesis]. Lawrence, KS: University of Kansas, 1999.
    [3]Dumais ST, Platt J, Heckerman D, Sahami M. Inductive learning algorithms and representations for text categorization. In: French J, Gardarin G, eds. Proceedings of the International Conference on Information and Knowledge Management. New York: ACM Press, 1998. 148~155.
    [4]Witten IH, Paynter GW, Frank E, Gutwin C, Nevill-Manning CG. KEA: practical automatic keyphrase extraction. In: Fox EA, ed. Proceedings of the 4th ACM Conference on Digital Library. New York: ACM Press, 1999. 254~255.
    [5]Turney PD. Learning algorithms for keyphrase extraction. Information Retrieval, 2000,2(4):303~336.
    [6]Joachims T. A probabilistic analysis of the rocchio algorithm with TFIDF for text categorization. In: Fisher DH, ed. Proceedings of the 14th InternationalConference on Machine Learning. San Francisco: Morgan Kaufmann Publishers, 1997. 143~151.
    [7]Bollacker KD, Lawrence S, Giles CL. Discovering relevant scientific literature on the Web. IEEE Intelligent Systems, 2000,15(2):42~47.
    [8]Hofmann T. Probabilistic latent semantic analysis. In: Laskey KB, Prade H,eds. Proceedings of the 15th Conference on Uncertainty in Artificial Intelligence. San Francisco: Morgan Kaufmann Publishers, 1999. 289~296.
    [9]曾春,邢春晓,周立柱.个性化服务技术综述.软件学报,2002,13(10):1952~1961.
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曾春,邢春晓,周立柱.基于内容过滤的个性化搜索算法.软件学报,2003,14(5):999-1004

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History
  • Received:October 21,2002
  • Revised:December 04,2002
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