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An Efficient Solution to Factor Drifting Problem in the pLSA Model

机译:pLSA模型中因素漂移问题的有效解决方案

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摘要

Probabilistic Latent Semantic Analysis (pLSA) is a powerful statistical technique to analyze relation between factors in dyadic data Although various pLSA-based applications, ranging from information retrieval, information filtering, to text-mining and visualization, have been successfully conducted, they can not afford dynamic revising of model when one of the factors changes constantly. In this paper, we take the advantage of decoupling ability ofpLSA thoroughly, and propose a more elegant approach based on maximum likelihood estimation to gain an incremental learning with the drift of a factor. We demonstrate our method in the context of collaborative filtering where single user interests change fast, but the community interests remain almost constant. Experiments against the MovieLens and EachMovie data sets reveal that the proposed method improves the recommending accuracy 10% further beyond the original pLSA at a less computation cost.
机译:概率潜在语义分析(pLSA)是一种强大的统计技术,可分析二进位数据中各因素之间的关系尽管成功地进行了各种基于pLSA的应用程序,包括信息检索,信息过滤,文本挖掘和可视化,但它们无法当因素之一不断变化时,可以动态修改模型。在本文中,我们充分利用了pLSA的解耦能力,并提出了一种基于最大似然估计的更优雅的方法,以随着因子漂移获得增量学习。我们在协作过滤的情况下演示了我们的方法,在协作过滤的情况下,单个用户的兴趣快速变化,但是社区的兴趣几乎保持不变。针对MovieLens和EachMovie数据集进行的实验表明,所提出的方法将推荐精度比原始pLSA提高了10%,而计算成本却更低。

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