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Titlebook: Information Retrieval Technology; Third Asia Informati Hwee Tou Ng,Mun-Kew Leong,Donghong Ji Conference proceedings 2006 Springer-Verlag Be

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Lingbo Kong,Shiwei Tang,Dongqing Yang,Tengjiao Wang,Jun Gaoers, and in Chapter I, “Squire Hawkins’s Tennessee Land, ” he is writing about the experiences of his own parents and their older children. The parents, John Marshall Clemens and Jane Lampton Clemens, lived in East Tennessee from 1824 until the spring of 1835, first at Gainesboro (or Gainesborough),
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Jui-Chi Ho,Ing-Xiang Chen,Cheng-Zen Yangns to a prairie in Illinois.”. Soon after the idea came to him he started writing the story, and Paine published a part of it in ., summarizing the unpublished portions.. An emaciated, foreign-looking man dressed in cap, shirt, and pantaloons of grayish striped cloth was found one January day lying,
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Learning to Separate Text Content and Style for Classificationnent models, one content model and one style model, we propose a method named .that constructs content models and style models through Expectation Maximization and performs classification of the unknown content classes transductively. Our experiments on real-world datasets show the proposed method to be effective for ..
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Natural Document Clustering by Clique Percolation in Random Graphsh we unleash the commonly practiced constraints in order to discover natural overlapping clusters. Experiments show that CPC can outperform some typical algorithms on benchmark data sets, and shed light on natural document clustering.
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Text Clustering with Limited User Feedback Under Local Metric Learningurn enhance the clustering performance. We have conducted extensive experiments on real-world news documents. The results demonstrate that user feedback information coupled with local metric learning can dramatically improve the clustering performance.
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Improving Re-ranking of Search Results Using Collaborative Filteringin words in the user profile. In this paper, we present an effective re-ranking strategy that compensates for the sparsity in a user’s profile, by applying collaborative filtering algorithms. Our evaluation results show an improvement in precision over approaches that use only a user’s profile.
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