基于SVM的相关反馈文档检索在几种向量空间模型中的性能比较

T. Onoda, H. Murata, S. Yamada
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引用次数: 3

摘要

我们从文档检索中研究以下数据挖掘问题:从文档的大型数据集中,我们需要找到与人类兴趣相关的文档,尽可能少地进行人类测试或检查的迭代。在每次迭代中,相对较小的一批文档被评估为与人类兴趣相关。我们使用基于支持向量机的主动学习技术来评估连续批次,这被称为相关反馈。实验结果表明,本文提出的方法对具有相关反馈的文档检索非常有用。在本文中,我们将几种向量空间模型引入到我们提出的方法中,然后展示了我们的方法在几种向量空间模型中的性能比较结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Performance for SVM Based Relevance Feedback Document Retrieval in Several Vector Space Models
We investigate the following data mining problems from the document retrieval: From a large data set of documents, we need to find documents that relate to human interest as few iterations of human testing or checking as possible. In each iteration a comparatively small batch of documents is evaluated for relating to the human interest. We apply active learning techniques based on Support Vector Machine for evaluating successive batches, which is called relevance feedback. Our proposed approach has been very useful for document retrieval with relevance feedback experimentally. In this paper, we adopt several Vector Space Models into our proposed method, and then show the comparison results of the performance of our method in several Vector Space Models.
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