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Application of Transductive Inference SVM Based Relevant Documents Acquiring in Query-Biased Summarization

机译:基于转导的相关文件在查询偏见的综述中的转导推理SVM应用

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摘要

There is an important issue that text summarization has to embody the personal information need and provide the indicative message for user. In this paper, a method of acquiring relevant documents based on user-feedback information and transductive inference SVM machine learning technology is presented. This method can well avoid subjectivity of deciding relevant documents empirically. To validate the effect, we extract important sentences as the final summary using a feature-fusion sentence selection strategy. The result shows that the method can improve the performance of the query-biased summarization    effectively.
机译:有一个重要的问题,文本摘要必须体现个人信息,并为用户提供指示性消息。本文提出了一种基于用户反馈信息和转换推理SVM机器学习技术获取相关文件的方法。这种方法可以很好地避免经验决定相关文件的主观性。要验证效果,我们将重要句子作为使用特征融合句选择策略作为最终概要。结果表明,该方法可以有效地提高查询偏置概要的性能。

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