主题跟踪关键技术研究

Shengdong Li, Xueqiang Lv, Hongwei Wang, Shuicai Shi
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引用次数: 1

摘要

文本分类是主题跟踪的关键技术,而向量空间模型(VSM)是最简单有效的主题表示模型之一。在文本分类的最近邻算法(KNN)和文本分类的支持向量机算法(SVM)的基础上,研究了它们对主题跟踪的影响。得到了它们对主题跟踪影响的变化规律,并对它们在主题跟踪中的最优值进行了相加。最后,TDT评价方法证明基于SVM的最优主题跟踪性能比KNN提高了35.134%。
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Study on Key Technology for Topic Tracking
Text classification is the key technology for topic tracking, and vector space model (VSM) is one of the most simple and effective model for topics representation. On the basis of Knearest neighbor (KNN) algorithm for text classification and support vector machines (SVM) algorithm for text classification, we have studied how they affect topic tracking. Then we get the variation law that they affect topic tracking, and add up their optimal values in topic tracking. Finally, TDT evaluation method proves that optimal topic tracking performance based on SVM increases by 35.134% more than KNN.
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