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Multi-level topic detection algorithm for Netnews Specials

机译:NetNews特价多级主题检测算法

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This paper investigates the topic detection method in Netnews Specials Detection (NSD). We found that when the traditional clustering algorithms are used in NSD, the same topic is usually split into several pieces and the result is not satisfying. So a new algorithm is proposed which uses a multi-level model, better suited for NSD. Firstly, such algorithm elevates the accuracy of single-layer clustering by introducing hot search words, a selective dictionary, and an advanced weight formula. Secondly, the multiple-level model not only avoids the problem of topic over-split but also establishes a structure for Netnews Specials, which lays the foundation for quick viewing, positioning and retrieval. Experimental results show that the algorithm in the real test corpus have high accuracy, doing a better job than the traditional clustering method.
机译:本文研究了NetNews特价检测(NSD)中的主题检测方法。我们发现,当在NSD中使用传统的聚类算法时,相同的主题通常被分成几个部分,结果不符合。因此,提出了一种新的算法,它使用多级模型,更适合NSD。首先,这种算法通过引入热搜索单词,选择性词典和高级重量公式来提高单层聚类的准确性。其次,多级模型不仅避免了拆分主题的问题,而且还为NetNews特价建立了一个结构,为快速观看,定位和检索提供了基础。实验结果表明,实际测试语料库中的算法具有高精度,做得比传统聚类方法更好。

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