Search Results Clustering Based on a Linear Weighting Method of Similarity

Dequan Zheng, Haibo Liu, T. Zhao
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引用次数: 1

Abstract

The cluster of search results can facilitate users in finding the needed from massive information. But the effect of the traditional text clustering has been verified not good enough. Lingo Algorithm, which adopts LSI for clustering, generates candidate labels first, then distributes the documents, and forms the clusters finally. On the basis of Lingo Algorithm, this paper presents a linear weighted method of Single-Pass improvement, which integrates HowNet semantic similarity and cosine similarity, fuses and rediscovers clusters, and extracting the cluster labels. The experiments have showed that our method it achieves a good results in clusters in the form of purity and F-measure.
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基于相似度线性加权法的搜索结果聚类
搜索结果的聚类可以方便用户从海量信息中找到需要的信息。但是传统的文本聚类方法的聚类效果并不理想。Lingo算法采用大规模集成电路(LSI)进行聚类,首先生成候选标签,然后分发文档,最后形成聚类。在Lingo算法的基础上,提出了一种单次改进的线性加权方法,将HowNet语义相似度和余弦相似度相结合,对聚类进行融合和再发现,提取聚类标签。实验表明,该方法在聚类的纯度和f值方面都取得了较好的效果。
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