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多特征融合文本聚类的新闻话题发现模型
引用本文:车蕾,杨小平.多特征融合文本聚类的新闻话题发现模型[J].国防科技大学学报,2017,39(3):85-90.
作者姓名:车蕾  杨小平
作者单位:中国人民大学 信息学院,中国人民大学 信息学院
基金项目:国家自然科学基金项目(面上项目,重点项目,重大项目)
摘    要:融合新闻命名实体、新闻标题、新闻重要段落、文本语义等多特征影响,提出基于多特征融合文本聚类的新闻话题发现模型。模型根据新闻的多特征影响,提出一种多特征融合文本聚类方法。该方法针对新闻标题、新闻重要段落等特征因素构建向量空间模型及相似度算法,基于潜在狄利克雷分配模型构建主题空间模型及相似度算法,针对命名实体构建命名实体模型及相似度算法,并将三种相似度算法形成最优融合。基于多特征融合文本聚类方法,模型改进了用于新闻话题发现的Single-Pass算法。实验是在真实新闻数据集上开展的,实验结果表明:该模型有效地提高了新闻话题发现的准确率、召回率和综合评价指标,并具有一定的自适应能力。

关 键 词:新闻话题  多特征融合  潜在狄利克雷分配  向量空间模型  主题空间模型
收稿时间:2015/11/10 0:00:00
修稿时间:2016/8/16 0:00:00

News topic discovery model of multi feature fusion text clustering
CHE Lei and YANG Xiaoping.News topic discovery model of multi feature fusion text clustering[J].Journal of National University of Defense Technology,2017,39(3):85-90.
Authors:CHE Lei and YANG Xiaoping
Abstract:In order to improve the accuracy of Web news topic discovery, the news topic discovery model based on multi feature fusion text clustering is proposed that fuses multi features of news, such as named entities, news headlines, important paragraphs, text semantics and so on. Based on multi feature influence of news, a multi feature fusion text clustering method is put forward in this model. In this way, vector space model and similarity algorithm based on feature words, news headlines, important paragraphs are constructed, subject space model and similarity algorithm based on LDA is constructed, named entity model and similarity algorithm based on named entities is constructed, and those three similarity algorithms are fused optimally. Based on multi feature fusion text clustering method, the Single-Pass algorithm used in the news topic discovery is improved. Experiments are carried out on the real news data set, and the experimental results show that the model can improve the accuracy rate, recall rate and comprehensive evaluation index of the news topic discovery, and have some ability of self-adaption.
Keywords:News Topic  Multi Feature Fusion  Latent Dirichlet Allocation  Vector Space Model  Subject Space Model
本文献已被 CNKI 等数据库收录!
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