基于维基百科图的新闻分析关键概念提取

Baoyao Zhou, Ping Luo, Yuhong Xiong, W. Liu
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引用次数: 9

摘要

众所周知的维基百科,由于其丰富、高质量和良好的结构,可以作为一个全面的知识库,方便文本内容的分析。在本文中,我们提出了一个基于维基百科图的排名模型WikiRank,它可以用来从文档中提取关键的维基百科概念。这些关键概念可以被视为代表文件主题的最突出的术语。与现有的其他基于图的排序算法不同,该模型中用于排序的概念图不仅利用了文档本地上下文中的共现关系,而且利用了维基百科的预处理超链接结构。我们将提出的WikiRank模型和支持传播排序算法应用于新闻文章分析,特别是企业新闻。这些有前途的应用包括维基百科概念链接和企业概念云生成。
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Wikipedia-Graph Based Key Concept Extraction towards News Analysis
The well-known Wikipedia can serve as a comprehensive knowledge repository to facilitate textual content analysis, due to its abundance, high quality and well-structuring. In this paper, we propose WikiRank - a Wikipedia-graph based ranking model, which can be used to extract key Wikipedia concepts from a document. These key concepts can be regarded as the most salient terms to represent the theme of the document. Different from other existing graph-based ranking algorithms, the concept graph used for ranking in this model is constructed by leveraging not only the co-occurrence relations within the local context of a document but also the preprocessed hyperlink-structure of Wikipedia. We have applied the proposed WikiRank model with the Support Propagation ranking algorithm to analyze the news articles, especially for enterprise news. These promising applications include Wikipedia Concept Linking and Enterprise Concept Cloud Generation.
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