Concept Extraction based on Association Linked Network

Xiao Wei, Xiangfeng Luo
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引用次数: 10

Abstract

Text keywords at different semantic levels have different semantic representation abilities. Although words have been organized by semantic dictionaries (e.g. WordNet) with exact semantics, the dictionaries can not be constructed automatically by machine and there are still many words which are not included in the dictionaries. This paper proposes a novel method to automatically extract keywords of higher semantic level which named concept. According to the Association Linked Network (ALN) of webpages, the ALN of keywords (kALN) is constructed first which holds the keywords of a domain and the relations among these keywords. By analyzing graph characteristics of kALN, keywords are grouped into communities. Then drawing on Entropy and Mutual Information, concepts are extracted from each kALN community. Experimental results show that the proposed method of concept extraction is acceptable in accuracy and complexity.
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基于关联链接网络的概念抽取
不同语义层次的文本关键词具有不同的语义表示能力。虽然词汇已经被具有精确语义的语义词典(如WordNet)组织起来,但词典并不能由机器自动构建,仍然有许多词汇没有被包括在词典中。提出了一种自动提取高语义层次的命名概念关键词的新方法。根据网页的关联链接网络(Association Linked Network, ALN),首先构建关键词的关联链接网络(kALN),它包含一个域的关键词以及这些关键词之间的关系。通过分析kALN的图特征,将关键词分组成社区。然后利用熵和互信息,从每个kALN社区中提取概念。实验结果表明,所提出的概念提取方法在精度和复杂度上都是可以接受的。
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