Design and analysis of genetic algorithm based Chinese keyword extracting Online publication date: Wed, 31-Jul-2013
by Kai Gao; Hua-Ping Zhang; Yun-Feng Xu; Guo-Jiang Gao; Yang-Jie Li
International Journal of Computer Applications in Technology (IJCAT), Vol. 48, No. 1, 2013
Abstract: Analysing and extracting useful knowledge effectively from the web data is becoming more and more important. As the weighted keywords can be considered as the condensed versions of documents, this paper presents the novel Chinese keyword extraction algorithm based on genetic algorithm, together with paragraph analysing, Chinese segmentation, synonymous and unlisted-term processing. On the basis of the genetic algorithm training and the lead of the extracted terms results given by the experts manually, the genetic algorithm based approach can present an optimised and useful results, especially in some domains. It can be used to train the term weights within the lexicons. The experimental results and the analysis show the feasibility of the approach.
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