Journal of Software, Vol 4, No 5 (2009), 436-443, Jul 2009
doi:10.4304/jsw.4.5.436-443

Semantic Focused Crawling for Retrieving E-Commerce Information

Wei Huang, Liyi Zhang, Jidong Zhang, Mingzhu Zhu

Abstract


Focused crawling is proposed to selectively seek out pages that are relevant to a predefined set of topics without downloading all pages of the Web. With the rapid growth of the E-commerce, how to discovery the specific information such as about buyer, seller and products etc. adapting for the online business user becomes a focused issue to the information search engine. We present a novel semantic approach for building an intelligent focused crawler which deals with evaluating the page’s content relevance to the E-commerce topic by the domain ontology and the hyperlinks connection to the commercial web pages by link analysis. In the process of crawling, the domain ontology can evolve automatically by machine learning based on the statistics and rules. Experiments have been performed, and the results show that our approach is more effective than the other traditional crawling algorithms, and prevents the topic-drift with higher harvest rate.



Keywords


Focused crawling, Information retrieval, E-commerce, Semantic, Machine learning

References



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Journal of Software (JSW, ISSN 1796-217X)

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