Research Article Open Access

Towards an Effective Personalized Information Filter for P2P Based Focused Web Crawling

Fu Xiang-hua and Feng Bo-qin

Abstract

Information access is one of the hottest topics of information society, which has become even more important since the advent of the Web, but nowadays the general Web search engines still have no ability to find correct and timely information for individuals. In this paper, we propose a Peer-to-Peer (P2P) based decentralized focused Web crawling system called PeerBridge to provide user-centered, content-sensitive and personalized information search service from Web. The PeerBridge is built on the foundation of our previous work about WebBridge, which is a focused crawling system to crawl Web according several specified topic. The most important function of PeerBridge is to identify interesting information. So we furthermore present an efficient personalized information filter in detail, which combines several component neural networks to accomplish the filtering task. Performance evaluation in the experiments showed that PeerBridge is effective to crawl relevant information for specific topics and the information filter is efficient, which precision is better than that of support vector machine, naïve bayesian and individual neural network.

Journal of Computer Science
Volume 2 No. 1, 2006, 97-103

DOI: https://doi.org/10.3844/jcssp.2006.97.103

Submitted On: 14 May 2005 Published On: 31 January 2006

How to Cite: Xiang-hua, F. & Bo-qin, F. (2006). Towards an Effective Personalized Information Filter for P2P Based Focused Web Crawling . Journal of Computer Science, 2(1), 97-103. https://doi.org/10.3844/jcssp.2006.97.103

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Keywords

  • PeerBridge
  • web crawling system
  • P2P based
  • artificial neural network