Most current web search engines generate search results by analyzing queries and relevance between queries and web-pages. However, as the number of web-pages grows, this approach appears to be less efficient in finding relevant information. In many situations, search engines cannot determine what kind of information users want. We propose a framework of Feedback Search Engine (FSE), which not only analyzes the relevance between queries and web-pages but also uses clickthrough data to evaluate page-to-page relevance and re-generate content relevant search results. The efficient algorithms facilitating the framework are described. Making use of dynamical re-generating search results, FSE can provide its users more accurate and personalized information.
Citation:
Yuexian Hou, Honglei Zhu, Pilian He, "A Framework of Feedback Search Engine Motivated by Content Relevance Mining," wi, pp.749-752, 2006 IEEE/WIC/ACM International Conference on Web Intelligence (WI'06), 2006