研究生: |
張崴 Wei, Chang |
---|---|
論文名稱: |
Dynamic Generation of a Facet Hierarchy for Web Search Result Dynamic Generation of a Facet Hierarchy for Web Search Result |
指導教授: |
柯佳伶
Koh, Jia-Ling |
學位類別: |
碩士 Master |
系所名稱: |
資訊工程學系 Department of Computer Science and Information Engineering |
論文出版年: | 2014 |
畢業學年度: | 102 |
語文別: | 英文 |
論文頁數: | 68 |
中文關鍵詞: | facet hierarchy 、browsing cost 、semantic 、entropy 、user behavior 、encoding |
英文關鍵詞: | facet hierarchy, browsing cost, semantic, entropy, user behavior, encoding |
論文種類: | 學術論文 |
相關次數: | 點閱:141 下載:3 |
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In this thesis, we propose a method to construct a facet hierarchy to organize the web search results dynamically. The proposed method is designed by two steps. First, we extract candidate facet terms according to a knowledge base. Second, we construct a facet hierarchy according to the candidate facet terms. We design an objective function to simulate the browsing cost when a user accesses the search results by a facet hierarchy. Accordingly, two algorithms are proposed to construct a facet hierarchy to optimize the objective function. The first one is a bottom-up approaches which select the best facet terms from the lowest level iteratively. The second one is a top-down approach, which uses an entropy function to estimate the expected browsing cost to select facet terms from the top level. Both algorithms are greedy algorithms which find optimal solutions. We evaluate the proposed methods on different distributions of access probability. The experiment results show that the facet hierarchies construct by the proposed methods achieves better performance on saving 30 to 50 percent of expected browsing cost than the one of the existing method.
In this thesis, we propose a method to construct a facet hierarchy to organize the web search results dynamically. The proposed method is designed by two steps. First, we extract candidate facet terms according to a knowledge base. Second, we construct a facet hierarchy according to the candidate facet terms. We design an objective function to simulate the browsing cost when a user accesses the search results by a facet hierarchy. Accordingly, two algorithms are proposed to construct a facet hierarchy to optimize the objective function. The first one is a bottom-up approaches which select the best facet terms from the lowest level iteratively. The second one is a top-down approach, which uses an entropy function to estimate the expected browsing cost to select facet terms from the top level. Both algorithms are greedy algorithms which find optimal solutions. We evaluate the proposed methods on different distributions of access probability. The experiment results show that the facet hierarchies construct by the proposed methods achieves better performance on saving 30 to 50 percent of expected browsing cost than the one of the existing method.
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