通过向量空间模型和轮廓本体增强个性化程度

Safiya Al Sharji, M. Beer, Elizabeth Uruchurtu
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引用次数: 1

摘要

Web浏览器需要将用户的查询与可用的信息数据库相匹配。然而,将用户的需求与他们的兴趣和偏好相匹配,以提供个性化的搜索结果,这需要信息属性的复杂交互,因此,这仍然是研究人员面临的主要挑战之一。信息检索(IR)技术,特别是使用向量空间模型(VSM)和轮廓本体(PO)杂交,证明了个性化搜索结果的改进。我们通过结合一个新的指标来提高个性化程度,即每个搜索会话的停留时间,以优化学习后的重新排名模型。为了对Web交互进行纵向自然研究,我们收集了搜索日志,作为我们个性化搜索引擎排名算法的刺激物。我们使用贴现累积增益(DCG)和f测量的重新排序机制的性能进行了测试。本研究设计的方案与Google搜索引擎进行了比较。结果表明,在个性化搜索引擎的前10个排名中,相关度提高了14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing the degree of personalization through Vector Space Model and Profile Ontology
Web browsers need to match the users' queries to the information available data bases. However, matching the users' needs with their interests and preferences to provide personalized search results in a ranked order of relevance entails a complex interaction of information attributes and as such, it remains one of the main challenges researchers face. Information Retrieval (IR) techniques focusing specifically on using Vector Space Model (VSM) with Profile Ontology (PO) hybridizationproved an improvement on personalized search results. We improve the degree of personalization by incorporating a new metric, the Dwell Time of each search session to optimize a learned re-ranked model. For a longitudinal naturalistic study of Web interactions, search logs were gathered as stimuli for the ranking algorithms of our personalized search engine. The performance of our re-ranking mechanism using Discounted Cumulative Gain (DCG) and F-measurewas tested. The scheme devised in this study was compared with the Google search engine. It was shown that, at the 10 top ranks of our personalized search engine, 14% improvement in the relevance is achieved.
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