从主题模型构建用户配置文件,用于个性化搜索

Morgan Harvey, F. Crestani, Mark James Carman
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引用次数: 97

摘要

个性化是IR领域的一个重要领域,它试图调整排名算法,使返回的结果根据搜索者的兴趣进行调整。在这项工作中,我们使用查询日志来构建个性化排名模型,其中用户配置文件是基于在主题空间上单击文档的表示来构建的。我们使用新的潜在主题模型来确定这些主题,而不是使用人类生成的本体。我们的实验表明,通过巧妙地引入用户配置文件作为排名算法的一部分,而不是通过对现有列表进行重新排名,我们可以提供个性化的文档排名列表,这比非个性化的基线有显著提高。进一步的检查表明,在搜索查询的先验知识有限的情况下,个性化系统的性能特别好。
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Building user profiles from topic models for personalised search
Personalisation is an important area in the field of IR that attempts to adapt ranking algorithms so that the results returned are tuned towards the searcher's interests. In this work we use query logs to build personalised ranking models in which user profiles are constructed based on the representation of clicked documents over a topic space. Instead of employing a human-generated ontology, we use novel latent topic models to determine these topics. Our experiments show that by subtly introducing user profiles as part of the ranking algorithm, rather than by re-ranking an existing list, we can provide personalised ranked lists of documents which improve significantly over a non-personalised baseline. Further examination shows that the performance of the personalised system is particularly good in cases where prior knowledge of the search query is limited.
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