学习跨领域的网络资源相关性,提出建议

Julia Hoxha, P. Mika, Roi Blanco
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引用次数: 8

摘要

大多数传统的推荐系统专注于提高单个领域推荐的准确性。然而,用户的首选项可以扩展到多个域,特别是在Web中,用户的浏览首选项通常跨越不同的站点,而不知道其他站点上的相关资源。这项工作通过利用这些资源的语义内容与用户浏览行为模式相结合,解决了从各个领域推荐资源的问题。我们通过基于Web资源的探索语义内容派生连接来克服域之间缺乏重叠的问题。我们提出了一种方法,该方法应用支持向量机来学习资源的相关性,并预测哪些资源是最相关的推荐给用户,假设用户当前正在查看某个页面。在多个网站用户浏览行为的语义丰富日志的真实数据集中,我们研究了结构对生成准确推荐的影响,并进行了实验,证明了我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Relevance of Web Resources across Domains to Make Recommendations
Most traditional recommender systems focus on the objective of improving the accuracy of recommendations in a single domain. However, preferences of users may extend over multiple domains, especially in the Web where users often have browsing preferences that span across different sites, while being unaware of relevant resources on other sites. This work tackles the problem of recommending resources from various domains by exploiting the semantic content of these resources in combination with patterns of user browsing behavior. We overcome the lack of overlaps between domains by deriving connections based on the explored semantic content of Web resources. We present an approach that applies Support Vector Machines for learning the relevance of resources and predicting which ones are the most relevant to recommend to a user, given that the user is currently viewing a certain page. In real-world datasets of semantically-enriched logs of user browsing behavior at multiple Web sites, we study the impact of structure in generating accurate recommendations and conduct experiments that demonstrate the effectiveness of our approach.
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