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引用次数: 953

摘要

推荐系统通过为用户提供更主动和个性化的信息服务,已被证明是对信息过载问题的重要回应。协作过滤技术已被证明是许多此类推荐系统的重要组成部分,因为它们通过利用相似用户社区的偏好来促进高质量推荐的生成。在本文中,我们认为传统上对用户相似性的强调可能被夸大了。我们认为,其他因素在指导推荐中起着重要作用。具体来说,我们建议用户的可信度必须是一个重要的考虑因素。我们提出了两种信任的计算模型,并展示了如何以各种方式将它们轻松地纳入标准协同过滤框架。我们还展示了这些信任模型如何在推荐过程中提高预测准确性。
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Trust in recommender systems
Recommender systems have proven to be an important response to the information overload problem, by providing users with more proactive and personalized information services. And collaborative filtering techniques have proven to be an vital component of many such recommender systems as they facilitate the generation of high-quality recom-mendations by leveraging the preferences of communities of similar users. In this paper we suggest that the traditional emphasis on user similarity may be overstated. We argue that additional factors have an important role to play in guiding recommendation. Specifically we propose that the trustworthiness of users must be an important consideration. We present two computational models of trust and show how they can be readily incorporated into standard collaborative filtering frameworks in a variety of ways. We also show how these trust models can lead to improved predictive accuracy during recommendation.
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