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Capturing User Interests by Both Exploitation and Exploration

机译:通过剥削和探索捕获用户兴趣

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Personalization is one of the important research issues in the areas of information retrieval and Web search. Providing personalized services that are tailored toward the specific preferences and interests of a given user can enhance her experience and satisfaction. However, to effectively capture user interests is a challenging research problem. Some challenges include how to quickly capture user interests in an unobtrusive way, how to provide diversified recommendations, and how to track the drifts of user interests in a timely fashion. In this paper, we propose a model for learning user interests and an algorithm that actively captures user interests through an interactive recommendation process. The key advantage of our algorithm is that it takes into account both exploitation (recommending items that belong to users' core interest) and exploration (discovering potential interests of users). Extensive experiments using synthetic data and a user study show that our algorithm can quickly capture diversified user interests in an unobtrusive way, even when the user interests may drift along time.
机译:个性化是信息检索和网络搜索领域的重要研究问题之一。提供针对特定用户的特定偏好和利益量身定制的个性化服务,可以提高她的经验和满意度。但是,为了有效地捕捉用户兴趣是一个具有挑战性的研究问题。一些挑战包括如何以不引人注目的方式快速捕捉用户兴趣,如何提供多元化的建议,以及如何及时地跟踪用户兴趣的偏移。在本文中,我们提出了一种用于学习用户兴趣的模型和通过交互推荐过程主动捕获用户兴趣的算法。我们的算法的关键优势在于它考虑了剥削(推荐属于用户核心兴趣的项目)和探索(发现用户的潜在利益)。使用合成数据和用户学习的广泛实验表明,即使当用户兴趣可能沿着时间播放,我们的算法也可以以不引人注目的方式迅速捕获多样化的用户兴趣。

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