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Addressing cold start problem in recommender systems using association rules and clustering technique

机译:使用关联规则和聚类技术解决推荐系统中的冷启动问题

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摘要

Number of people who uses internet and websites for various purposes is increasing at an astonishing rate. More and more people rely on online sites for purchasing rented movies, songs, apparels, books etc. The competition between numbers of sites forced the web site owners to provide personalized services to their customers. So the recommender systems came into existence. Recommender systems are active information filtering systems and that attempt to present to the user, information items in which the user is interested in. The websites implement recommender systems using collaborative filtering, content based or hybrid approaches. The recommender systems also suffer from issues like cold start, sparsity and over specialization. Cold start problem is that the recommenders cannot draw inferences for users or items for which it does not have sufficient information. This paper attempts to propose a solution to the cold start problem by combining association rules and clustering technique.
机译:以各种目的使用互联网和网站的人数正以惊人的速度增长。越来越多的人依赖在线站点来购买租借的电影,歌曲,服装,书籍等。站点之间的竞争迫使站点所有者向其客户提供个性化服务。因此,推荐系统应运而生。推荐系统是主动信息过滤系统,它尝试向用户呈现用户感兴趣的信息。网站使用协作过滤,基于内容或混合的方法来实现推荐系统。推荐系统还存在诸如冷启动,稀疏性和过度专业化的问题。冷启动问题是,推荐者无法为其没有足够信息的用户或项目得出推论。本文试图通过结合关联规则和聚类技术提出一种冷启动问题的解决方案。

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