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Taxonomy Based Personalized News Recommendation: Novelty and Diversity*

机译:基于分类的个性化的个性化新闻推荐:新颖性和多样性*

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Recommender systems are designed to help users quickly access large volumes of information according to their profiles. Most previous works in recommender systems have put their emphasis on the accuracy of finding the most similar items according to a user’s profile, while often ignoring other aspects that may affect users’ experiences in practice, e.g., the novelty and diversity issues within a recommendation list. In this paper, we focus on utilizing taxonomic knowledge extracted from an online encyclopedia to boost a content-based personalized news recommender system without much human involvement. Given a recommendation list, we improve a user’s satisfaction by introducing the taxonomy based novelty and diversity metrics to include novel, but potentially related items into the list, and filter out redundant ones. The experimental results show that the coarse grained knowledge resources can help a content-based news recommender system provides accurate as well as user-oriented recommendations.
机译:推荐系统旨在帮助用户根据其配置文件快速访问大量信息。推荐系统中的最先前的工作已经强调根据用户的简档查找最相似的项目的准确性,同时常常忽略可能影响用户在实践中的其他方面的其他方面,例如建议列表中的新颖性和多样性问题。在本文中,我们专注于利用在线百科全书中提取的分类学知识,以提高基于内容的个性化新闻推荐系统,没有人为的参与。鉴于建议书清单,我们通过引入基于分类的新颖性和多样性指标来提高用户的满意度,以包括新颖,但潜在的相关项目,并过滤冗余的项目。实验结果表明,粗粒度知识资源可以帮助基于内容的新闻推荐系统提供准确的和面向用户的建议。

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