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Collaborative Recommender Systems Based on User-Generated Reviews: A Concise Survey

机译:基于用户生成的评论的协作推荐系统:简明的调查

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Recommender systems are powerful tools that help users to deal with information overload problem. Collaborative Filtering (CF) approach has been widely used to build recommender systems over the past decades. However, the performance of CF is limited by sparsity and cold start problems, which are very common in real world situations. In recent years, many review-based approaches have been developed to integrate textual reviews into recommendation process, since they provide much more information about item/user profiles than ratings. The use of text analysis and opinion mining methods helps extracting such information. In this paper, we first introduce standard CF techniques and their main challenges. Then, we present different kind of information that can be extracted from user reviews. After that, we describe recent works that exploit review elements to improve the CF-based recommendations. Finally, we discuss their practical implications.
机译:推荐系统是功能强大的工具,帮助用户处理信息过载问题。协作过滤(CF)方法已广泛用于在过去几十年中建立推荐系统。然而,CF的性能受到稀疏性和冷启动问题的限制,这在现实世界中非常常见。近年来,已经制定了许多基于审查的方法来将文本审查集成到推荐过程中,因为它们提供了关于项目/用户配置文件的更多信息,而不是评级。文本分析和意见采矿方法的使用有助于提取此类信息。在本文中,我们首先介绍标准的CF技术及其主要挑战。然后,我们呈现可以从用户评论中提取的不同类型的信息。之后,我们描述了最近的作品,用于利用审查要素来提高基于CF的建议。最后,我们讨论了他们的实际意义。

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