在积极发展的推荐系统中挖掘和表示推荐

I. Assent
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引用次数: 0

摘要

推荐系统提供了一种自动过滤掉有趣项目的方法,通常是基于过去用户评分的相似性。在之前的工作中,我们提出了一个允许用户主动构建推荐网络的模型。用户表达信任,获得透明度,并建立(匿名)推荐关系。在这项工作中,我们建议挖掘这样的主动系统来生成易于理解的推荐网络表示。用户可以查看这些表示以提供主动反馈。这种方法进一步提高了推荐的质量,特别是当感兴趣的主题随时间变化时。最值得注意的是,它扩展了用户对推荐网络根据他们的兴趣建立的模型的控制程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining and representing recommendations in actively evolving recommender systems
Recommender systems provide an automatic means of filtering out interesting items, usually based on past similarity of user ratings. In previous work, we have suggested a model that allows users to actively build a recommender network. Users express trust, obtain transparency, and grow (anonymous) recommender connections. In this work, we propose mining such active systems to generate easily understandable representations of the recommender network. Users may review these representations to provide active feedback. This approach further enhances the quality of recommendations, especially as topics of interest change over time. Most notably, it extends the amount of control users have over the model that the recommender network builds of their interests.
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