基于社会网络的参与式媒体内容个性化推荐方法

Aaditeshwar Seth, Jie Zhang
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引用次数: 75

摘要

鉴于博客等参与性媒体内容的快速增长,有必要设计个性化的推荐系统,只向用户推荐有用的内容。我们认为,除了产生有用的推荐之外,来自媒体研究的某些见解,如推荐中的简化和意见多样性,应该构成此类推荐系统的基础,以便可以更密切地理解系统的行为,并在必要时进行修改。我们提出并评估了一个基于贝叶斯用户模型的系统。我们使用博客作者和读者的潜在社会网络来模拟个人用户的偏好特征。我们提出的解决方案的初步结果令人鼓舞,并为未来的研究确定了议程。
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A Social Network Based Approach to Personalized Recommendation of Participatory Media Content
Given the rapid growth of participatory media content such as blogs, there is a need to design personalized recommender systems to recommend only useful content to users. We believe that in addition to producing useful recommendations, certain insights from media research such as simplification and opinion diversity in recommendations should form the foundations of such recommender systems, so that the behavior of the systems can be understood more closely, and modified if necessary. We propose and evaluate such a system based on a Bayesian user-model. We use the underlying social network of blog authors and readers to model the preference features for individual users. The initial results of our proposed solution are encouraging, and set the agenda for future research.
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