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Personalized digital TV content recommendation with integration of user behavior profiling and multimodal content rating

机译:个性化的数字电视内容推荐,结合了用户行为分析和多模式内容分级

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摘要

This paper presents the novel development of an embedded system that aims at digital TV content recommendation based on descriptive metadata collected from versatile sources. The described system comprises a user profiling subsystem identifying user preferences and a user agent subsystem performing content rating. TV content items are ranked using a combined multimodal approach integrating classification-based and keyword-based similarity predictions so that a user is presented with a limited subset of relevant content. Observable user behaviors are discussed as instrumental in user profiling and a formula is provided for implicitly estimating the degree of user appreciation of content. A new relation-based similarity measure is suggested to improve categorized content rating precision. Experimental results show that our system can recommend desired content to users with significant amount of accuracy.
机译:本文介绍了一种嵌入式系统的新颖发展,该系统旨在基于从通用来源收集的描述性元数据来推荐数字电视内容。所描述的系统包括标识用户偏好的用户配置文件子系统和执行内容分级的用户代理子系统。使用结合基于分类和基于关键字的相似性预测的组合多模式方法对电视内容项进行排名,以便向用户显示相关内容的有限子集。讨论了可观察到的用户行为,这对用户配置文件很有帮助,并提供了一个公式,用于隐式估计用户对内容的欣赏程度。提出了一种新的基于关系的相似性度量,以提高分类内容的评分精度。实验结果表明,我们的系统可以以很高的准确性向用户推荐所需的内容。

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