关于社交媒体富内容元数据的生成

SMUC '11 Pub Date : 2011-10-28 DOI:10.1145/2065023.2065042
Giacomo Inches, A. Basso, F. Crestani
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引用次数: 6

摘要

该贡献提出了一个框架,通过处理社交网络数据来生成辅助的丰富电视内容元数据。基于识别权威社交媒体来源的简单标准,我们分析了Twitter短消息与电视节目内容的关系,并设计了一种计算其信息价值的方法。我们已经提取了几十个特征,并在质量和相关性方面对这些社交数据进行了表征。这是整合相关社交媒体信息以增强电视内容描述以及基于社交数据生成推荐的第一步。
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On the generation of rich content metadata from social media
This contribution proposes a framework to generate auxiliary rich TV content metadata by processing social networks data. Based on simple criteria to identify authoritative social media sources, we have analysed Twitter short messages relative to TV program content and devised a method to compute their informative value. We have extracted dozen of features and characterized such social data in terms of quality and relevancy. This is a first step towards integrating relevant social media information to enhance the description of TV content as well as for generating recommendations based on social data.
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