Dynamic Query Modeling for Related Content Finding

Daan Odijk, E. Meij, I. Sijaranamual, M. de Rijke
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引用次数: 17

Abstract

While watching television, people increasingly consume additional content related to what they are watching. We consider the task of finding video content related to a live television broadcast for which we leverage the textual stream of subtitles associated with the broadcast. We model this task as a Markov decision process and propose a method that uses reinforcement learning to directly optimize the retrieval effectiveness of queries generated from the stream of subtitles. Our dynamic query modeling approach significantly outperforms state-of-the-art baselines for stationary query modeling and for text-based retrieval in a television setting. In particular we find that carefully weighting terms and decaying these weights based on recency significantly improves effectiveness. Moreover, our method is highly efficient and can be used in a live television setting, i.e., in near real time.
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用于相关内容查找的动态查询建模
在看电视时,人们越来越多地消费与他们所看的内容相关的额外内容。我们考虑寻找与电视直播相关的视频内容的任务,为此我们利用与广播相关的字幕文本流。我们将此任务建模为马尔可夫决策过程,并提出了一种使用强化学习直接优化从字幕流生成的查询的检索效率的方法。我们的动态查询建模方法在静态查询建模和电视设置中基于文本的检索方面明显优于最先进的基线。特别地,我们发现仔细地对项进行加权,并根据近因对这些权重进行衰减,显著地提高了有效性。此外,我们的方法效率很高,可以在电视直播环境中使用,即接近实时。
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