VideoTopic:使用主题模型的基于内容的视频推荐

Qiusha Zhu, M. Shyu, Haohong Wang
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引用次数: 42

摘要

大多数视频推荐系统将内容限制在与视频相关的元数据上,这可能会导致糟糕的结果,因为元数据并不总是可用或正确的。同时,视频的视觉信息通常没有被充分挖掘,这对于元数据信息有限的新项目推荐尤为重要。本文利用主题模型,提出了一种新的基于内容的视频推荐框架——视频主题。将推荐过程分解为视频表示和推荐生成。它的目的是通过使用主题模型来表示视频来捕获用户对视频的兴趣,然后通过找到最适合用户兴趣主题分布的视频来生成推荐。在Movie Lens数据集上的实验结果通过评估视频主题的每个组成部分和整个框架来验证视频主题的有效性。
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VideoTopic: Content-Based Video Recommendation Using a Topic Model
Most video recommender systems limit the content to the metadata associated with the videos, which could lead to poor results since metadata is not always available or correct. Meanwhile, the visual information of videos is typically not fully explored, which is especially important for recommending new items with limited metadata information. In this paper, a novel content-based video recommendation framework, called Video Topic, that utilizes a topic model is proposed. It decomposes the recommendation process into video representation and recommendation generation. It aims to capture user interests in videos by using a topic model to represent the videos, and then generates recommendations by finding those videos that most fit to the topic distribution of the user interests. Experimental results on the Movie Lens dataset validate the effectiveness of Video Topic by evaluating each of its components and the whole framework.
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