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Visual Perception Similarities to Improve the Quality of User Cold Start Recommendations

机译:视觉感知相似性可提高用户冷启动建议的质量

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Recommender systems are well-know for taking advantage of available personal data to provide us information that best fit our interests. However, even after the explosion of social media on the web, hence personal information, we are still facing new users without any information. This problem is known as user cold start and is one of the most challenging problems in this field. We propose a novel approach, VP-Similarity, based on human visual attention for addressing this problem. Our algorithm computes visual perception's similarities among users to build a visual perception network. Then, this networked information is provided to recommender system to generate recommendations. Experimental results validated that VP-Similarity achieves high-quality ranking results for user cold start recommendation.
机译:推荐系统众所周知,可利用可用的个人数据,为我们提供最适合我们兴趣的信息。但是,即使在网络上的社交媒体爆炸之后,因此个人信息,我们仍然面临没有任何信息的新用户。这个问题被称为用户冷启动,是该字段中最具挑战性问题之一。我们提出了一种新颖的方法,基于人类视觉关注来解决这个问题。我们的算法计算用户之间的视觉感知的相似性,以构建视觉感知网络。然后,将该联网信息提供给推荐系统以生成推荐。实验结果验证了VP-相似性达到了用户冷启动推荐的高质量排名结果。

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