利用张量分解探索社交和网络图像搜索结果

Liuqing Yang, E. Papalexakis
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引用次数: 0

摘要

社会上受欢迎的图片与网络搜索引擎索引的权威图片有何不同?根据经验,Twitter等社交网站上的图片往往看起来更多样化,最终更“个性化”,这与网络图片搜索返回的图片相反,其中一些是所谓的“库存”图片。是否有图像特征,我们可以自动学习,区分这两种类型的图像搜索结果,或者两者有共同的特征?本文概述了实现这一结果的愿景。我们提出了一种基于张量的方法来学习社交和网络图像搜索结果的关键特征,并提供了一个全面的框架来分析和理解两种类型内容之间的异同。我们在一个小规模的研究中展示了我们的初步结果,并总结了这一令人兴奋和新颖的应用的未来研究方向。
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Exploration of Social and Web Image Search Results Using Tensor Decomposition
How do socially popular images differ from authoritative images indexed by web search engines? Empirically, social images on e.g., Twitter often tend to look more diverse and ultimately more "personal", contrary to images that are returned by web image search, some of which are so-called "stock" images. Are there image features, that we can automatically learn, which differentiate the two types of image search results, or features that the two have in common? This paper outlines the vision towards achieving this result. We propose a tensor-based approach that learns key features of social and web image search results, and provides a comprehensive framework for analyzing and understanding the similarities and differences between the two types types of content. We demonstrate our preliminary results on a small-scale study, and conclude with future research directions for this exciting and novel application.
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