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A Comparison of Unsupervised Methods to Associate Colors with Words

机译:无监督方法将颜色与单词联系起来的比较

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摘要

Colors have a very important role on our perception of the world. We often associate colors with various concepts at different levels of consciousnes and these associations can be relevant to many fields such as education and advertisement. However, to the best of our knowledge, there are no systematic approaches to aid the automatic development of resources encoding this kind of knowledge. In this paper, we propose three computational methods based on image analysis, language models, and latent semantic analysis to automatically associate colors to words. We compare these methods against a gold standard obtained via crowd-sourcing. The results show that each method is effective in capturing different aspects of word-color associations.
机译:颜色对我们对世界的看法具有非常重要的作用。我们经常将颜色与不同级别的概念相关联,这些关联可以与教育和广告等许多领域相关。然而,据我们所知,没有系统的方法可以帮助编码这种知识的资源的自动发展。在本文中,我们提出了三种基于图像分析,语言模型和潜在语义分析的计算方法,以自动将颜色与单词相关联。我们将这些方法与通过人群采购获得的黄金标准进行比较。结果表明,每个方法都是有效地捕获字色关联的不同方面。

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