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Context Embedding Networks

机译:上下文嵌入网络

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摘要

Low dimensional embeddings that capture the main variations of interest in collections of data are important for many applications. One way to construct these embeddings is to acquire estimates of similarity from the crowd. Similarity is a multi-dimensional concept that varies from individual to individual. However, existing models for learning crowd embeddings typically make simplifying assumptions such as all individuals estimate similarity using the same criteria, the list of criteria is known in advance, or that the crowd workers are not influenced by the data that they see. To overcome these limitations we introduce Context Embedding Networks (CENs). In addition to learning interpretable embeddings from images, CENs also model worker biases for different attributes along with the visual context i.e. the attributes highlighted by a set of images. Experiments on three noisy crowd annotated datasets show that modeling both worker bias and visual context results in more interpretable embeddings compared to existing approaches.
机译:低维的嵌入捕获感兴趣的数据集合的主要变化是重要的许多应用。构建这些嵌入物的一种方法是从人群获得相似的估计。相似度是一个多维的概念,变化从个人到个人。学习人群的嵌入但是,现有的模型通常做出简化假设,如所有个人估计相似度使用相同的标准,标准的列表是预先知道的,或人群的工人不被他们看到的数据的影响。为了克服这些限制,我们引入上下文嵌入网络(CENS)。除了从学习图像的嵌入可解释,经社也模范偏差为不同的属性与所述可视上下文即由一组图像的突出显示的属性。三个喧闹的人群标注的数据集实验表明,更多的解释的嵌入造型既工人的偏见和视觉效果方面比现有的方法。

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