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Information-Theory Interpretation of the Skip-Gram Negative-Sampling Objective Function

机译:Skip-Gram负采样目标函数的信息理论解释

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In this paper, we define a measure of dependency between two random variables, based on the Jensen-Shannon (JS) divergence between their joint distribution and the product of their marginal distributions. Then, we show that word2vec's skip-gram with negative sampling embedding algorithm finds the optimal low-dimensional approximation of this JS dependency measure between the words and their contexts. The gap between the optimal score and the low-dimensional approximation is demonstrated on a standard text corpus.
机译:在本文中,我们基于两个随机变量的联合分布与其边际分布的乘积之间的詹森-香农(JS)散度,定义了两个随机变量之间的相关性度量。然后,我们证明了带有负采样嵌入算法的word2vec的skip-gram在单词及其上下文之间找到了该JS依赖度量的最佳低维近似。最佳分数和低维近似之间的差距在标准文本语料库上得到了证明。

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