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Intrinsic Subspace Evaluation of Word Embedding Representations

机译:词嵌入表示的内在子空间评估

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We introduce a new methodology for intrinsic evaluation of word representations. Specifically, we identify four fundamental criteria based on the characteristics of natural language that pose difficulties to NLP systems; and develop tests that directly show whether or not representations contain the subspaces necessary to satisfy these criteria. Current intrinsic evaluations are mostly based on the overall similarity or full-space similarity of words and thus view vector representations as points. We show the limits of these point-based intrinsic evaluations. We apply our evaluation methodology to the comparison of a count vector model and several neural network models and demonstrate important properties of these models.
机译:我们引入了一种新的方法来对词表示法进行内在评估。具体来说,我们根据自然语言的特征确定了四个基本标准,这些标准给NLP系统带来了困难。并开发测试来直接显示表示形式是否包含满足这些条件所必需的子空间。当前的内在评估主要基于单词的整体相似性或全空间相似性,因此将向量表示视为点。我们展示了这些基于点的内在评估的局限性。我们将评估方法应用于计数向量模型和几种神经网络模型的比较,并证明这些模型的重要特性。

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