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Assessing Composition in Sentence Vector Representations

机译:评估句子矢量表示的组成

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An important component of achieving language understanding is mastering the composition of sentence meaning, but an immediate challenge to solving this problem is the opacity of sentence vector representations produced by current neural sentence composition models. We present a method to address this challenge, developing tasks that directly target compositional meaning information in sentence vector representations with a high degree of precision and control. To enable the creation of these controlled tasks, we introduce a specialized sentence generation system that produces large, annotated sentence sets meeting specified syntactic, semantic and lexical constraints. We describe the details of the method and generation system, and then present results of experiments applying our method to probe for compositional information in embeddings from a number of existing sentence composition models. We find that the method is able to extract useful information about the differing capacities of these models, and we discuss the implications of our results with respect to these systems' capturing of sentence information. We make available for public use the datasels used for these experiments, as well as the generation system.1
机译:实现语言理解的重要组成部分是掌握句子意义的构成,但解决这个问题的直接挑战是由当前神经句组成模型产生的句子矢量表示的不透明度。我们提出了一种解决这一挑战的方法,开发直接针对具有高精度和控制的句子矢量表示中的组成意义信息的任务。要启用这些受控任务的创建,我们介绍了一个专门的句子生成系统,它产生了大的注释句子集会议,指定的句法,语义和词汇约束。我们描述了方法和生成系统的细节,然后呈现应用我们的方法对来自许多现有句子组合模型的嵌入式信息探讨的实验结果。我们发现该方法能够提取有关这些模型不同容量的有用信息,我们讨论了我们对这些系统捕获句子信息的结果的影响。我们可以提供公众使用用于这些实验的数据,以及生成系统

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