An Empirical study to understand the Compositional Prowess of Neural Dialog Models

Vinayshekhar Bannihatti Kumar, Vaibhav Kumar, Mukul Bhutani, Alexander I. Rudnicky
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引用次数: 1

Abstract

In this work, we examine the problems associated with neural dialog models under the common theme of compositionality. Specifically, we investigate three manifestations of compositionality: (1) Productivity, (2) Substitutivity, and (3) Systematicity. These manifestations shed light on the generalization, syntactic robustness, and semantic capabilities of neural dialog models. We design probing experiments by perturbing the training data to study the above phenomenon. We make informative observations based on automated metrics and hope that this work increases research interest in understanding the capacity of these models.
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理解神经对话模型合成能力的实证研究
在这项工作中,我们研究了在组合性的共同主题下与神经对话模型相关的问题。具体而言,我们研究了组合性的三种表现形式:(1)生产率,(2)替代性和(3)系统性。这些表现揭示了神经对话模型的泛化、句法鲁棒性和语义能力。我们通过扰动训练数据设计探测实验来研究上述现象。我们在自动化度量的基础上进行信息观察,并希望这项工作能增加对理解这些模型能力的研究兴趣。
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