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Unsupervised Dialog Structure Learning

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arxiv 1904.03736 v2 pith:SLWNDDMR submitted 2019-04-07 cs.CL cs.AI

Unsupervised Dialog Structure Learning

classification cs.CL cs.AI
keywords dialogmodelstructuredialogslearningdesignlearnedmodels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Learning a shared dialog structure from a set of task-oriented dialogs is an important challenge in computational linguistics. The learned dialog structure can shed light on how to analyze human dialogs, and more importantly contribute to the design and evaluation of dialog systems. We propose to extract dialog structures using a modified VRNN model with discrete latent vectors. Different from existing HMM-based models, our model is based on variational-autoencoder (VAE). Such model is able to capture more dynamics in dialogs beyond the surface forms of the language. We find that qualitatively, our method extracts meaningful dialog structure, and quantitatively, outperforms previous models on the ability to predict unseen data. We further evaluate the model's effectiveness in a downstream task, the dialog system building task. Experiments show that, by integrating the learned dialog structure into the reward function design, the model converges faster and to a better outcome in a reinforcement learning setting.

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