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Structured Attention for Unsupervised Dialogue Structure Induction

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arxiv 2009.08552 v2 pith:F4J3EO4T submitted 2020-09-17 cs.CL cs.AI

Structured Attention for Unsupervised Dialogue Structure Induction

classification cs.CL cs.AI
keywords dialogueattentionstructuredmodelstructurevrnndatasetsdialogues
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Inducing a meaningful structural representation from one or a set of dialogues is a crucial but challenging task in computational linguistics. Advancement made in this area is critical for dialogue system design and discourse analysis. It can also be extended to solve grammatical inference. In this work, we propose to incorporate structured attention layers into a Variational Recurrent Neural Network (VRNN) model with discrete latent states to learn dialogue structure in an unsupervised fashion. Compared to a vanilla VRNN, structured attention enables a model to focus on different parts of the source sentence embeddings while enforcing a structural inductive bias. Experiments show that on two-party dialogue datasets, VRNN with structured attention learns semantic structures that are similar to templates used to generate this dialogue corpus. While on multi-party dialogue datasets, our model learns an interactive structure demonstrating its capability of distinguishing speakers or addresses, automatically disentangling dialogues without explicit human annotation.

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