Dialog History Construction with Long-Short Term Memory for Robust Generative Dialog State Tracking

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One of the crucial components of dialog system is the dialog state tracker, which infers user’s intention from preliminary speech processing. Since the overall performance of the dialog system is heavily affected by that of the dialog tracker, it has been one of the core areas of research on dialog systems. In this paper, we present a dialog state tracker that combines a generative probabilistic model of dialog state tracking with the recurrent neural network for encoding important aspects of the dialog history. We describe a two-step gradient descent algorithm that optimizes the tracker with a complex loss function. We demonstrate that this approach yields a dialog state tracker that performs competitively with top-performing trackers participated in the first and second Dialog State Tracking Challenges.
Publisher
Dialogue & Discourse
Issue Date
2016-04
Language
English
Citation

Dialogue & Discourse , v.7, no.3, pp.47 - 64

ISSN
2152-9620
DOI
10.5087/dad.2016.302
URI
http://hdl.handle.net/10203/214525
Appears in Collection
AI-Journal Papers(저널논문)
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