Tue-1-3-1 Modeling ASR Ambiguity for Neural Dialogue State Tracking

Vaishali Pal(IIIT Hyderabad), Fabien Guillot(Naver Labs Europe), Manish Shrivastava(IIIT Hyderabad), Jean-Michel Renders(Naver Labs Europe) and Laurent Besacier(LIG)
Abstract: Spoken dialogue systems typically use one or several (top-N) ASR sequence(s) for inferring the semantic meaning and tracking the state of the dialogue However, ASR graphs, such as confusion networks (confnets), provide a compact representation of a richer hypothesis space than a top-N ASR list. In this paper, we study the benefits of using confusion networks with a neural dialogue state tracker (DST). We encode the 2-dimensional confnet into a 1-dimensional sequence of embeddings using a confusion network encoder which can be used with any DST system. Our confnet encoder is plugged into the `Global-locally Self-Attentive Dialogue State Tacker' (GLAD) model for DST and obtains significant improvements in both accuracy and inference time compared to using top-N ASR hypotheses.
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