Abstract

As an essential component of task-oriented dialogue systems, Dialogue State Tracking (DST) takes charge of estimating user intentions and requests in dialogue contexts and extracting substantial goals (states) from user utterances to help the downstream modules to determine the next actions of dialogue systems. For practical usages, a major challenge to constructing a robust DST model is to process a conversation with multi-domain states. However, most existing approaches trained DST on a single domain independently, ignoring the information across domains. To tackle the multi-domain DST task, we first construct a dialogue state graph to transfer structured features among related domain-slot pairs across domains. Then, we encode the graph information of dialogue states by graph convolutional networks and utilize a hard copy mechanism to directly copy historical states from the previous conversation. Experimental results show that our model improves the performances of the multi-domain DST baseline (TRADE) with the absolute joint accuracy of 2.0% and 1.0% on the MultiWOZ 2.0 and 2.1 dialogue datasets, respectively.

Highlights

  • A task-oriented dialogue system provides fundamental technologies for continuous interactions with a human to accomplish predefined specific goals, such as taxi reservation or hotel booking

  • The results show that Graph-based and Copy-augmented multidomain Dialogue State Tracker (GCDST) achieves the best performances of joint accuracy of 50.68% on MultiWOZ 2.0 and 46.09% on MultiWOZ 2.1, Model MDBT SpanPtr GLAD GCE TRADE GCDST

  • The results demonstrate the effectiveness of GCDST on capturing information on multiple domain-slot pairs from dialogues and utilizing the states from historical turns

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Summary

Introduction

A task-oriented dialogue system provides fundamental technologies for continuous interactions with a human to accomplish predefined specific goals, such as taxi reservation or hotel booking. Dialogue State Tracking (DST) is a crucial component in the task-oriented dialogue system. Users’ intentions and goals are extracted from the current utterances and the conversation history. The DST model encodes the information as a set of states to help dialogue systems to determine which actions should be taken in steps (Young and Thomson, 2013). A dialogue state generally comprises an entity. Usr: I’m looking for an expensive restaurant in the centre of town. Sys: What about the Cambridge chop house? A British restaurant located in the centre of town Sys: What about the Cambridge chop house? A British restaurant located in the centre of town

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