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4 months ago

Sequence-to-Sequence Learning for Task-oriented Dialogue with Dialogue State Representation

Haoyang Wen; Yijia Liu; Wanxiang Che; Libo Qin; Ting Liu

Sequence-to-Sequence Learning for Task-oriented Dialogue with Dialogue State Representation

Abstract

Classic pipeline models for task-oriented dialogue system require explicit modeling the dialogue states and hand-crafted action spaces to query a domain-specific knowledge base. Conversely, sequence-to-sequence models learn to map dialogue history to the response in current turn without explicit knowledge base querying. In this work, we propose a novel framework that leverages the advantages of classic pipeline and sequence-to-sequence models. Our framework models a dialogue state as a fixed-size distributed representation and use this representation to query a knowledge base via an attention mechanism. Experiment on Stanford Multi-turn Multi-domain Task-oriented Dialogue Dataset shows that our framework significantly outperforms other sequence-to-sequence based baseline models on both automatic and human evaluation.

Benchmarks

BenchmarkMethodologyMetrics
task-oriented-dialogue-systems-on-kvretDSR
BLEU: 12.7
Entity F1: 51.9

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Sequence-to-Sequence Learning for Task-oriented Dialogue with Dialogue State Representation | Papers | HyperAI