Turn-Level Active Learning for Dialogue State Tracking

Publication Name

EMNLP 2023 - 2023 Conference on Empirical Methods in Natural Language Processing, Proceedings

Abstract

Dialogue state tracking (DST) plays an important role in task-oriented dialogue systems. However, collecting a large amount of turn-by-turn annotated dialogue data is costly and inefficient. In this paper, we propose a novel turn-level active learning framework for DST to actively select turns in dialogues to annotate. Given the limited labelling budget, experimental results demonstrate the effectiveness of selective annotation of dialogue turns. Additionally, our approach can effectively achieve comparable DST performance to traditional training approaches with significantly less annotated data, which provides a more efficient way to annotate new dialogue data.

Open Access Status

This publication is not available as open access

First Page

7705

Last Page

7719

Funding Sponsor

France Télécom

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