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Continual Prompt Tuning for Dialog State Tracking

Qi Zhu, Bing Li, Fei Mi, Xiaoyan Zhu, Minlie Huang

2022Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)37 citationsDOIOpen Access PDF

Abstract

A desirable dialog system should be able to continually learn new skills without forgetting old ones, and thereby adapt to new domains or tasks in its life cycle. However, continually training a model often leads to a well-known catastrophic forgetting issue. In this paper, we present Continual Prompt Tuning, a parameterefficient framework that not only avoids forgetting but also enables knowledge transfer between tasks. To avoid forgetting, we only learn and store a few prompt tokens' embeddings for each task while freezing the backbone pre-trained model. To achieve bi-directional knowledge transfer among tasks, we propose several techniques (continual prompt initialization, query fusion, and memory replay) to transfer knowledge from preceding tasks and a memory-guided technique to transfer knowledge from subsequent tasks. Extensive experiments demonstrate the effectiveness and efficiency of our proposed method on continual learning for dialog state tracking, compared with state-of-the-art baselines.

Topics & Concepts

ForgettingComputer scienceDialog boxInitializationTask (project management)Artificial intelligenceTransfer of learningState (computer science)Transfer (computing)Tracking (education)Machine learningHuman–computer interactionPsychologyEconomicsPhilosophyWorld Wide WebManagementProgramming languageLinguisticsParallel computingAlgorithmPedagogyMultimodal Machine Learning ApplicationsSpeech and dialogue systemsTopic Modeling
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