Continual Learning in Task-Oriented Dialogue Systems (2012.15504v1)
Abstract: Continual learning in task-oriented dialogue systems can allow us to add new domains and functionalities through time without incurring the high cost of a whole system retraining. In this paper, we propose a continual learning benchmark for task-oriented dialogue systems with 37 domains to be learned continuously in four settings, such as intent recognition, state tracking, natural language generation, and end-to-end. Moreover, we implement and compare multiple existing continual learning baselines, and we propose a simple yet effective architectural method based on residual adapters. Our experiments demonstrate that the proposed architectural method and a simple replay-based strategy perform comparably well but they both achieve inferior performance to the multi-task learning baseline, in where all the data are shown at once, showing that continual learning in task-oriented dialogue systems is a challenging task. Furthermore, we reveal several trade-offs between different continual learning methods in term of parameter usage and memory size, which are important in the design of a task-oriented dialogue system. The proposed benchmark is released together with several baselines to promote more research in this direction.
- Andrea Madotto (64 papers)
- Zhaojiang Lin (45 papers)
- Zhenpeng Zhou (7 papers)
- Seungwhan Moon (28 papers)
- Paul Crook (10 papers)
- Bing Liu (211 papers)
- Zhou Yu (206 papers)
- Eunjoon Cho (6 papers)
- Zhiguang Wang (24 papers)