We present a new method SOLOIST that uses transfer learning and machine teaching to build task bots at scale. We parameterize classical modular task-oriented dialog systems using a Transformer-based auto-regressive language model, which subsumes different dialog modules into a single neural model. We pre-train, on heterogeneous dialog corpora, a task-grounded response generation model, which can generate dialog responses grounded in user goals and real-world knowledge for task completion. The pre-trained model can be efficiently adapted to accomplish new tasks with a handful of task-specific dialogs via machine teaching, where training samples are generated by human teachers interacting with the system. Experiments show that (i) SOLOIST creates new state-of-the-art on well-studied task-oriented dialog benchmarks, including CamRest676 and MultiWOZ; (ii) in the few-shot fine-tuning settings, SOLOIST significantly outperforms existing methods, and (iii) the use of machine teaching substantially reduces the labeling cost of fine-tuning. The pre-trained models and codes are available at https://aka.ms/soloist.
@article{arxiv.2005.05298,
title = {SOLOIST: Building Task Bots at Scale with Transfer Learning and Machine Teaching},
author = {Baolin Peng and Chunyuan Li and Jinchao Li and Shahin Shayandeh and Lars Liden and Jianfeng Gao},
journal= {arXiv preprint arXiv:2005.05298},
year = {2021}
}
Comments
18 pages; To appear at TACL; Project Website: https://aka.ms/soloist