The Adapter-Bot: All-In-One Controllable Conversational Model

Zhaojiang Lin(Hong Kong University of Science and Technology), Andrea Madotto(Hong Kong University of Science and Technology), Yejin Bang(Hong Kong University of Science and Technology), Pascale Fung(Hong Kong University of Science and Technology)
Proceedings of the AAAI Conference on Artificial Intelligence
May 18, 2021
Cited by 47Open Access
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Abstract

In this paper, we present the Adapter-Bot, a generative chat-bot that uses a fixed backbone conversational model such as DialGPT (Zhang et al. 2019) and triggers on-demand dialogue skills via different adapters (Houlsby et al. 2019). Each adapter can be trained independently, thus allowing a continual integration of skills without retraining the entire model. Depending on the skills, the model is able to process multiple knowledge types, such as text, tables, and graphs, in a seamless manner. The dialogue skills can be triggered automatically via a dialogue manager, or manually, thus allowing high-level control of the generated responses. At the current stage, we have implemented 12 response styles (e.g., positive, negative etc.), 6 goal-oriented skills (e.g. weather information, movie recommendation, etc.), and personalized and emphatic responses.


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