Bilateral Personalized Dialogue Generation with Contrastive Learning
This work addresses the challenge of inappropriate or offensive responses in human-robot interaction by focusing on bilateral personalization, offering an incremental improvement over existing methods that only consider the robot's persona.
The paper tackled the problem of generating personalized dialogue responses by considering both user and robot personas, proposing a Bilateral Personalized Dialogue Generation method that improved personalization and consistency with bilateral personas in evaluations.
Generating personalized responses is one of the major challenges in natural human-robot interaction. Current researches in this field mainly focus on generating responses consistent with the robot's pre-assigned persona, while ignoring the user's persona. Such responses may be inappropriate or even offensive, which may lead to the bad user experience. Therefore, we propose a Bilateral Personalized Dialogue Generation (BPDG) method for dyadic conversation, which integrates user and robot personas into dialogue generation via designing a dynamic persona-aware fusion method. To bridge the gap between the learning objective function and evaluation metrics, the Conditional Mutual Information Maximum (CMIM) criterion is adopted with contrastive learning to select the proper response from the generated candidates. Moreover, a bilateral persona accuracy metric is designed to measure the degree of bilateral personalization. Experimental results demonstrate that, compared with several state-of-the-art methods, the final results of the proposed method are more personalized and consistent with bilateral personas in terms of both automatic and manual evaluations.