EVA 2.0: Emotional and rational multimodal argumentation between virtual agents

Author:

Rach Niklas1ORCID,Weber Klaus2,Yang Yuchi1,Ultes Stefan3,André Elisabeth2,Minker Wolfgang1

Affiliation:

1. Ulm University , Institute of Communications Engineering , Ulm , Germany

2. Augsburg University , Human-Centered Artificial Intelligence , Augsburg , Germany

3. Mercedes-Benz AG , Sindelfingen , Germany

Abstract

Abstract Persuasive argumentation depends on multiple aspects, which include not only the content of the individual arguments, but also the way they are presented. The presentation of arguments is crucial – in particular in the context of dialogical argumentation. However, the effects of different discussion styles on the listener are hard to isolate in human dialogues. In order to demonstrate and investigate various styles of argumentation, we propose a multi-agent system in which different aspects of persuasion can be modelled and investigated separately. Our system utilizes argument structures extracted from text-based reviews for which a minimal bias of the user can be assumed. The persuasive dialogue is modelled as a dialogue game for argumentation that was motivated by the objective to enable both natural and flexible interactions between the agents. In order to support a comparison of factual against affective persuasion approaches, we implemented two fundamentally different strategies for both agents: The logical policy utilizes deep Reinforcement Learning in a multi-agent setup to optimize the strategy with respect to the game formalism and the available argument. In contrast, the emotional policy selects the next move in compliance with an agent emotion that is adapted to user feedback to persuade on an emotional level. The resulting interaction is presented to the user via virtual avatars and can be rated through an intuitive interface.

Publisher

Walter de Gruyter GmbH

Subject

General Computer Science

Reference44 articles.

1. S. Alahmari, T. Yuan, and D. Kudenko. Reinforcement learning for dialogue game based argumentation. In CMNA@ PERSUASIVE, pages 29–37, 2019.

2. S. Asai, K. Yoshino, S. Shinagawa, S. Sakti, and S. Nakamura. Emotional speech corpus for persuasive dialogue system. In Proceedings of The 12th Language Resources and Evaluation Conference, pages 491–497, 2020.

3. M. Barlier, J. Perolat, R. Laroche, and O. Pietquin. Human-machine dialogue as a stochastic game. In Proceedings of the 16th Annual Meeting of the Special Interest Group on Discourse and Dialogue, pages 2–11, Prague, Czech Republic, 2015. ACL.

4. S. Chaiken, A. Liberman, and A. Eagly. Heuristic and Systematic Information Processing within and beyond the Persuasion Context, pages 212–252. Guilford, 1989.

5. L. A. Chalaguine and A. Hunter. A persuasive chatbot using a crowd-sourced argument graph and concerns. In Computational Models of Argument: Proceedings of COMMA 2020, volume 326, pages 9–20, 2020.

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