In this paper, we explore the ability to model and infer personality types of opponents, predict their responses, and use this information to adapt a dialog agent's high-level strategy in negotiation tasks. Inspired by the idea of incorporating a theory of mind (ToM) into machines, we introduce a probabilistic formulation to encapsulate the opponent's personality type during both learning and inference. We test our approach on the CraigslistBargain dataset and show that our method using ToM inference achieves a 20% higher dialog agreement rate compared to baselines on a mixed population of opponents. We also find that our model displays diverse negotiation behavior with different types of opponents.
Improving Dialog Systems for Negotiation with Personality Modeling
A theory of mind-based approach is used to infer opponent personalities in negotiation tasks, improving dialog agreement rates and enabling diverse negotiation behavior.
- Year
- 2020
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- ACL 2021 5
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- 3
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- arxiv.org/abs/2010.09954v2ARXIV-DEFAULT
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