Q-learn argumentation schemes for car sales dialogues

Adrian Groza
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引用次数: 1

Abstract

Agents need to argue with other agents many times, developing persuasion strategies that are effective over repeated situations. Applying reinforcement learning (RL) to the design of argumentation policies is appealing to dialogues where the counterpart can be modelled as a probability distribution. The idea of this research is to apply RL to speech acts in order to learn which discourse pattern is best to be conveyed during an argumentation game. Empowered by this learning mechanism, the persuasive agents gradually become more skillful through repeated argumentation.
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Q-learn汽车销售对话的论证方案
代理人需要多次与其他代理人争论,制定在重复情况下有效的说服策略。将强化学习(RL)应用于论证策略的设计对对话很有吸引力,其中对应对象可以建模为概率分布。本研究的想法是将强化学习应用于言语行为,以了解在辩论游戏中哪种话语模式最适合被传达。在这种学习机制的推动下,说服主体通过反复的论证逐渐变得更加熟练。
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