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Evaluating Persuasion Strategies and Deep Reinforcement Learning methods for Negotiation Dialogue agents

机译:为谈判对话代理评估说服策略和深度强化学习方法

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摘要

In this paper we present a comparative evaluation of various negotiation strategies within an online version of the game “Settlers of Catan”. The comparison is based on human subjects playing games against artificial game-playing agents (‘bots’) which implement different negotiation dialogue strategies, using a chat dialogue interface to negotiate trades. Our results suggest that a negotiation strategy that uses persuasion, as well as a strategy that is trained from data using Deep Reinforcement Learning, both lead to an improved win rate against humans, compared to previous rule-based and supervised learning baseline dialogue negotiators.
机译:在本文中,我们介绍了在线游戏“加泰罗尼亚的定居者”中各种谈判策略的比较评估。进行比较的依据是,人类对象与人工游戏代理(“机器人”)玩游戏,后者通过聊天对话界面来协商交易,从而实施不同的谈判对话策略。我们的结果表明,与以前的基于规则和受监督的学习基线对话谈判者相比,使用说服力的谈判策略以及使用深度强化学习从数据中训练出来的策略都可以提高对人类的胜率。

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