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Curiosity-Aware Bargaining

机译:好奇心的讨价还价

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摘要

Opponent modeling consists in modeling the strategy or preferences of an agent thanks to the data it provides. In the context of automated negotiation and with machine learning, it can result in an advantage so overwhelming that it may restrain some casual agents to be part of the bargaining process. We qualify as "curious" an agent driven by the desire of negotiating in order to collect information and improve its opponent model. However, neither curiosity-based rationality nor curiosity-robust protocol have been studied in automatic negotiation. In this paper, we rely on mechanism design to propose three extensions of the standard bargaining protocol that limit information leak. Those extensions are supported by an enhanced rationality model, that considers the exchanged information. Also, they are theoretically analyzed and experimentally evaluated.
机译:对手建模包括通过提供的数据来建立代理的策略或偏好。在自动谈判和机器学习的背景下,它可能导致优势,因此可能会抑制一些休闲代理人成为讨价还价过程的一部分。我们有资格成为谈判愿望的“好奇”的代理,以收集信息,改善其对手模型。然而,已经在自动谈判中研究了基于好奇心的合理性和好奇心的协议。在本文中,我们依靠机制设计来提出限制信息泄漏的标准讨价还价协议的三个扩展。这些扩展由增强的合理性模型支持,这是考虑交换信息的。此外,它们是理论上分析和实验评估的。

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