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An adaptive bilateral negotiation model based on Bayesian learning

机译:基于贝叶斯学习的自适应双边谈判模型

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摘要

Endowing the negotiation agent with a learning ability such that a more beneficial agreement might be obtained is increasingly gaining attention in agent negotiation research community. In this paper, we propose a novel bilateral negotiation model based on Bayesian learning to enable self-interested agents to adapt negotiation strategies dynamically during the negotiation process. Specifically, we assume that two agents negotiate over a single issue based on time-dependent tactic. The learning agent has a belief about the probability distribution of its opponent\u27s negotiation parameters (i.e., the deadline and reservation offer). By observing opponent\u27s historical offers and comparing them with the fitted offers derived from a regression analysis, the agent can revise its belief using the Bayesian updating rule and can correspondingly adapt its concession strategy to benefit itself. By being evaluated empirically, this model shows its effectiveness for the agent to learn the possible range of its opponent\u27s private information and alter its concession strategy adaptively, as a result a better negotiation outcome can be achieved. © Springer-Verlag Berlin Heidelberg 2013.
机译:使谈判代理具有学习能力,从而可以获得更有利的协议,这在代理谈判研究界越来越受到重视。在本文中,我们提出了一种基于贝叶斯学习的新型双边谈判模型,以使自利代理能够在谈判过程中动态地适应谈判策略。具体来说,我们假设两个代理基于依赖时间的策略就单个问题进行协商。学习代理人对其对手的谈判参数(即截止日期和预订要约)的概率分布有信心。通过观察对手的历史报价并将其与通过回归分析得出的合适报价进行比较,代理可以使用贝叶斯更新规则来修改其信念,并可以相应地调整其让步策略以使自己受益。通过经验评估,该模型显示了其对代理人学习其对手私人信息的可能范围并自适应地更改其让步策略的有效性,因此可以实现更好的协商结果。 ©Springer-Verlag Berlin Heidelberg,2013年。

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