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Novel dynamic diversity controlling EDA and its application to automated bilateral negotiation

机译:新型动态多样性控制EDA及其在自动双边谈判中的应用

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Since optimal strategies ensure that agents negotiate optimally, finding optimal strategies for negotiation agents that have incomplete information is an important and challenging issue. In this study, we use estimation of distribution algorithms (EDAs) to find optimal strategies for a bilateral negotiation with incomplete information between two competitive negotiation agents by coevolving both the agents' strategies. Agents coevolve optimal negotiation strategies for both parties through an evolutionary learning process in which a coevolutionary interaction is performed by directly matching and interacting agents of one population with those of the other population through random pairing. Even though there have been studies on finding negotiation strategies using evolutionary approaches, there are very few works on effectively finding the global optimal solution. Finding both parties' optimal strategies is difficult because simple EDAs suffer from premature convergence and their search capability deteriorates during coevolution. To solve these problems, we previously proposed the dynamic diversity controlling EDA (D C-EDA), which has a novel dynamic diversity controlling capability. However, it suffers from the problem of population reinitialization that leads to a computational overhead. To reduce the computational overhead and to achieve further improvements in terms of solution accuracy, we have proposed an improved D2C-EDA (ID2C-EDA) by adopting a local neighborhood search. Favorable empirical results support the effectiveness of the proposed ID2CEDA.
机译:由于最佳策略确保了代理商最佳地协商,寻找具有不完整信息的谈判代理商的最佳策略是一个重要和具有挑战性的问题。在这项研究中,我们使用分发算法(EDA)的估计来找到双边谈判的最佳策略,通过共同策略代理人的策略在两个竞争谈判代理之间的不完整信息。代理通过进化学习过程共用双方的最佳谈判策略,其中通过随机配对直接与其他人群的人群与其他人群相互匹配和相互作用来进行共同互动的互动相互作用。尽管有关于使用进化方法寻找谈判策略的研究,但很少有效地有效地找到全球最优解决方案。寻找双方的最佳策略很困难,因为简单的EDAS遭受过早的收敛性,并且它们在参与过程中的搜索能力恶化。为了解决这些问题,我们之前提出了控制EDA(D C-EDA)的动态分集,其具有新的动态分集控制能力。然而,它受到群体重新初始化的问题,导致计算开销。为了减少计算开销并在解决方案准确性方面实现进一步改进,我们通过采用A提出了一种改进的D 2 C-EDA(ID 2 c-EDA)本地邻居搜索。有利的经验结果支持所提出的ID 2 ceda的有效性。

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