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An augmented EDA with dynamic diversity control and local neighborhood search for coevolution of optimal negotiation strategies

机译:具有动态分集控制和局部邻域搜索的增强EDA,用于协同协商最优协商策略

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In this paper, we present an estimation of distribution algorithm (EDA) augmented with enhanced dynamic diversity controlling and local improvement methods to solve competitive coevolution problems for agent-based automated negotiations. Since optimal negotiation strategies ensure that interacting agents negotiate optimally, finding such strategies—particularly, for the agents having incomplete information about their opponents—is an important and challenging issue to support agent-based automated negotiation systems. To address this issue, we consider the problem of finding optimal negotiation strategies for a bilateral negotiation between self-interested agents with incomplete information through an EDA-based coevolution mechanism. Due to the competitive nature of the agents, EDAs should be able to deal with competitive coevolution based on two asymmetric populations each consisting of self-interested agents. However, finding optimal negotiation solutions via coevolutionary learning using conventional EDAs is difficult because the EDAs suffer from premature convergence and their search capability deteriorates during coevolution. To solve these problems, even though we have previously devised the dynamic diversity controlling EDA (D2C-EDA), which is mainly characterized by a diversification and refinement (DR) procedure, D2C-EDA suffers from the population reinitialization problem that leads to a computational overhead. To reduce the computational overhead and to achieve further improvements in terms of solution accuracy, we have devised an improved D2C-EDA (ID2C-EDA) by adopting an enhanced DR procedure and a local neighborhood search (LNS) method. Favorable empirical results support the effectiveness of the proposed ID2C-EDA compared to conventional and the other proposed EDAs. Furthermore, ID2C-EDA finds solutions very close to the optimum.
机译:在本文中,我们提出了一种分配算法(EDA)的估计,该算法通过增强的动态分集控制和局部改进方法得以增强,以解决基于代理的自动协商的竞争性协同进化问题。由于最佳协商策略可确保交互的代理进行最佳协商,因此,找到这样的策略(尤其是对于具有有关其对手的不完整信息的代理)是支持基于代理的自动协商系统的重要且具有挑战性的问题。为了解决这个问题,我们考虑了通过基于EDA的协同进化机制,为具有不完全信息的自利代理之间的双边协商找到最佳协商策略的问题。由于代理商的竞争性质,EDA应该能够基于两个各自由自利代理商组成的不对称群体来应对竞争性协同进化。但是,由于使用传统EDA的协同进化学习来找到最佳协商解决方案很困难,因为EDA会过早收敛,并且它们的搜索能力会在协同进化过程中恶化。为了解决这些问题,即使我们先前已经设计出了动态多样性控制EDA(D2C-EDA),其主要特点是多样化和精细化(DR)程序,但D2C-EDA仍存在人口重新初始化问题,从而导致计算问题。高架。为了减少计算开销并实现解决方案精度的进一步改进,我们通过采用增强的DR程序和局部邻域搜索(LNS)方法设计了一种改进的D2C-EDA(ID2C-EDA)。有利的经验结果证明,与传统的和其他提议的EDA相比,提议的ID2C-EDA的有效性。此外,ID2C-EDA发现非常接近最佳解决方案的解决方案。

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