Experimental analysis of automated negotiation agents in modeling Gaussian bidders

Fatemeh Hassanvand, Faria Nassiri-Mofakham
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引用次数: 1

Abstract

Automated negotiating agents are usually designed and implemented in a general way so that they can negotiate successfully in front of a vast variety of opponents. In the real world, most opponents are single-peaked. Gaussian agents that use such distribution function to rate the negotiation items are important sorts of such opponents. Modeling the opponents is of great importance since it enables us to adjust our next decisions accordingly. This can bring us short-time compromises, ideal eventual utility, more satisfaction, and so on. In negotiating with Gaussian opponents, the estimation of the opponent's peak point is the core. In this regard, we have paid particular attention to how accurate the existing automated agents attended in Automated Negotiating Agents Competition (ANAC) during 2010–2019 can model Gaussian bidders and showed the result of the experiments.
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自动谈判代理建模高斯投标人的实验分析
自动谈判代理通常以一种通用的方式设计和实现,这样它们就可以在各种各样的对手面前成功谈判。在现实世界中,大多数对手都是单峰的。利用这种分布函数对协商项进行评级的高斯代理是这种对手的重要类型。为对手建模非常重要,因为它使我们能够相应地调整下一个决策。这可以给我们带来短期的妥协,理想的最终效用,更多的满足感,等等。在与高斯对手的协商中,对手峰值点的估计是核心问题。在这方面,我们特别关注了2010-2019年参加自动谈判代理竞赛(ANAC)的现有自动代理对高斯竞标者建模的准确性,并展示了实验结果。
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