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首页> 外文期刊>Applied Intelligence >Learning opponent’s beliefs via fuzzy constraint-directed approach to make effective agent negotiation
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Learning opponent’s beliefs via fuzzy constraint-directed approach to make effective agent negotiation

机译:通过模糊约束定向方法学习对手的信念,以进行有效的代理协商

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摘要

This work presents a general framework of agent negotiation with opponent learning via fuzzy constraint-directed approach. The fuzzy constraint-directed approach involves the fuzzy probability constraint and the fuzzy instance reasoning. The proposed approach via fuzzy probability constraint can not only cluster the opponent’s information in negotiation process as proximate regularities to improve the convergence of behavior patterns, but also eliminate the noisy hypotheses or beliefs to enhance the effectiveness on beliefs learning. By using fuzzy instance method, our approach can reuse the prior opponent knowledge to speed up the problem-solving, and reason the proximate regularities to acquire desirable results on predicting opponent behavior. In addition, the proposed interaction method enables the agent to make a concession dynamically based on expected objectives. Moreover, experimental results suggest that the proposed framework allows an agent to achieve a higher reward, a fairer deal, or a smaller cost of negotiation.
机译:这项工作提出了一种通过模糊约束定向方法与对手学习进行代理协商的一般框架。面向模糊约束的方法涉及模糊概率约束和模糊实例推理。提出的基于模糊概率约束的方法不仅可以将谈判过程中对手的信息聚类为最接近的规律性,以改善行为模式的收敛性,而且可以消除嘈杂的假设或信念,从而增强信念学习的有效性。通过使用模糊实例方法,我们的方法可以重用先前的对手知识来加快问题解决的速度,并推理出近似规律以在预测对手行为时获得理想的结果。另外,所提出的交互方法使代理能够基于预期目标动态做出让步。此外,实验结果表明,所提出的框架允许代理人获得更高的报酬,更公平的交易或更低的谈判成本。

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