基于强化学习的Agent双边多议题竞价协商协议及其在电子商务中的应用

Li Jian
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引用次数: 11

摘要

随着多智能体电子商务系统的快速发展,往往需要在线自动协商协议。但是由于agent所具有的信息不完全,使得在线协商协议的效率很低。为了解决这一问题,提出了一种基于强化学习的在线代理双边多议题备用投标协商协议。为了提高协商协议的效率,提出了在线学习协商代理不完全信息的强化学习算法。该协议应用于基于多代理的在线电子商务中。在协议实验中,本文采用无学习智能体(NA)、静态学习智能体(SA)和动态学习智能体(DA)三种智能体进行对比。在静态学习代理中,Q-learning的学习率被设置为0.1不变,因此称为静态学习。而在本文提出的动态学习中,q学习的学习率是动态变化的,因此称为动态学习。实验表明,本文提出的协议可以帮助agent更有效地进行协商。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Agent Bilateral Multi-issue Alternate Bidding Negotiation Protocol Based on Reinforcement Learning and its Application in E-commerce
With the rapid development of multi-agent based E-commerce systems, on-line automatic negotiation protocol is often needed. But because of incomplete information agents have, the efficiency of on-line negotiation protocol is rather low. To overcome the problem, an on-line agent bilateral multi-issue alternate bidding negotiation protocol based on reinforcement learning is present. The reinforcement learning algorithm is presented to on-line learn the incomplete information of negotiation agent to enhance the efficiency of negotiation protocol. The protocol is applied to on-line multi-agent based electronic commerce. In the protocol experiment, three kinds of agents are used to compare with, which are no-learning agents (NA), static learning agents (SA) and dynamic learning agent (DA) in this paper. In static learning agent, the learning rate of Q-learning is set to 0.1 unchangeable, so itpsilas called static learning. While in dynamic learning proposed in this paper, the learning rate of Q-learning can change dynamically, so itpsilas called dynamic learning. Experiments show that the protocol present in this paper can help agents to negotiate more efficiently.
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