面向服务组合的多智能体学习模型

Wenbo Xu, Jian Cao, Haiyan Zhao, Lei Wang
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引用次数: 8

摘要

代理技术由于其自主性、主动性、交互性、持久性和适应性等特点,在面向服务的体系结构(SOA)中越来越受欢迎。已经有很多实现将SOA与多代理系统(MAS)集成在一起。学习能力是MAS的一个重要特征。针对服务组合问题,提出了面向服务的MAS学习模型。它采用强化学习的原理,并以马尔可夫博弈和q学习为基础。学习过程的奖励由响应时间和成本等QoS参数决定。介绍了面向服务组合的多智能体学习机制。实验和实例研究结果表明,多智能体学习方法能够有效地达到收敛性,并且能够基于从过去的组合经验中不断学习到的知识加速服务组合过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-agent Learning Model for Service Composition
Agent technology has gained increasing popularity in service oriented architecture (SOA) because of its features of autonomy, initiative, interactivity, persistency and adaptability. There are already a plenty of implementations which integrate SOA with multi-agent systems (MAS). The ability of learning is a significant feature of MAS. This paper proposes a learning model of the service-oriented MAS for the service composition problem. It adopts the principle of reinforcement learning and is based on the Markov game and Q-learning. The reward of the learning procedure is determined by the QoS parameters such as responding time and cost. The mechanism of multi-agent leaning for service composition is introduced. The results of experiments and case study show that our multi-agent learning approach can reach convergence efficiently and it can also accelerate the service composition process based on the knowledge continuously learned from past composition experiences.
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