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基于动态学习机制的MAS信任评价方法
引用本文:贾鹤萍,史浩山,王晓伶,李实a.基于动态学习机制的MAS信任评价方法[J].计算机应用研究,2009,26(8):3073-3076.
作者姓名:贾鹤萍  史浩山  王晓伶  李实a
作者单位:1. 西北工业大学,电子信息学院,西安,710072
2. 西北工业大学,自动化学院,西安,710072
摘    要:为准确评价协作目标,在agent信任评价模型中引入动态学习机制。采用该机制,agent在协作中可以根据环境参数、历史交互信息动态调整信任评价方式,并且在模型中引入陌生人信誉,根据对陌生人熟悉度和可靠度的计算结果处理与陌生人的交互。实验表明,采用该机制,MAS在取得目标奖励的同时,可以动态选择信任评价方式,有效地对目标agent进行评价。

关 键 词:多智能体系统    经验模型    信任模型    陌生人信誉

Trust mode of MAS based on dynamic learning mechanism
JIA He-ping,SHI Hao-shan,WANG Xiao-ling,LI Shia.Trust mode of MAS based on dynamic learning mechanism[J].Application Research of Computers,2009,26(8):3073-3076.
Authors:JIA He-ping  SHI Hao-shan  WANG Xiao-ling  LI Shia
Affiliation:a.School of Electronics & Information;b.School of Automation;Northwestern Polytechnical University;Xi'an 710072;China
Abstract:This paper introduced the dynamic learning mechanism in the agent trust evaluation model to dynamically adjust the evaluation method, according to the environmental parameters and historical interactive information. Also proposed the stranger reputation in the model. The result of familiarity and credibility could manage the interaction with strangers. Simulation shows that the mechanism is able to dynamically select the evaluation method and effectively evaluate the object agent, and gain object award at the same time.
Keywords:MAS  experience-based model  reputation-based model  stranger reputation
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