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A neural network-based multi-agent classifier system with a Bayesian formalism for trust measurement

机译:具有贝叶斯形式主义的基于神经网络的多智能体分类器系统,用于信任度量

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摘要

In this paper, a neural network (NN)-based multi-agent classifier system (MACS) utilising the trust-negotiation-communication (TNC) reasoning model is proposed. A novel trust measurement method, based on the combination of Bayesian belief functions, is incorporated into the TNC model. The Fuzzy Min-Max (FMM) NN is used as learning agents in the MACS, and useful modifications of FMM are proposed so that it can be adopted for trust measurement. Besides, an auctioning procedure, based on the sealed bid method, is applied for the negotiation phase of the TNC model. Two benchmark data sets are used to evaluate the effectiveness of the proposed MACS. The results obtained compare favourably with those from a number of machine learning methods. The applicability of the proposed MACS to two industrial sensor data fusion and classification tasks is also demonstrated, with the implications analysed and discussed.
机译:本文提出了一种基于神经网络(TNS)推理模型的基于多代理分类器系统(MACS)。一种基于贝叶斯信念函数的组合的新型信任度量方法被纳入了TNC模型。模糊最小-最大(FMM)NN在MACS中用作学习代理,并提出了对FMM的有用修改,以便可以将其用于信任度度量。此外,基于密封投标方法的拍卖程序被应用于TNC模型的协商阶段。使用两个基准数据集来评估所提出的MACS的有效性。获得的结果与来自许多机器学习方法的结果相比具有优势。还展示了所提出的MACS在两个工业传感器数据融合和分类任务中的适用性,并分析和讨论了其含义。

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