Predicting grid user trustworthiness using neural networks

Bhavna Gupta, Harmeet Kaur, Punam Bedi
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引用次数: 4

Abstract

To addresses the problem of job failures in grid, which might be due to interaction between unknown entities, a reputation based multi agent system is proposed in this paper. The system is based on cooperative model of society in which agents share their experiences about the resource providers through feedback ratings. The uncertainty present in the feedback ratings is handled through Fuzzy Inference System (FIS). The resource providers also compute the trustworthiness of the user before giving access of their resources to safeguard themselves from malicious attacks, using neural networks. The resource providers train the neural network with their own data of already serviced user and predict the trustworthiness of the requesting user. Experiments confirm that the methods with neural networks are feasible and effective for estimation of the trustworthiness of the user.
基于神经网络的电网用户可信度预测
为了解决网格中由于未知实体之间的相互作用而导致的作业失败问题,提出了一种基于信誉的多智能体系统。该系统基于社会的合作模式,agent通过反馈评级的方式分享对资源提供者的经验。通过模糊推理系统(FIS)处理反馈评级中存在的不确定性。资源提供者还在访问其资源之前计算用户的可信度,以保护自己免受恶意攻击,使用神经网络。资源提供者用自己已经服务的用户数据训练神经网络,预测请求用户的可信度。实验证明,利用神经网络进行用户可信度估计是可行和有效的。
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