Managing trust in diffusion adaptive networks with malicious agents

K. Ntemos, N. Kalouptsidis, N. Kolokotronis
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引用次数: 3

Abstract

In this paper, we consider the problem of information sharing over adaptive networks, where a diffusion strategy is used to estimate a common parameter. We introduce a new model that takes into account the presence of both selfish and malicious intelligent agents that adjust their behavior to maximize their own benefits. The interactions among agents are modeled as a stochastic game with incomplete information and partially observable actions. To stimulate cooperation amongst selfish agents and thwart malicious behavior, a trust management system relying on a voting scheme is employed. Agents act as independent learners, using the Q-learning algorithm. The simulation results illustrate the severe impact of falsified information on estimation accuracy along with the noticeable improvements gained by stimulating cooperation and truth-telling, with the proposed trust management mechanism.
基于恶意代理的扩散自适应网络信任管理
在本文中,我们考虑自适应网络上的信息共享问题,其中使用扩散策略来估计公共参数。我们引入了一个新的模型,该模型考虑了自私和恶意智能代理的存在,它们调整自己的行为以最大化自己的利益。将智能体之间的相互作用建模为具有不完全信息和部分可观察行为的随机博弈。为了激发自私主体之间的合作,防止恶意行为,采用了一种基于投票机制的信任管理系统。智能体作为独立的学习者,使用Q-learning算法。仿真结果表明,在提出的信任管理机制下,虚假信息对估计精度的影响是严重的,通过激励合作和诚实守信可以显著提高估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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