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Improving Anomaly Detection Error Rate byCollective Trust Modeling

机译:改善异常检测错误率通过控制信任建模

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Current Network Behavior Analysis (NBA) techniques are based on anomaly detection principles and therefore subject to high error rates. We propose a mechanism that deploys trust modeling, a technique for cooperator modeling from the multi-agent research, to improve the quality of NBA results. Our system is designed as a set of agents, each of them based on an existing anomaly detection algorithm coupled with a trust model based on the same traffic representation. These agents minimize the error rate by unsupervised, multi-layer integration of traffic classification. The system has been evaluated on real traffic in Czech academic networks.
机译:目前的网络行为分析(NBA)技术基于异常检测原理,因此受到高误差速率的影响。我们提出了一种部署信任建模的机制,一种从多智能经纪人研究中的合作师建模技术,提高NBA结果的质量。我们的系统被设计为一组代理,基于基于基于相同的流量表示的现有异常检测算法与信任模型耦合。这些代理通过无监督的多层集成来最小化错误率的流量分类。该系统已在捷克学术网络中的实际流量评估。

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