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IDS Based on Bio-inspired Models

机译:基于生物启发模型的ID

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Unsupervised projection approaches can support Intrusion Detection Systems for computer network security. The involved technologies assist a network manager in detecting anomalies and potential threats by an intuitive display of the progression of network traffic. Projection methods operate as smart compression tools and map raw, high-dimensional traffic data into 2-D or 3-D spaces for subsequent graphical display. The paper compares three projection methods, namely, Cooperative Maximum Likelihood Hebbian Learning, Auto-Associative Back-Propagation networks and Principal Component Analysis. Empirical tests on anomalous situations related to the Simple Network Management Protocol (SNMP) confirm the validity of the projection-based approach. One of these anomalous situations (the SNMP community search) is faced by these projection models for the first time. This work also highlights the importance of the time-information dependence in the identification of anomalous situations in the case of the applied methods.
机译:无监督的投影方法可以支持用于计算机网络安全的入侵检测系统。所涉及的技术协助网络管理员通过直观显示网络流量的直观显示来检测异常和潜在威胁。投影方法用作智能压缩工具,并将原始的高维流量数据映射到2-D或3-D空间中,以供后续图形显示。本文比较了三种投影方法,即合作最大似然性HEBBIAN学习,自动关联的背传播网络和主成分分析。与简单网络管理协议(SNMP)相关的异常情况的实证测试证实了基于投影的方法的有效性。这些异常情况之一(SNMP社区搜索)首次面临这些投影模型。这项工作还突出了时间信息依赖性在应用方法的情况下识别异常情况的重要性。

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