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Supervised Nonlinear Latent Feature Extraction and Regularized Random Weights Neural Network Modeling for Intrusion Detection System

机译:入侵检测系统的监督非线性潜在特征提取和规则化随机权重神经网络建模

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Colinearity and latent relation among different input features of net work intrusion detection system (IDS) have to be addressed. The strong non-linearity and uncertain mapping between input features and network intrusion behaviors lead to difficulty to built effective detection model for IDS. In this paper, a new supervised nonlinear latent feature extraction and fast machine learning algorithm based on global optimization strategy is proposed to solve these problems. Specifically, for diminishing colinearity among input variables, kernel partial least squares (KPLS) algorithm is employed to extract nonlinear latent features. Then, regularized random weights neural networks (RRWNN) is utilized to construct the intrusion detection model. To optimize the proposed system, the modeling parameters of KPLS and RRWNN are selected in terms of global optimization. Experiments on KDD99 data show that the proposed approach is effective.
机译:必须解决网络入侵检测系统(IDS)的不同输入特征之间的共线性和潜在关系。输入特征与网络入侵行为之间的强非线性和不确定映射导致难以为IDS建立有效的检测模型。为了解决这些问题,提出了一种基于全局优化策略的新型监督非线性潜在特征提取和快速机器学习算法。具体来说,为了减少输入变量之间的共线性,采用核偏最小二乘(KPLS)算法提取非线性潜在特征。然后,利用正则化的随机权重神经网络(RRWNN)构建入侵检测模型。为了优化提出的系统,根据全局优化选择了KPLS和RRWNN的建模参数。在KDD99数据上的实验表明,该方法是有效的。

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