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On-Line Intrusion Detection Model Based on Approximate Linear Dependent Condition with Linear Latent Feature Extraction

机译:基于近似线性依赖条件的线性潜在特征提取的在线入侵检测模型

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Most of the intrusion detection models (IDM) are constructed with off-line training data. Time-variance characteristic of the practical network system cannot be embodied in the off-line constructed IDM. On-line updating of the off-line IDM with the valued new samples is very necessary. In this paper, a new on-line instruction detection model based on approximate linear dependent (ALD) condition with linear latent feature extraction is proposed to address this problem. Specifically, the valued samples which can represent drift of the practical network are indentified with ALD and prior knowledge. Then, these selected samples are used to update the off-line IDM based on on-line latent feature extraction method and fast machine learning algorithm with sample-based updating strategy. Experiments based on KDD99 data are used to validate the proposed approach.
机译:大多数入侵检测模型(IDM)由离线训练数据构建。实际网络系统的时间方差特性不能体现在离线构造的IDM中。在线更新带有值的新样本的离线IDM非常必要。在本文中,提出了一种基于近似线性相关(ALD)条件的新的在线指令检测模型,其具有线性潜在特征提取来解决这个问题。具体地,可以代表实际网络漂移的值样本用ALD和先验知识识别。然后,这些所选样本用于基于在线潜在特征提取方法和基于样本的更新策略的基于在线潜在特征提取方法和快速机器学习算法来更新离线IDM。基于KDD99数据的实验用于验证所提出的方法。

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