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Adaptive ensembles of autoencoders for unsupervised loT network intrusion detection

机译:无监督批次网络入侵检测的AutoEncoders自适应合奏

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摘要

In recent years, neural networks-based autoencoders have gained popularity in problems of anomaly detection. Recent approaches have proposed ensembles of autoencoders to detect network intrusions. The computationally expensive ensembles of autoencoders make it challenging to be used for intrusion detection in networks of devices with lower resources, e.g., the Internet of Things, than in the cloud or data centers. To overcome this challenge, in this work, we propose, investigate and compare four methods to reduce the ensemble complexity through adaptive de-activations of autoencoders. These methods differ in their approach to select the autoencoders to de-activate (criteria-based or random) and differ when they conduct the de-activations (post-training or in-training). Extensive experiments on two recent, realistic IoT intrusion detection datasets validate the effectiveness of the proposed methods in achieving satisfactory detection performance at much lower training, re-training and inference time costs. The proposed methods shall enable scalable and efficient intrusion detection systems or services that could be deployed on-device or on-edge.
机译:近年来,基于神经网络的AutoEncoders在异常检测问题中获得了普及。最近的方法已经提出了AutoEncoders的合奏来检测网络入侵。计算机昂贵的AutoEncoders的昂贵集合使得它挑战用于用于具有较低资源的设备网络中的入侵检测,例如,事物互联网,而不是在云或数据中心中。为了克服这一挑战,在这项工作中,我们建议,调查和比较四种方法通过自动化的自动化驱动来降低整体复杂性。这些方法的方法不同,以选择自动码器以解除激活(基于标准或随机的标准或随机),并且当它们进行去激活时(训练后或培训)。最近的两个实际IOT入侵检测数据集的大量实验验证了所提出的方法在实现令人满意的检测性能方面,验证,重新培训和推理时间成本。该方法应使可扩展和有效的入侵检测系统或服务能够在设备上或在边缘上部署。

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