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An Advanced Methodology to Analyse Data Stored on Mobile Devices

机译:分析移动设备上存储的数据的高级方法

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Nowadays computer and mobile devices, such as mobile phones, smartphones, smartwatches, tablets, etc., represent the multimedia diary of each of us. Thanks to technological evolution and the advent of an infinite number of applications, mainly aimed at socialization and entertainment, they have become the containers of an infinite number of personal and professional information. For this reason, optimizing the performance of systems able to detect intrusions (IDS - Intrusion Detection System) is a goal of common interest. This paper presents a methodology to classify hacking attacks taking advantage of the generalization property of neural networks. In particular, in this work we adopt the multilayer perceptron (MLP) model with the back-propagation algorithm and the sigmoidal activation function. We analyse the results obtained using different configurations for the neural network, varying the number of hidden layers and the number of training epochs in order to obtain a low number of false positives. The obtained results will be presented in terms of type of attacks and training epochs and we will show that the best classification is carried out for DOS and Probe attacks.
机译:如今,计算机和移动设备(例如手机,智能手机,智能手表,平板电脑等)代表了我们每个人的多媒体日记。由于技术的发展和以社交和娱乐为主要目的的无数应用的出现,它们已成为无数个人和专业信息的容器。因此,优化能够检测入侵的系统(IDS-入侵检测系统)的性能是人们普遍关注的目标。本文提出了一种利用神经网络的泛化特性对黑客攻击进行分类的方法。特别地,在这项工作中,我们采用具有反向传播算法和S形激活函数的多层感知器(MLP)模型。我们分析了使用不同配置的神经网络,改变隐藏层的数量和训练时期的数量而获得的结果,以便获得较少数量的误报。所获得的结果将以攻击类型和训练时期的形式呈现,并且我们将展示针对DOS和Probe攻击进行的最佳分类。

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