基于自动学习的保护android环境的SDN策略生成

Nicolas Schnepf, Rémi Badonnel, Abdelkader Lahmadi, Stephan Merz
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引用次数: 7

摘要

软件定义的网络为保护最终用户及其应用程序提供了新的机会。在这种情况下,可以构建专用链来结合不同的安全功能,例如防火墙、入侵检测系统和防止数据泄漏的服务。要配置这些安全链,必须有一个最终用户应用程序在访问网络时显示的模式的适当模型。我们提出了一种使用生成有限状态模型的算法来学习终端应用程序的网络行为的自动化策略。这些模型可以用于推断SDN策略,确保应用程序尊重观察到的行为:这些策略可以以动态和灵活的方式正式验证并部署在SDN基础设施上。我们的解决方案通常是作为扩展Synaptic验证包的Python脚本集合来实现的。我们的策略的性能通过广泛的实验进行了评估,并与Synoptic和Invarimint自动机学习算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generation of SDN policies for protecting android environments based on automata learning
Software-defined networking offers new opportu-nities for protecting end users and their applications. In that context, dedicated chains can be built to combine different security functions, such as firewalls, intrusion detection systems and services for preventing data leakage. To configure these security chains, it is important to have an adequate model of the patterns that end user applications exhibit when accessing the network. We propose an automated strategy for learning the networking behavior of end applications using algorithms for generating finite state models. These models can be exploited for inferring SDN policies ensuring that applications respect the observed behavior: such policies can be formally verified and deployed on SDN infrastructures in a dynamic and flexible manner. Our solution is prototypically implemented as a collection of Python scripts that extend our Synaptic verification package. The performance of our strategy is evaluated through extensive experimentations and is compared to the Synoptic and Invarimint automata learning algorithms.
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