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MACHINE LEARNING BASED CLASSIFIER FOR SERVICE FUNCTION CHAINS

机译:基于机器学习的服务功能链式

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Using service function chains, Internet Service Providers can customize the use of service functions that process the network flows belonging to their customers. Each network flow is injected into a service chain according to the flow features. Since most of the malicious applications try not to get the proper analysis by imitating some valid and famous applications, classification based on simple flow features may waste processing power by using inappropriate service chains for evasive flows. In this paper, we have explored an application-aware classification approach using machine learning methods. Using CatBoost as a machine learning method, a model is created and used for traffic classification. We have provided some statistical reports on how this approach is compared with simple flow feature-based approaches in malicious environments and how feature selection can impact classification correctness. Choosing the most suitable number of features at the right time can beat traditional approaches in classification quality and provide better results in the service function chaining environment.
机译:使用服务功能链,Internet服务提供商可以自定义使用处理属于客户的网络流的服务功能。根据流量功能将每个网络流注入服务链中。由于大多数恶意应用程序通过模仿一些有效和着名的应用程序,因此基于简单流量的分类可以通过使用不适当的服务链来浪费处理能力以供避免流动。在本文中,我们探讨了使用机器学习方法的应用感知分类方法。使用CATboost作为机器学习方法,创建模型并用于流量分类。我们提供了一些关于这种方法如何与恶意环境中的简单流程功能的方法进行了一些统计报告,以及特征选择如何影响分类正确性。在合适的时间选择最合适的特征可以在分类质量方面击败传统方法,并在服务功能链接环境中提供更好的结果。

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