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ACAS

机译:ACAS

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摘要

An accurate mapping of traffic to applications is important for a broad range of network management and measurement tasks. Internet applications have traditionally been identified using well-known default server network-port numbers in the TCP or UDP headers. However this approach has become increasingly inaccurate. An alternate, more accurate technique is to use specific application-level features in the protocol exchange to guide the identification. Unfortunately deriving the signatures manually is very time consuming and difficult.In this paper, we explore automatically extracting application signatures from IP traffic payload content. In particular we apply three statistical machine learning algorithms to automatically identify signatures for a range of applications. The results indicate that this approach is highly accurate and scales to allow online application identification on high speed links. We also discovered that content signatures still work in the presence of encryption. In these cases we were able to derive content signature for unencrypted handshakes negotiating the encryption parameters of a particular connection.
机译:流量到应用程序的准确映射对于广泛的网络管理和测量任务很重要。传统上,Internet应用程序是使用TCP或UDP标头中的众所周知的默认服务器网络端口号标识的。但是,这种方法变得越来越不准确。另一种更准确的技术是在协议交换中使用特定的应用程序级功能来引导标识。不幸的是,手动获取签名非常耗时且困难。在本文中,我们探索了从IP流量有效载荷内容中自动提取应用签名的方法。特别是,我们应用了三种统计机器学习算法来自动识别一系列应用程序的签名。结果表明,该方法非常准确,并且可以扩展以允许在高速链接上进行在线应用程序标识。我们还发现,内容签名在存在加密的情况下仍然可以正常工作。在这些情况下,我们能够通过协商特定连接的加密参数来获得未加密握手的内容签名。

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