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A temporal-aware signature extraction method using sliding-window mechanism for scalable, cost-effective and accurate traffic classification

机译:一种使用滑动窗口机制的时间感知签名提取方法,可扩展,具有成本效益和准确的流量分类

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Payload-based traffic classification use a subset of highly correlated payload bytes as signature to identify unlabeled traffic classes. However, these correlations diminish over time due to application behavioural changes, resulting in lower true positive in subsequent classifications. The short time-to-live of signatures means that signatures can become outdated quickly, and new set of signatures are needed to preserve classification accuracy. Extracting new signatures is computational expensive and not scalable to these continuous behavioural changes. This paper proposed a lightweight automatic signature extraction method that adaptively recalibrate the signature sets to reflect behavioural transitions using sliding-window mechanism. The algorithm use Leviathan Distance to detect the optimal number of payload bytes (K) needed to uniquely discriminate traffic classes. Sliding-k then shrink or expand the k value of the base signature to address for temporal changes instead of rebuilding new signatures completely. The experimental results showed that sliding-k is effective in reducing signature length while preserving classification accuracy for continuous traffic classification.
机译:基于有效负载的流量分类使用高度相关的有效载荷字节的子集作为签名以识别未标记的流量类。然而,由于应用行为变化,这些相关性随着时间的推移而减少,导致随后的分类中的较低真正的正面。签名的短暂时间意味着签名可以快速过时,并且需要新的签名来保持分类准确性。提取新签名是计算昂贵且不可扩展到这些连续的行为变化。本文提出了一种轻量级自动签名提取方法,可自适应地重新校准签名集,以使用滑动窗机制反映行为转换。该算法使用LeviaThan距离检测唯一区分流量类所需的有效载荷字节(k)的最佳数量。滑动-k然后缩小或展开基本签名的k值以解决时间变化,而不是完全重建新签名。实验结果表明,滑动-K在降低签名长度的同时有效,同时保持连续交通分类的分类精度。

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