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首页> 外文期刊>IEEE communications letters >Bits Learning: User-Adjustable Privacy Versus Accuracy in Internet Traffic Classification
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Bits Learning: User-Adjustable Privacy Versus Accuracy in Internet Traffic Classification

机译:位学习:互联网流量分类中用户可调整的隐私与准确性

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During the past decade, a great number of machine learning (ML)-based methods have been studied for accurate traffic classification. Flow features such as the discretizations of the first five packet sizes (PS) and flow ports (FP) are considered the best discriminators for per-flow classification. For the first time, this letter proposes to treat the first -bits of a flow (BitFlow) as features and compares its overall performance with the well-known ACAS (automated construction of application signatures) that takes the first -bytes of a flow (ByteFlow) as features. The results show that BitFlow achieves not only a higher classification accuracy but also 1–3 orders of magnitude faster speed than ACAS in training and classifying. More importantly, this letter also proposes to treat the first -bits of each of the first few packet payloads (BitPack) as features, which enables a user-adjustable tradeoff between user privacy protection and classification accuracy maximization. The experiments show that BitPack can significantly outperform BitFlow, PS, and FP.
机译:在过去的十年中,已经研究了许多基于机器学习(ML)的方法来进行准确的流量分类。流特征,例如前五个数据包大小(PS)和流端口(FP)的离散化,被认为是按流分类的最佳区分器。这封信首次建议将流的第一个位(BitFlow)视为特征,并将其总体性能与采用流的第一个字节的众所周知的ACAS(应用程序签名的自动构造)进行比较( ByteFlow)作为功能。结果表明,在训练和分类中,BitFlow不仅比ACAS具有更高的分类精度,而且还比ACAS快1-3个数量级。更重要的是,这封信还建议将前几个数据包有效载荷(BitPack)中的每一个的首位都视为特征,从而可以在用户隐私保护和分类精度最大化之间实现用户可调的权衡。实验表明,BitPack可以大大胜过BitFlow,PS和FP。

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