2023
DOI: 10.1088/1742-6596/2593/1/012007
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A network traffic identification method based on AutoEncoder - a feature selection algorithm

Tao Yang,
Rui Jiang,
HongLi Deng
et al.

Abstract: Traffic identification methods consider a large number of traffic features, resulting in low identification efficiency. To address the efficiency problem of traffic recognition, this paper proposes an efficient network traffic recognition method, AutoEncoder-based traffic recognition (AE-NTI). The method first preprocesses the original dataset and converts it into a two-dimensional grayscale image. Then, feature selection is performed by an improved feature selection algorithm based on AutoEncoder. The algorit… Show more

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References 9 publications
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