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Network Intrusion Detection in the Presence of Traffic Sampling. Deep Learning and Machine Learning & Data Science &

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Jumabek/nids-with-sampling

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Investigating the Effect of Traffic Sampling on Machine Learning-Based Network Intrusion Detection Approaches

This repo contains implementation of ML experiments for NIDS in the presence of sampling Please note that repository is noisy, I am planning to clean it up in the future when I have some idle time or you can ask me to prepare you some specific part you are interested in.

Citing sampling+NIDS

If you find this repo useful in your research, please consider citing:

  @ARTICLE{9661375,  author={Alikhanov, Jumabek and Jang, Rhongho and Abuhamad, Mohammed and Mohaisen, David and Nyang, Daehun and Noh, Youngtae},  journal={IEEE Access},   title={Investigating the Effect of Traffic Sampling on Machine Learning-Based Network Intrusion Detection Approaches},   year={2022},  volume={10},  number={},  pages={5801-5823},  doi={10.1109/ACCESS.2021.3137318}}

Flow Feature Estimation Error of the samplers:

Related work on feature sestimation error of sFlow and SketchFlow samplers comparisons are experimented here: https://github.com/Jumabek/nids-with-sampling/blob/master/FlowFeatureEstimationOfTrafficSamplers4NIDS.pptx.pdf

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