Analysis of neural network detectors for network attacks

Author:

Zou Qingtian1,Zhang Lan1,Singhal Anoop2,Sun Xiaoyan3,Liu Peng1

Affiliation:

1. College of Information Sciences and Technology, The Pennsylvania State University, PA, USA

2. Security Test, Validation and Measurement Group, National Institute of Standards and Technology, MD, USA

3. Department of Computer Science, Worcester Polytechnic Institute, MA, USA

Abstract

While network attacks play a critical role in many advanced persistent threat (APT) campaigns, an arms race exists between the network defenders and the adversary: to make APT campaigns stealthy, the adversary is strongly motivated to evade the detection system. However, new studies have shown that neural network is likely a game-changer in the arms race: neural network could be applied to achieve accurate, signature-free, and low-false-alarm-rate detection. In this work, we investigate whether the adversary could fight back during the next phase of the arms race. In particular, noticing that none of the existing adversarial example generation methods could generate malicious packets (and sessions) that can simultaneously compromise the target machine and evade the neural network detection model, we propose a novel attack method to achieve this goal. We have designed and implemented the new attack. We have also used Address Resolution Protocol (ARP) Poisoning and Domain Name System (DNS) Cache Poisoning as the case study to demonstrate the effectiveness of the proposed attack.

Publisher

IOS Press

Subject

Computer Networks and Communications,Hardware and Architecture,Safety, Risk, Reliability and Quality,Software

Reference41 articles.

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4. W. Brendel, J. Rauber and M. Bethge, Decision-Based Adversarial Attacks: Reliable Attacks Against Black-Box Machine Learning Models, 2018, arXiv:1712.04248.

5. Towards Evaluating the Robustness of Neural Networks

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