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Journal of Applied Mathematics and Computation

ISSN Print: 2576-0645 Downloads: 145459 Total View: 1795586
Frequency: quarterly ISSN Online: 2576-0653 CODEN: JAMCEZ
Email: jamc@hillpublisher.com
Article Open Access http://dx.doi.org/10.26855/jamc.2022.12.018

Research Trends in Adversarial Machine Learning

Jihang Jiang

Nanjing University of Information Engineering, Nanjing, Jiangsu 210044, China.

*Corresponding author: Jihang Jiang

Published: January 14,2023

Abstract

The field of machine learning artificial intelligence algorithms has made significant progress. With the development of the times, the security brought by machine learning is worthy of consideration, and adversarial machine learning improves the reliability of machine learning algorithms through continuous training algorithms. Hence, the research of adversarial machine learning based on network security is well worth exploring.

References

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[3] Liu QX, Wang JunN, Yin J, et al. application of adversarial machine learning in network intrusion detection [J]. Journal of Communication, 2021, 042(011):1-12.

[4] Jiang Yan, Zhang Liguo. A review of adversarial attack and defense methods for deep learning models [J]. Computer Engineering, 2021, 47(1):11.

[5] Xiaoyong Yuan, Pan He, Qile Zhu, et al. Adversarial Examples: Attacks and Defenses for Deep Learning, 2017.

How to cite this paper

Research Trends in Adversarial Machine Learning

How to cite this paper:  Jihang Jiang. (2022) Research Trends in Adversarial Machine Learning. Journal of Applied Mathematics and Computation6(4), 535-539.

DOI: http://dx.doi.org/10.26855/jamc.2022.12.018