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Yet another research on GANs in cybersecurity
 
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Faculty of Cybernetics, Military University of Technology, Warsaw
 
 
Publication date: 2023-02-20
 
 
Cybersecurity and Law 2023;9(1):61-72
 
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ABSTRACT
Deep learning algorithms have achieved remarkable results in a wide range of tasks, including image classification, language translation, speech recognition, and cybersecurity. These algorithms can learn complex patterns and relationships from large amounts of data, making them highly effective for many applications. However, it is important to recognize that models built using deep learning are not fool proof and can be fooled by carefully crafted input samples. This paper presents the results of a study to explore the use of Generative Adversarial Networks (GANs) in cyber security. The results obtained confirm that GANs enable the generation of synthetic malware samples that can be used to mislead a classification model.
 
REFERENCES (6)
1.
Bozkir A.S., Cankaya, A.O., Aydos M., Utilization and Comparision of Convolutional Neural Networks in Malware Recognition, 2019, https://www.researchgate.net/p... [access: 4.01.2023].
 
2.
He K., Zhang X., Ren S., Sun J., Deep Residual Learning for Image Recognition, 2015, https://arxiv.org/pdf/1512.033... [access: 4.01.2023].
 
3.
Karras T. et al., Training Generative Adversarial Networks with Limited Data, 2020, https://arxiv.org/pdf/2006.066... [access: 4.01.2023].
 
4.
Radford A., Metz L., Chintala S., Unsupervised Represenation Learning With Deep Convolutional Generative Aadversarial Networks, 2016, https://arxiv.org/pdf/1511.064... [access:4.01.2023].
 
5.
Salian I., NVIDIA Research Achieves AI Training Breakthrough, 2020, https://blogs.nvidia.com/blog/... [access: 4.01.2023].
 
6.
Tan M., Le Q., EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks, 2019, https://arxiv.org/pdf/1905.119... [access: 4.01.2023].
 
ISSN:2658-1493
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