Artificial Intelligence and Malicious Code Detection

Authors

  • Chenhui Zhong

DOI:

https://doi.org/10.54097/KfTB4r8r

Keywords:

Cybersecurity, Malicious Code, Cuckoo Sandbox, CNN

Abstract

Malicious software has become a critical cybersecurity issue due to the increasing number of threats it poses to devices and internet environments. Traditional static scanning techniques and behavior-based malware detection methods have limitations in meeting the new requirements in information security due to high false positives and false negatives. In this work, we propose a CNN convolutional neural network-based method for detecting malicious code. Practical operations were conducted using the Cuckoo sandbox system, and Python programs were utilized to preprocess analytical reports. This article presents the construction of a deep learning training model for CNN designed to identify malicious code. The model is compared with machine learning and general antivirus tools for comprehensive evaluation. Experimental verification shows that our proposed method exhibits greater advantages in comparison and achieved excellent detection results with higher feasibility. The research significance of this work is highlighted as malicious software has become a core issue in cybersecurity. The method proposed in this article provides powerful support for addressing new needs in information security. This paper emphasizes the importance of utilizing CNN-based methods in detecting malware, which can better address the limitations of traditional detection techniques. Overall, this work provides an effective solution to detect malicious code and addresses a critical cybersecurity issue.

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References

Huang, K. (2023) Adversarial Research on Visual Detection Methods for Malicious Code. Thesis of Guizhou Normal University, 63.

Wei, L., Shi, C., Xu, F., et al. (2022) Static Detection Technique for Malicious Code Based on Feature Sequences. Cyber Security and Data Governance, 41(10): 56-64.

Long, M., Kang, H. (2023) Malicious Code Detection Method for Industrial Internet Based on Code Visualization. Computer Integrated Manufacturing System, 14.

Liu, Y., Li, J., Ou, Z., et al. (2022) Adversarial Training-Driven Enhancement Method for Malicious Code Detection. Journal of Communications. 43(09): 169-180.

Shen, G. (2023) Malicious Code Detection Based on Squeeze-Excitation Networks. Thesis of Minnan Normal University, 09:63.

Jiang, R. (2023) Research on Malicious Code Detection Based on Neural Networks. Thesis of Southwest University of Science and Technology, 54.

Xin, W. (2023) Research on Malicious Code Detection Technology Based on Word Embedding and API Calls. Thesis of North University of China, 81.

Cai, D. (2022) Malicious Code Detection Method for Network Communication Based on Texture Features. Digital Communication World, 06: 79-81.

Yang, Y. (2023) Research on Malicious Code Detection Based on Feature Fusion and Machine Learning. Thesis of Hebei University of Architecture, 02:61.

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Published

07-01-2024

Issue

Section

Articles

How to Cite

Zhong, C. (2024). Artificial Intelligence and Malicious Code Detection. Frontiers in Computing and Intelligent Systems, 6(3), 70-74. https://doi.org/10.54097/KfTB4r8r