Using Federated Learning on Malware Classification

Kuang-yao Lin, Wei-Ren Huang
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引用次数: 19

Abstract

In recent years, everything has been more and more systematic, and it would generate many cyber security issues. One of the most important of these is the malware. Modern malware has switched to a high-growth phase. According to the AV-TEST Institute showed that there are over 350,000 new malicious programs (malware) and potentially unwanted applications (PUA) be registered every day. This threat was presented and discussed in the present paper. In addition, we also considered data privacy by using federated learning. Feature extraction can be performed based on malware. The proposed method achieves very high accuracy (≈0.9167) on the dataset provided by VirusTotal.
联邦学习在恶意软件分类中的应用
近年来,一切都变得越来越系统化,这会产生很多网络安全问题。其中最重要的是恶意软件。现代恶意软件已进入高增长阶段。根据AV-TEST研究所显示,每天有超过350,000个新的恶意程序(恶意软件)和潜在不需要的应用程序(PUA)被注册。本文提出并讨论了这一威胁。此外,我们还通过使用联邦学习来考虑数据隐私。特征提取可以基于恶意软件执行。该方法在VirusTotal提供的数据集上达到了非常高的准确率(≈0.9167)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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