基于神经网络的恶意软件检测

K. S., Aravind Raj S, S. S, Adhish M, K. M
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引用次数: 0

摘要

恶意攻击、恶意软件和勒索软件家族给网络安全带来了严重的安全挑战,它们有可能对广泛部门和企业的计算机系统、数据中心、在线和移动应用程序造成灾难性的危害。软件(恶意软件)已经出现并以多种形式发展,并且变得越来越复杂。犯罪分子将其作为渗透、窃取或伪造信息的工具,给个人、企业造成巨大损失,甚至威胁到国家安全。这是一种复杂而多样的威胁,影响全球用户,通过锁定系统屏幕或加密和加密用户文件来阻止他们访问他们的系统或数据,除非支付赎金。传统的反勒索软件技术无法对抗新开发的复杂攻击。因此,传统和基于神经网络的设计等尖端方法在创建独特的勒索软件解决方案方面非常有益。在这个项目中,提出了一个基于特征选择的勒索软件检测和预防系统,该系统使用深度学习方法,包括基于神经网络的设计。我们在特征样本上使用多层感知器分类器对恶意软件进行分类。然后,为了评估我们提出的技术,我们在单个勒索软件数据集上进行了所有实验。在准确度和精度评级方面,实验结果表明,MLP分类器优于其他技术。关键词:多层感知器,深度学习,预处理,预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malware Detection Using Neural Network
Malicious assaults, malware, and ransomware families offer serious security challenges for cyber security, and they have the potential to cause catastrophic harm to computer systems, data centres, online, and mobile applications across a wide range of sectors and enterprises. Software (malware) has appeared and is growing in many formats and is becoming increasingly sophisticated. Criminals use them as a tool to infiltrate, steal or falsify information, causing huge damage to individuals, businesses and even threatening national security. It is a complex and varied threat that affects users globally, preventing them from accessing their system or data by locking the system's screen or encrypting and encrypting the users' files unless a ransom is paid. Traditional anti-ransomware technologies are unable to combat newly developed sophisticated assaults. As a result, cutting-edge approaches such as conventional and neural network-based designs can be very beneficial in the creation of unique ransomware solutions. In this project, propose a feature selection-based system for ransomware detection and prevention that uses deep learning methods, including neural network-based designs. We employed Multi-layer Perceptron classifiers on a sample of characteristics to classify malware. Then, to evaluate our proposed technique, we conducted all of the experiments on a single ransomware dataset. In terms of accuracy and precision ratings, the experimental findings show that MLP classifiers outperform other techniques. Key Word: Multi layer perceptron, Deep learning, Pre processing, Prediction.
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