利用机器学习算法实现动态扫描器保护文档免受勒索软件侵害

S. R, K. R, J. B.
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引用次数: 12

摘要

如今,恶意软件分析和检测是当今世界最需要的工具。恶意软件攻击正在各个领域迅速增加,特别是在企业部门。虽然有很多工具可用于检测恶意软件,但最好的解决方案将是使用机器学习算法。利用这种方法,可以用不同的算法对模型进行训练。每种算法产生不同的准确率。实验结果表明,随机森林算法是最佳算法。提供给模型的数据集包含不同的特征,如MD5、DLL特征、代码大小等。利用该样本数据,用准确率最高的算法对模型进行训练。然后保存训练好的机器学习模型以供大多数脚本稍后使用。本文的主要成果是利用最好的技术和较高的准确率,在恶意软件影响系统之前找到一种检测方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Dynamic Scanner to Protect the Documents from Ransomware using Machine Learning Algorithms
Now-a-days malware analysis and detection is the most needed tool in today’s world. The malware attack is rapidly increasing in all areas especially in corporate sectors. Though there are plenty of tools were available to detect the malwares, the best solution will be the one which uses the machine learning algorithms. By using this, the model can be trained with different algorithm. Each algorithm produces different accuracy rate. From the experimentation, it is found that Random Forest algorithm is chosen as the best algorithm. The datasets that were fed to the model contains different features such as MD5, DLL Characteristics, Size Of Code etc. With this sample data, the model gets trained with the algorithm that has the best accuracy rate. The trained machine learning model is then saved for later use by the most script. The key achievements of this proposed work is to find a solution to detect the malwares before it affects the system by using the best techniques and by giving the high accuracy rate.
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