基于深度学习方法的恶意软件检测

Ümit Emre Köse, R. Samet
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引用次数: 1

摘要

目前,人们对恶意软件的检测进行了大量的研究。采用静态、动态和混合分析方法收集数据进行恶意软件检测。使用这些方法,通过在不运行恶意软件的情况下读取文件中的信息,或通过检查其影响的位置(如运行时网络上的更改、api调用)来创建数据。随着当今技术的进步,这些数据与机器学习算法或深度学习架构相结合,以检测恶意软件。在包含恶意软件的数据集上,分别使用CNN和ANN神经网络进行检测。接近1万个数据集的成功率接近99%,而接近5万个数据集的成功率接近97%。在我们的研究中,近5万个数据集的成功率达到了98.1%。在所研究的研究中,恶意软件检测的准确性高于使用接近50,000个数据集的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Malware with Deep Learning Method
Nowadays, many studies are done on the detection of malicious software. Static, Dynamic and Hybrid analysis methods are used to collect data for malware detection. With these methods, data is created by reading the information in the file without running the malicious software, or by examining the places it affects such as changes on the network at runtime, api calls. With the advancement of today’s technology, these data are combined with Machine learning algorithms or architectures of Deep Learning to detect malware. Detection of malicious software On the data set containing malicious software, it was detected by using CNN and ANN neural networks. While close to 10,000 datasets showed a success rate of close to 99%, datasets close to 50,000 achieved close to 97% success. In our study, a success rate of 98.1% was achieved for nearly 50,000 data sets. Among the studies researched, malware detection was made with higher accuracy than the studies using data sets closest to 50,000.
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