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I-MAD: Interpretable malware detector using Galaxy Transformer

机译:I-MAD:使用Galaxy Transformer的可解释恶意软件探测器

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摘要

Malware currently presents a number of serious threats to computer users. Signature-based malware detection methods are limited in detecting new malware samples that are significantly different from known ones. Therefore, machine learning-based methods have been proposed, but there are two challenges these methods face. The first is to model the full semantics behind the assembly code of malware. The second challenge is to provide interpretable results while keeping excellent detection performance. In this paper, we propose an Interpretable MAlware Detector (I-MAD) that outperforms state-of-the-art static malware detection models regarding accuracy with excellent interpretability. To improve the detection performance, I-MAD incorporates a novel network component called the Galaxy Transformer network that can understand assembly code at the basic block, function, and executable levels. It also incorporates our proposed interpretable feed-forward neural network to provide interpretations for its detection results by quantifying the impact of each feature with respect to the prediction. Experiment results show that our model significantly outperforms existing state-of-the-art static malware detection models and presents meaningful interpretations.
机译:恶意软件目前为计算机用户提供了许多严重威胁。基于签名的恶意软件检测方法有限于检测与已知的新的恶意软件样本有显着不同的样本。因此,已经提出了基于机器学习的方法,但这些方法面临了两个挑战。第一个是模拟恶意软件汇编代码后面的完整语义。第二个挑战是提供可解释的结果,同时保持出色的检测性能。在本文中,我们提出了一种可解释的恶意软件探测器(I-MAD),其优于最先进的静态恶意软件检测模型,其具有卓越的解释性。为了提高检测性能,I-MAD包含一个名为Galaxy变压器网络的新型网络组件,可以了解基本块,功能和可执行级别的汇编代码。它还包括我们所提出的可解释的前馈神经网络,以通过量化每个特征对预测的影响来提供其检测结果的解释。实验结果表明,我们的模型显着优于现有的最先进的静态恶意软件检测模型,并提出了有意义的解释。

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