恶意软件检测中梯度增强决策树模型性能维护的实证度量

Colin Galen, Robert Steele
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引用次数: 4

摘要

对于有效的、基于现实世界机器学习(ML)或基于人工智能(AI)的恶意软件检测系统来说,重要的是模型在训练时既表现出高判别性能,又在训练后表现出高水平的性能维护。也就是说,当模型遇到以前未见过的恶意软件威胁时,随着时间的推移,它们的性能下降速度缓慢是理想的。尽管在基于ml的恶意软件检测方面做了大量工作,但在现实世界数据集上对恶意软件检测模型经验性能维护的研究尚未得到广泛解决。在这项工作中,我们使用一个大型的、一百万个实例恶意软件-好软件数据集来评估模型的性能维护特征,这些数据集跨越了一年内收集的可执行文件。基于梯度增强决策树模型的优异性能,我们进一步研究了这类模型,并演示了性能和性能维护优于先前基于ml的恶意软件检测文献中的模型。考虑到实际使用的可执行文件数据集的大小,对模型性能维护的见解可能对实际使用的基于ml的恶意软件检测系统具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical Measurement of Performance Maintenance of Gradient Boosted Decision Tree Models for Malware Detection
Important for effective, real-world machine learning (ML) or artificial intelligence (AI)-based malware detection systems is that models demonstrate both high discriminative performance at time of training and also demonstrate a high level of performance maintenance over time subsequent to training. That is, it is desirable that the models have a slow rate of performance decline over time as they encounter previously unseen malware threats. The study of malware detection model empirical performance maintenance on real-world data sets has not been widely addressed despite significant work on ML-based malware detection in general. In this work, we evaluate performance maintenance characteristics of models using a large, one million instance malware-goodware dataset spanning executables collected over one year in duration. Based on the outperformance of gradient boosted decision tree-based models, we investigate this category of model further and demonstrate models with performance and performance maintenance superior to that demonstrated in the previous ML-based malware detection literature. Given the large size of the dataset of real-world executables utilized, the insights into model performance maintenance may have valuable implications for real-world ML-based malware detection systems.
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