针对不平衡数据集使用成本敏感学习提高恶意软件分类器性能

Ikram Ben Abdel Ouahab, Lotfi Elaachak, M. Bouhorma
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引用次数: 0

摘要

近年来,恶意软件可视化在网络安全领域的恶意软件分类中变得非常流行。现有的恶意软件功能可以很容易地识别已经检测到的已知恶意软件,但它们不能准确地识别新的和不常见的恶意软件。此外,深度学习算法在恶意软件分类主题方面显示出其强大的能力。然而,我们发现使用不平衡数据;Malimg数据库包含25个恶意软件家族,每个类的图像数量不同。为了解决这些问题,本文提出了一种有效的基于成本敏感深度学习的恶意软件分类器。在对不平衡数据进行分类时,有些类的准确率低于其他类。成本敏感是为了解决这个问题,但是在我们的25个类的例子中,经典的成本敏感权重并不能有效地给予所有类同等的关注。提出的方法提高了恶意软件分类的性能,我们使用两个卷积神经网络模型,基于损失、准确性、召回率和精度,使用函数和子类编程技术来证明这种改进。
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Improve malware classifiers performance using cost-sensitive learning for imbalanced dataset
In recent times, malware visualization has become very popular for malwareclassification in cybersecurity. Existing malware features can easily identifyknown malware that have been already detected, but they cannot identify newand infrequent malwares accurately. Moreover, deep learning algorithmsshow their power in term of malware classification topic. However, we foundthe use of imbalanced data; the Malimg database which contains 25 malwarefamilies don’t have same or near number of images per class. To address theseissues, this paper proposes an effective malware classifier, based on costsensitive deep learning. When performing classification on imbalanced data, some classes get less accuracy than others. Cost-sensitive is meant to solve this issue, however in our case of 25 classes, classical cost-sensitive weights wasn’t effective is giving equal attention to all classes. The proposed approach improves the performance of malware classification, and we demonstrate this improvement using two Convolutional Neural Network models using functional and subclassing programming techniques, based on loss, accuracy, recall and precision.
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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