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Malicious Codes Detection Based on Ensemble Learning

机译:基于集合学习的恶意代码检测

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摘要

As malicious codes become more complex and sophisticated, the scanning detection method is no longer able to detect various forms of viruses effectively. In this paper, we explore solutions based on multiple classifiers fusion and not strictly dependent on certain malicious code. Motivated by the standard signature-based technique for detecting viruses, we explore the idea of automatically detecting malicious code using the n-gram analysis. After selecting features based on information gain, the probabilistic neural network is used in the process of building and testing the proposed multi-classifiers system. Each one of the individual classifiers is used to produce classification evidences. Then these evidences are combined by the Dempster-Shafer combination rules to form the final classification results for new malicious code. Experimental results produced by the proposed detection engine shows improvement compared to the classification results produced by the individual classifiers.
机译:随着恶意代码变得越来越复杂和复杂,扫描检测方法不再能够有效检测各种形式的病毒。在本文中,我们探索了基于多个分类器融合且不严格依赖某些恶意代码的解决方案。受基于标准签名的检测病毒技术的启发,我们探索了使用n-gram分析自动检测恶意代码的想法。在基于信息增益选择特征之后,将概率神经网络用于构建和测试所提出的多分类器系统。各个分类器中的每一个用于产生分类证据。然后,将这些证据通过Dempster-Shafer组合规则进行组合,以形成新恶意代码的最终分类结果。与单个分类器产生的分类结果相比,所提出的检测引擎产生的实验结果显示出改进。

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