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Malware classification using XGboost-Gradient Boosted Decision Tree

机译:使用XGBoost-梯​​度提升决策树的恶意软件分类

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In this industry 4.0 and digital era, we are more dependent on the use of communication and various transaction such as financial, exchange of information by various means. These transaction needs to be secure. Differentiation between the use of benign and malware is one way to make these transactions secure. We propose in this work a malware classification scheme that constructs a model using low-end computing resources and a very large balanced dataset for malware. To our knowledge, and search the complete dataset is used the first time with the XGBoost GBDT machine learning technique to build a classifier using low-end computing resources. The model is optimized for efficiency with the removal of noisy features by a reduction in features sets of the dataset by domain expertise in malware detection and feature importance functionality of XGboost and hyperparameter tuning. The model can be trained in low computation resources at less time in 1315 seconds with a reduction in feature set without affecting the performance for classification. The model gives improved performance for accuracy with the tuning of the hyperparameter and achieve higher accuracy of 98.5 and on par AUC of .9989.
机译:在这个行业4.0和数字时代,我们更依赖于使用沟通和各种交易,例如财务,通过各种手段交换信息。这些交易需要安全。使用良性和恶意软件之间的差异是使这些交易安全的一种方式。我们在这项工作中提出了一种恶意软件分类方案,用于使用低端计算资源和用于恶意软件的非常大的平衡数据集来构造模型。据我们所知,并搜索完整的数据集使用XGBoost GBDT机器学习技术首次使用使用低端计算资源构建分类器。该模型针对效率进行了优化,通过在恶意软件检测中通过域专业知识的数据集的特征套件减少了噪声功能,并具有XGBoost和HyperParameter调整的重要性功能。在1315秒的时间内,该模型可以在低计算资源中训练,并且在不影响分类的性能的情况下减少特征集的时间。该模型可提高性能,以便精确调整高参数,实现高精度为98.5和PAR AUC。

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