Due to the completely open-source nature of Android, the exploitable vulnerability of malware attacks is increasing. Machine learning, leading to a great evolution in Android malware detection in recent years, is typically applied in the classification phase. Since the correlation between features is ignored in some traditional ranking-based feature selection algorithms, applying wrapper-based feature selection models is a topic worth investigating. Though considering the correlation between features, wrapper-based approaches are time-consuming for exploring all possible valid feature subsets when processing a large number of Android features. To reduce the computational expense of wrapper-based feature selection, a framework named DroidRL is proposed. The framework deploys DDQN algorithm to obtain a subset of features which can be used for effective malware classification. To select a valid subset of features over a larger range, the exploration-exploitation policy is applied in the model training phase. The recurrent neural network (RNN) is used as the decision network of DDQN to give the framework the ability to sequentially select features. Word embedding is applied for feature representation to enhance the framework's ability to find the semantic relevance of features. The framework's feature selection exhibits high performance without any human intervention and can be ported to other feature selection tasks with minor changes. The experiment results show a significant effect when using the Random Forest as DroidRL's classifier, which reaches 95.6% accuracy with only 24 features selected.
翻译:由于Android的完全开放源码性质,恶意袭击的可利用脆弱性正在增加。机器学习导致近年来在Android 恶意软件检测中发生重大演变,因此通常在分类阶段应用。由于一些传统的基于排序的特征选择算法忽视了各特征之间的相互关系,因此,应用基于包装的特征选择模型是一个值得调查的专题。虽然考虑到各特征之间的相互关系,但基于包装的方法对于在处理大量Android特征时探索所有可能的有效特征子集耗时耗时。为了降低基于包装的特征选择的计算费用,提议了一个名为DroidRL的框架。框架部署DDQN 算法以获取一系列可用于有效的恶意软件分类的特征。为了在范围更广的范围内选择一个有效的特征组合,在模型培训阶段应用勘探-开发政策。经常的神经网络(RNNN)被用作DQN的决定网络,以便让框架能够按顺序选择特性。为特征展示语言嵌嵌入工具,以加强框架的功能,而无需在选择高端标准时找到精度的精度的精度。森林特性选择框架可以显示精度性功能的精度,而显示精度选择其他功能的精度性功能的精度,在测试上,可以显示精度的精度上性功能的精度的性性特性的精度选择性能。