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An Ensemble Voted Feature Selection Technique for Predictive Modeling of Malwares of Android

机译:集成投票特征选择技术,用于Android恶意软件的预测建模

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Each Android application requires accumulations of permissions in installation time and they are considered as the features which can be utilized in permission-based identification of Android malwares. Recently, ensemble feature selection techniques have received increasing attention over conventional techniques in different applications. In this work, a cluster based voted ensemble voted feature selection technique combining five base wrapper approaches of R libraries is projected for identifying most prominent set of features in the predictive modeling of Android malwares. The proposed method preserves both the desirable features of an ensemble feature selector, accuracy and diversity. Moreover, in this work, five different data partitioning ratios are considered and the impact of those ratios on predictive model are measured using coefficient of determination (r-square) and root mean square error. The proposed strategy has created significant better outcome in term of the number of selected features and classification accuracy.
机译:每个Android应用程序都需要在安装时积累权限,它们被视为可用于基于权限的Android恶意软件识别中的功能。近来,集成特征选择技术在不同应用中比常规技术受到越来越多的关注。在这项工作中,预计将结合R库的五种基本包装方法的基于集群的投票整体投票特征选择技术,以识别Android恶意软件的预测建模中最突出的特征集。所提出的方法保留了整体特征选择器的期望特征,准确性和多样性。此外,在这项工作中,考虑了五个不同的数据分配比率,并使用确定系数(r平方)和均方根误差测量了这些比率对预测模型的影响。拟议的策略在选定特征的数量和分类准确性方面创造了明显更好的结果。

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