The document presents a machine learning-based ensemble classifier for detecting Android malware, specifically an algorithm named SE-AAMD that utilizes a stacking ensemble approach. The proposed method involves selecting only the highest accuracy models to improve malware detection performance, and experiments conducted with different datasets demonstrated its effectiveness. The study indicates that the ensemble model outperforms existing methods and enhances security for Android devices and applications.