TY - JOUR AU - Christianah, Abikoye Oluwakemi AU - Gyunka, Benjamin Aruwa AU - Oluwatobi, Akande Noah PY - 2020/06/17 Y2 - 2024/03/29 TI - Optimizing Android Malware Detection Via Ensemble Learning JF - International Journal of Interactive Mobile Technologies (iJIM) JA - Int. J. Interact. Mob. Technol. VL - 14 IS - 09 SE - Papers DO - 10.3991/ijim.v14i09.11548 UR - https://online-journals.org/index.php/i-jim/article/view/11548 SP - pp. 61-78 AB - <p>Android operating system has become very popular, with the highest market share, amongst all other mobile operating systems due to its open source nature and users friendliness. This has brought about an uncontrolled rise in malicious applications targeting the Android platform. Emerging trends of Android malware are employing highly sophisticated detection and analysis avoidance techniques such that the traditional signature-based detection methods have become less potent in their ability to detect new and unknown malware. Alternative approaches, such as the Machine learning techniques have taken the lead for timely zero-day anomaly detections.  The study aimed at developing an optimized Android malware detection model using ensemble learning technique. Random Forest, Support Vector Machine, and k-Nearest Neighbours were used to develop three distinct base models and their predictive results were further combined using Majority Vote combination function to produce an ensemble model. Reverse engineering procedure was employed to extract static features from large repository of malware samples and benign applications. WEKA 3.8.2 data mining suite was used to perform all the learning experiments. The results showed that Random Forest had a true positive rate of 97.9%, a false positive rate of 1.9% and was able to correctly classify instances with 98%, making it a strong base model. The ensemble model had a true positive rate of 98.1%, false positive rate of 1.8% and was able to correctly classify instances with 98.16%. The finding shows that, although the base learners had good detection results, the ensemble learner produced a better optimized detection model compared with the performances of those of the base learners.</p> ER -