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An optimal deep learning-based framework for the detection and classification of android malware

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 The use of smartphones is increasing rapidly and the malicious intrusions associated with it have become a challenging task that needs to be resolved. A secure and effective technique is needed to prevent breaches and detect malicious applications. Through deep learning methods and neural networks, the earliest detection and classification of malware can be performed. Detection of Android malware is the process to identify malicious attackers and through the classification method of malware, the type is categorized as adware, ransomware, SMS malware, and scareware. Since there were several techniques employed so far for malware detection and classification, there were some limitations like a reduced rate of accuracy and so on. To overcome these limitations, a deep learning-based automated process is employed to identify the malware. In this paper, initially, the datasets are collected, and through the preprocessing method, the duplicate and noisy data are removed to improve accuracy. Then the separated malware and benign dataset from the preprocessing phase is dealt with in feature selection. The reliable features are extracted in this process by Meta-Heuristic Artificial Jellyfish Search Optimizer (MH-AJSO). Further by the process of classification, the type of malware is categorized. The classification method is performed by the proposed Dense Dilated ResNet101 (DDResNet101) classifier. According to the type of malware the breach is prevented and secured on the android device. Although several methods of malware detection are found in the android platform the accuracy is effectively derived in our proposed system. Various performance analysis is performed to compare the robustness of detection. The results show that better accuracy of 98% is achieved in the proposed model with effectiveness for identifying the malware and thereby breaches and intrusion can be prevented.
Title: An optimal deep learning-based framework for the detection and classification of android malware
Description:
 The use of smartphones is increasing rapidly and the malicious intrusions associated with it have become a challenging task that needs to be resolved.
A secure and effective technique is needed to prevent breaches and detect malicious applications.
Through deep learning methods and neural networks, the earliest detection and classification of malware can be performed.
Detection of Android malware is the process to identify malicious attackers and through the classification method of malware, the type is categorized as adware, ransomware, SMS malware, and scareware.
Since there were several techniques employed so far for malware detection and classification, there were some limitations like a reduced rate of accuracy and so on.
To overcome these limitations, a deep learning-based automated process is employed to identify the malware.
In this paper, initially, the datasets are collected, and through the preprocessing method, the duplicate and noisy data are removed to improve accuracy.
Then the separated malware and benign dataset from the preprocessing phase is dealt with in feature selection.
The reliable features are extracted in this process by Meta-Heuristic Artificial Jellyfish Search Optimizer (MH-AJSO).
Further by the process of classification, the type of malware is categorized.
The classification method is performed by the proposed Dense Dilated ResNet101 (DDResNet101) classifier.
According to the type of malware the breach is prevented and secured on the android device.
Although several methods of malware detection are found in the android platform the accuracy is effectively derived in our proposed system.
Various performance analysis is performed to compare the robustness of detection.
The results show that better accuracy of 98% is achieved in the proposed model with effectiveness for identifying the malware and thereby breaches and intrusion can be prevented.

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