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A Multimodal Malware Detection Technique for Android IoT Devices Using Various Features.

IEEE Access(2019)

Univ Elect Sci & Technol China

Cited 149|Views19
Abstract
Internet of things (IoT) is revolutionizing this world with its evolving applications in various aspects of life such as sensing, healthcare, remote monitoring, and so on. Android devices and applications are working hand to hand to realize dreams of the IoT. Recently, there is a rapid increase in threats and malware attacks on Android-based devices. Moreover, due to extensive exploitation of the Android platform in the IoT devices creates a task challenging of securing such kind of malware activities. This paper presents a novel framework that combines the advantages of both machine learning techniques and blockchain technology to improve the malware detection for Android IoT devices. The proposed technique is implemented using a sequential approach, which includes clustering, classification, and blockchain. Machine learning automatically extracts the malware information using clustering and classification technique and store the information into the blockchain. Thereby, all malware information stored in the blockchain history can be communicated through the network, and therefore any latest malware can be detected effectively. The implementation of the clustering technique includes calculation of weights for each feature set, the development of parametric study for optimization and simultaneously iterative reduction of unnecessary features having small weights. The classification algorithm is implemented to extract the various features of Android malware using naive Bayes classifier. Moreover, the naive Bayes classifier is based on decision trees for extracting more important features to provide classification and regression for achieving high accuracy and robustness. Finally, our proposed framework uses the permissioned blockchain to store authentic information of extracted features in a distributed malware database blocks to increase the run-time detection of malware with more speed and accuracy, and further to announce malware information for all users.
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Key words
Android malware detection,blockchain,Internet of Things (IoT),clustering,secure machine learning
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要点】:本文提出了一种结合机器学习技术和区块链技术的多模态恶意软件检测框架,旨在提高基于Android的IoT设备的恶意软件检测率。

方法】:该技术采用一种序列方法,包括聚类、分类和区块链,机器学习通过聚类和分类技术自动提取恶意软件信息并将其存储在区块链中。

实验】:作者使用了一个具体的数据集,该数据集包含了Android恶意软件的信息,通过实现聚类技术来计算每个特征集的权重,并使用基于决策树的朴素贝叶斯分类器来提取Android恶意软件的各种特征。最终,该框架使用受权限的区块链来存储提取特征的真实信息,以提高运行时检测恶意软件的速度和准确性,并将恶意软件信息公布给所有用户。