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An Approach for Recognition of Various Applications in Android: A Review

Saurabh Jha

Abstract


In this paper, an AI approach for location of noxious applications in an Android working framework is proposed. In this day and age, android is a biggest working framework utilized by people groups far and wide and its clients are as yet developing step by step. As android is utilized on an enormous scale by its clients and because of its ubiquity, the noxious applications are likewise developing to hurt the framework or to utilize the individual data of an android client. An ongoing report by Google said that the organization recognized 99 percent of applications with malevolent substance before anybody could introduce them. The execution of vindictive application identification apparatus break down the connection between framework capacities, touchy authorizations and delicate application programming interfaces. The distinctive AI strategy, Grid Search and SVM Algorithm is performed to dissect the outcome that can recognize the pace of malignant applications with a superior effectiveness and can improve the presentation of the framework with the AI approach. Noxious Applications in Android.

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References


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