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arxiv: 1801.02440 · v2 · pith:QXC7GU3X · submitted 2018-01-08 · cs.CR

How to find a GSMem malicious activity via an AI approach

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classification cs.CR
keywords gsmemactivitymaliciousfalsefindmethodmodelsrates
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This paper investigates the following problem: how to find a GSMem malicious activity effectively. To this end, this paper puts forward a new method based on Artificial Intelligence (AI). At first, we use a large quantity of data in terms of frequencies and amplitudes of some electromagnetic waves to train our models. And then, we input a given frequency and amplitude into the obtained models, predicting that whether a GSMem malicious activity occurs or not. The simulated experiments show that the new method is potential to detect a GSMem one, with low False Positive Rates (FPR) and low False Negative Rates (FNR).

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