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Error is the deviation of the obtained result from the true, expected value or the estimated central value. Errors are expressed in absolute or relative terms.
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MADFU: An Improved Malicious Application Detection Method Based on Features Uncertainty.

Hongli Yuan1, Yongchuan Tang2

  • 1Institute of information engineering, Anhui Xinhua University, Hefei 230088, China.

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|December 8, 2020
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Summary
This summary is machine-generated.

This study introduces a new model for detecting malicious Android applications by addressing feature uncertainty. The proposed method achieves high accuracy in identifying malware, outperforming existing techniques.

Failed At:

2026-06-19T13:38:49.447498+00:00

Keywords:
Android appMCMCdetectionmachine learninguncertainty

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