I2S9/Fake-engagement-detection-ml-time-series
Fake engagement detection and realistic time-series simulation. The system generates synthetic data mimicking authentic behavior, injects multiple fraud attack types, and applies anomaly detection algorithms. The simulator reproduces daily cycles, weekly patterns, and natural noise.
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Language
Jupyter Notebook
License
MIT
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Last pushed
Dec 03, 2025
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