Secure Change-Point Detection for Time Series under Homomorphic Encryption
By: Federico Mazzone, Giorgio Micali, Massimiliano Pronesti
Potential Business Impact:
Find hidden patterns in secret data without seeing it.
We introduce the first method for change-point detection on encrypted time series. Our approach employs the CKKS homomorphic encryption scheme to detect shifts in statistical properties (e.g., mean, variance, frequency) without ever decrypting the data. Unlike solutions based on differential privacy, which degrade accuracy through noise injection, our solution preserves utility comparable to plaintext baselines. We assess its performance through experiments on both synthetic datasets and real-world time series from healthcare and network monitoring. Notably, our approach can process one million points within 3 minutes.
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