driftscutoffs
Driftscutoffs are a concept in time-series analysis and signal processing describing adaptive thresholds that separate gradual baseline drift from faster signal fluctuations. They arise when data streams exhibit nonstationary baselines, such as in environmental monitoring, biomedical signals, or finance. A drifts cutoff marks the boundary between drift and non-drift components of the signal.
Definition and mechanism: A driftscutoff is time-varying and derived from local statistics, such as rolling medians
Implementation: Approaches include adaptive filtering or rolling regression to estimate the baseline, then using the cutoff
Applications: Driftscutoffs are used to improve drift-aware anomaly detection, data-quality monitoring, and concept drift handling, reducing
Relation to related concepts: The idea is related to adaptive thresholds, CUSUM and EWMA drift detection, and
Limitations and outlook: Selecting window lengths, drift-rate parameters, and robustness to nonstationarity remains challenging and data-dependent.