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Conformal k-NN Anomaly Detector for Univariate Data Streams (1706.03412v1)
Published 11 Jun 2017 in stat.ML, cs.DS, stat.AP, stat.CO, and stat.ME
Abstract: Anomalies in time-series data give essential and often actionable information in many applications. In this paper we consider a model-free anomaly detection method for univariate time-series which adapts to non-stationarity in the data stream and provides probabilistic abnormality scores based on the conformal prediction paradigm. Despite its simplicity the method performs on par with complex prediction-based models on the Numenta Anomaly Detection benchmark and the Yahoo! S5 dataset.