Détection d'anomalies par partitionnement des séries temporelles multi-variées
Abstract
In this article, we suggest a novel non-supervised partition based anomaly detection method
for anomaly detection in multivariate time series called PARADISE. This methodology creates
a partition of the variables of the time series while ensuring that the inter-variable relations remain
untouched. This partitioning relies on the clustering of multiple correlation coefficients
between variables to identify subsets of variables before executing anomaly detection algorithms
locally for each of those subsets. Through multiple experimentations done on both
synthetic and real datasets coming from the literature, we show the relevance of our approach
with a significant improvement in anomaly detection performance.