Abstract: In this paper, we aim to improve anomaly detection (AD) by incorporating the time-varying non-linear spatio-temporal correlations of the multi-variate time series data in the modeling process. In multivariate AD, the simultaneous deviation of multiple nodes from their expected behavior can indicate an anomaly, even if no individual node shows a clearly abnormal pattern. In many existing approaches, time series variables are assumed to be (conditionally) independent, which oversimplifies real-world interactions. Our approach addresses this by modeling joint dependencies using a copula-based framework, which decouples the modeling of marginal distributions, temporal dynamics, and inter-variable dependencies. We use a transformer encoder to capture temporal patterns, and to model spatial (inter-variable) dependencies, we integrate a copula. Both components are trained jointly in a latent space using a self-supervised contrastive learning objective to learn meaningful feature representations to separate normal and anomaly samples.
Submission Length: Regular submission (no more than 12 pages of main content)
Previous TMLR Submission Url: https://openreview.net/forum?id=gZjs5yKu1x
Changes Since Last Submission: Mistakenly, the actual font was overridden. We have corrected it now. Thanks!
Assigned Action Editor: ~Philip_K._Chan1
Submission Number: 4888
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