47

On the Role of Reversible Instance Normalization

Gaspard Berthelier
Tahar Nabil
Etienne Le Naour
Richard Niamke
Samir Perlaza
Giovanni Neglia
Main:4 Pages
23 Figures
Bibliography:3 Pages
17 Tables
Appendix:16 Pages
Abstract

Data normalization is a crucial component of deep learning models, yet its role in time series forecasting remains insufficiently understood. In this paper, we identify three central challenges for normalization in time series forecasting: temporal input distribution shift, spatial input distribution shift, and conditional output distribution shift. In this context, we revisit the widely used Reversible Instance Normalization (RevIN), by showing through ablation studies that several of its components are redundant or even detrimental. Based on these observations, we draw new perspectives to improve RevIN's robustness and generalization.

View on arXiv
Comments on this paper