Toward A Neuro-inspired Creative Decoder
Payel Das, Brian Quanz, et al.
ICLR 2020
Probabilistic forecasting of high dimensional multivariate time series is a notoriously challenging task, both in terms of computational burden and distribution modeling. Most previous work either makes simple distribution assumptions or abandons modeling cross-series correlations. A promising line of work exploits scalable matrix factorization for latent-space forecasting, but is limited to linear embeddings, unable to model distributions, and not trainable end-to-end when using deep learning forecasting. We introduce a novel temporal latent auto-encoder method which enables nonlinear factorization of multivariate time series, learned end-to-end with a temporal deep learning latent space forecast model. By imposing a probabilistic latent space model, complex distributions of the input series are modeled via the decoder. Extensive experiments demonstrate that our model achieves state-of-the-art performance on many popular multivariate datasets, with gains sometimes as high as 50% for several standard metrics.
Payel Das, Brian Quanz, et al.
ICLR 2020
Rares Christian, Pavithra Harsha, et al.
INFORMS 2022
Mariana Bernagozzi, Biplav Srivastava, et al.
AAAI 2021
Alexander Timms, Abigail Langbridge, et al.
AAAI 2025