Gosia Lazuka, Andreea Simona Anghel, et al.
SC 2024
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 simplifying 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 relationships, is not probabilistic, and not trainable end-to-end. We introduce a novel probabilistic multivariate forecasting method addressing these shortcomings, and demonstrate improved performance on a variety of multivariate datasets.
Gosia Lazuka, Andreea Simona Anghel, et al.
SC 2024
Natalia Martinez Gil, Dhaval Patel, et al.
UAI 2024
Shubhi Asthana, Pawan Chowdhary, et al.
INFORMS 2020
Shubhi Asthana, Pawan Chowdhary, et al.
KDD 2021