Deep Temporal Interpolation of Radar-based Precipitation
Michiaki Tatsubori, Takao Moriyama, et al.
ICASSP 2022
We propose a novel modeling framework that efficiently encodes seasonal climate predictions to provide robust and reliable time-series forecasting for supply chain functions. The encoding framework enables effective learning of latent representations—be it uncertain seasonal climate prediction or other time-series data (e.g., buyer patterns)—via a modular neural network architecture. Our extensive experiments indicate that learning such representations to model seasonal climate forecasts results in an error reduction of approximately 13% to 17% across multiple real-world data sets compared to existing demand forecasting methods.
Michiaki Tatsubori, Takao Moriyama, et al.
ICASSP 2022
Kameshwaran Sampath, Sai Koti Reddy Danda, et al.
INFORMS 2020
Ying Peng, Yihong Dong, et al.
ICASSP 2024
Chengal Navin Kumar Twarakavi, Fred Otieno, et al.
INFORMS 2021