Probabilistic Forecast
Probabilistic forecasting aims to predict future events not as single points but as probability distributions, quantifying uncertainty inherent in predictions. Current research emphasizes improving the accuracy and calibration of these forecasts across diverse domains, focusing on advanced model architectures like neural networks (including variations such as LSTMs, VAEs, and diffusion models), Gaussian processes, and ensemble methods, often incorporating techniques like flow matching and conformal inference. These advancements have significant implications for various fields, enhancing decision-making in areas such as energy management, finance, and healthcare by providing more reliable and informative predictions under uncertainty.
Papers
Interpolation-Free Deep Learning for Meteorological Downscaling on Unaligned Grids Across Multiple Domains with Application to Wind Power
Jean-Sébastien Giroux, Simon-Philippe Breton, Julie Carreau
Elucidating the Design Choice of Probability Paths in Flow Matching for Forecasting
Soon Hoe Lim, Yijin Wang, Annan Yu, Emma Hart, Michael W. Mahoney, Xiaoye S. Li, N. Benjamin Erichson