Post Processing
Post-processing in various fields involves refining initial outputs from models or systems to improve accuracy, reliability, and fairness. Current research focuses on leveraging deep learning architectures, such as U-Nets and transformers, alongside statistical methods like quantile regression forests and scoring rule minimization, to achieve these objectives. Applications range from enhancing weather forecasts and improving the quality of audio and image data to mitigating bias in machine learning models and optimizing the performance of speech recognition systems. These advancements contribute to more accurate, reliable, and equitable outcomes across diverse scientific and practical domains.
Papers
Brain MRI study for glioma segmentation using convolutional neural networks and original post-processing techniques with low computational demand
José Gerardo Suárez-García Javier Miguel Hernández-López, Eduardo Moreno-Barbosa, Benito de Celis-Alonso
A two-step machine learning approach to statistical post-processing of weather forecasts for power generation
Ágnes Baran, Sándor Baran