Estimation Task
Estimation tasks, broadly defined as the process of inferring unknown parameters or values from available data, are central to numerous scientific and engineering disciplines. Current research emphasizes developing robust and efficient estimation methods across diverse data types and model complexities, focusing on techniques like Bayesian frameworks, deep neural networks (including graph convolutional networks), and simulation-based inference. These advancements are driving improvements in areas ranging from medical diagnosis and robotics to power systems optimization and material science, enabling more accurate predictions and informed decision-making.
Papers
Deep Insights into Cognitive Decline: A Survey of Leveraging Non-Intrusive Modalities with Deep Learning Techniques
David Ortiz-Perez, Manuel Benavent-Lledo, Jose Garcia-Rodriguez, David Tomás, M. Flores Vizcaya-Moreno
Omics-driven hybrid dynamic modeling of bioprocesses with uncertainty estimation
Sebastián Espinel-Ríos, José Montaño López, José L. Avalos
VoxelKeypointFusion: Generalizable Multi-View Multi-Person Pose Estimation
Daniel Bermuth, Alexander Poeppel, Wolfgang Reif
Learning Representations of Instruments for Partial Identification of Treatment Effects
Jonas Schweisthal, Dennis Frauen, Maresa Schröder, Konstantin Hess, Niki Kilbertus, Stefan Feuerriegel
Edge AI Collaborative Learning: Bayesian Approaches to Uncertainty Estimation
Gleb Radchenko, Victoria Andrea Fill