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
Estimation and Control of Motor Core Temperature with Online Learning of Thermal Model Parameters: Application to Musculoskeletal Humanoids
Kento Kawaharazuka, Naoki Hiraoka, Kei Tsuzuki, Moritaka Onitsuka, Yuki Asano, Kei Okada, Koji Kawasaki, Masayuki Inaba
Identification and Estimation of the Bi-Directional MR with Some Invalid Instruments
Feng Xie, Zhen Yao, Lin Xie, Yan Zeng, Zhi Geng
Personalized Product Assortment with Real-time 3D Perception and Bayesian Payoff Estimation
Porter Jenkins, Michael Selander, J. Stockton Jenkins, Andrew Merrill, Kyle Armstrong
A Framework for Efficient Model Evaluation through Stratification, Sampling, and Estimation
Riccardo Fogliato, Pratik Patil, Mathew Monfort, Pietro Perona