Application Proficiency
Application proficiency focuses on optimizing the performance and efficiency of algorithms and models across diverse applications, aiming to improve accuracy, speed, and resource utilization. Current research emphasizes developing robust methods for handling model uncertainties and constraints, often employing Bayesian optimization, metaheuristics, and deep learning architectures like convolutional neural networks and transformers. This field is crucial for advancing various domains, from real-time control systems and fraud detection to personalized medicine and environmental monitoring, by enabling the effective deployment of sophisticated computational tools.
Papers
Multi-parametric Analysis for Mixed Integer Linear Programming: An Application to Transmission Planning and Congestion Control
Jian Liu, Rui Bo, Siyuan Wang
Investigating Bayesian optimization for expensive-to-evaluate black box functions: Application in fluid dynamics
Mike Diessner, Joseph O'Connor, Andrew Wynn, Sylvain Laizet, Yu Guan, Kevin Wilson, Richard D. Whalley
Improved $\alpha$-GAN architecture for generating 3D connected volumes with an application to radiosurgery treatment planning
Sanaz Mohammadjafari, Mucahit Cevik, Ayse Basar
Open High-Resolution Satellite Imagery: The WorldStrat Dataset -- With Application to Super-Resolution
Julien Cornebise, Ivan Oršolić, Freddie Kalaitzis
Black and Gray Box Learning of Amplitude Equations: Application to Phase Field Systems
Felix P. Kemeth, Sergio Alonso, Blas Echebarria, Ted Moldenhawer, Carsten Beta, Ioannis G. Kevrekidis
Signed Network Embedding with Application to Simultaneous Detection of Communities and Anomalies
Haoran Zhang, Junhui Wang
A Causal Approach for Business Optimization: Application on an Online Marketplace
Naama Parush, Ohad Levinkron-Fisch, Hanan Shteingart, Amir Bar Sela, Amir Zilberman, Jake Klein
MPC with Learned Residual Dynamics with Application on Omnidirectional MAVs
Maximilian Brunner, Weixuan Zhang, Ahmad Roumie, Marco Tognon, Roland Siegwart