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
Application of the NIST AI Risk Management Framework to Surveillance Technology
Nandhini Swaminathan, David Danks
Contextual Restless Multi-Armed Bandits with Application to Demand Response Decision-Making
Xin Chen, I-Hong Hou
Fully automated workflow for the design of patient-specific orthopaedic implants: application to total knee arthroplasty
Aziliz Guezou-Philippe, Arnaud Clavé, Ehouarn Maguet, Ludivine Maintier, Charles Garraud, Jean-Rassaire Fouefack, Valérie Burdin, Eric Stindel, Guillaume Dardenne
Federated Bayesian Deep Learning: The Application of Statistical Aggregation Methods to Bayesian Models
John Fischer, Marko Orescanin, Justin Loomis, Patrick McClure
Output-Constrained Lossy Source Coding With Application to Rate-Distortion-Perception Theory
Li Xie, Liangyan Li, Jun Chen, Zhongshan Zhang
Application of Tensorized Neural Networks for Cloud Classification
Alifu Xiafukaiti, Devanshu Garg, Aruto Hosaka, Koichi Yanagisawa, Yuichiro Minato, Tsuyoshi Yoshida
Science based AI model certification for untrained operational environments with application in traffic state estimation
Daryl Mupupuni, Anupama Guntu, Liang Hong, Kamrul Hasan, Leehyun Keel
Development and Application of a Monte Carlo Tree Search Algorithm for Simulating Da Vinci Code Game Strategies
Ye Zhang, Mengran Zhu, Kailin Gui, Jiayue Yu, Yong Hao, Haozhan Sun
Application of GPT Language Models for Innovation in Activities in University Teaching
Manuel de Buenaga, Francisco Javier Bueno
Accurate and Data-Efficient Micro-XRD Phase Identification Using Multi-Task Learning: Application to Hydrothermal Fluids
Yanfei Li, Juejing Liu, Xiaodong Zhao, Wenjun Liu, Tong Geng, Ang Li, Xin Zhang
Application of Quantum Tensor Networks for Protein Classification
Debarshi Kundu, Archisman Ghosh, Srinivasan Ekambaram, Jian Wang, Nikolay Dokholyan, Swaroop Ghosh
Efficient first-order algorithms for large-scale, non-smooth maximum entropy models with application to wildfire science
Gabriel P. Langlois, Jatan Buch, Jérôme Darbon
An Efficient Solution to the 2D Visibility Problem in Cartesian Grid Maps and its Application in Heuristic Path Planning
Ibrahim Ibrahim, Joris Gillis, Wilm Decré, Jan Swevers