Optimization Purpose
Optimization, the process of finding the best solution from a set of possibilities, is a fundamental problem across numerous scientific and engineering disciplines. Current research focuses on improving the efficiency and robustness of optimization algorithms, particularly for complex, high-dimensional problems, employing techniques like graph neural networks, normalizing flows, and variants of gradient descent tailored to specific architectures (e.g., transformers, neural differential equations). These advancements are crucial for addressing challenges in diverse fields, ranging from power systems management and robotic control to machine learning model training and resource allocation, ultimately leading to more efficient and effective solutions in various applications.
Papers
Vector Optimization with Gaussian Process Bandits
İlter Onat Korkmaz, Yaşar Cahit Yıldırım, Çağın Ararat, Cem Tekin
Keeping Experts in the Loop: Expert-Guided Optimization for Clinical Data Classification using Large Language Models
Nader Karayanni, Aya Awwad, Chein-Lien Hsiao, Surish P Shanmugam
Construction and optimization of health behavior prediction model for the elderly in smart elderly care
Qian Guo, Peiyuan Chen
Review of Mathematical Optimization in Federated Learning
Shusen Yang, Fangyuan Zhao, Zihao Zhou, Liang Shi, Xuebin Ren, Zongben Xu
Towards Robust Interpretable Surrogates for Optimization
Marc Goerigk, Michael Hartisch, Sebastian Merten
Integrating Decision-Making Into Differentiable Optimization Guided Learning for End-to-End Planning of Autonomous Vehicles
Wenru Liu, Yongkang Song, Chengzhen Meng, Zhiyu Huang, Haochen Liu, Chen Lv, Jun Ma
Understanding trade-offs in classifier bias with quality-diversity optimization: an application to talent management
Catalina M Jaramillo, Paul Squires, Julian Togelius
Jaya R Package -- A Parameter-Free Solution for Advanced Single and Multi-Objective Optimization
Neeraj Dhanraj Bokde
Understanding Generalization of Federated Learning: the Trade-off between Model Stability and Optimization
Dun Zeng, Zheshun Wu, Shiyu Liu, Yu Pan, Xiaoying Tang, Zenglin Xu
Adaptive Coordinate-Wise Step Sizes for Quasi-Newton Methods: A Learning-to-Optimize Approach
Wei Lin, Qingyu Song, Hong Xu
Exploring the Generalization Capabilities of AID-based Bi-level Optimization
Congliang Chen, Li Shen, Zhiqiang Xu, Wei Liu, Zhi-Quan Luo, Peilin Zhao
Reinforcement learning-enhanced genetic algorithm for wind farm layout optimization
Guodan Dong, Jianhua Qin, Chutian Wu, Chang Xu, Xiaolei Yang
Research on Effectiveness Evaluation and Optimization of Baseball Teaching Method Based on Machine Learning
Shaoxuan Sun, Jingao Yuan, Yuelin Yang
Learning Algorithm Hyperparameters for Fast Parametric Convex Optimization
Rajiv Sambharya, Bartolomeo Stellato