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 - Page 22
Retrieval Augmented Diffusion Model for Structure-informed Antibody Design and Optimization
Zichen Wang, Yaokun Ji, Jianing Tian, Shuangjia ZhengTime-Varying Convex Optimization with O(n) Computational Complexity
M. Rostami, S. S. KiaNeural Radiance Field Image Refinement through End-to-End Sampling Point Optimization
Kazuhiro Ohta, Satoshi Ono
ORSO: Accelerating Reward Design via Online Reward Selection and Policy Optimization
Chen Bo Calvin Zhang, Zhang-Wei Hong, Aldo Pacchiano, Pulkit AgrawalHybrid bundle-adjusting 3D Gaussians for view consistent rendering with pose optimization
Yanan Guo, Ying Xie, Ying Chang, Benkui Zhang, Bo Jia, Lin CaoLLMOPT: Learning to Define and Solve General Optimization Problems from Scratch
Caigao Jiang, Xiang Shu, Hong Qian, Xingyu Lu, Jun Zhou, Aimin Zhou, Yang YuCliqueformer: Model-Based Optimization with Structured Transformers
Jakub Grudzien Kuba, Pieter Abbeel, Sergey Levine
Generative Neural Reparameterization for Differentiable PDE-constrained Optimization
Archis S. JoglekarOptimization and Application of Cloud-based Deep Learning Architecture for Multi-Source Data Prediction
Yang Zhang, Fa Wang, Xin Huang, Xintao Li, Sibei Liu, Hansong ZhangLoss Landscape Characterization of Neural Networks without Over-Parametrziation
Rustem Islamov, Niccolò Ajroldi, Antonio Orvieto, Aurelien LucchiPRefLexOR: Preference-based Recursive Language Modeling for Exploratory Optimization of Reasoning and Agentic Thinking
Markus J. BuehlerEdgeRL: Reinforcement Learning-driven Deep Learning Model Inference Optimization at Edge
Motahare Mounesan, Xiaojie Zhang, Saptarshi DebroyA Lattice-based Method for Optimization in Continuous Spaces with Genetic Algorithms
Cameron D. Harris, Kevin B. Schroeder, Jonathan Black
A Stochastic Approach to Bi-Level Optimization for Hyperparameter Optimization and Meta Learning
Minyoung Kim, Timothy M. HospedalesOptimization of Complex Process, Based on Design Of Experiments, a Generic Methodology
Julien Baderot, Yann Cauchepin (UCA), Alexandre Seiller (UCA), Richard Fontanges, Sergio Martinez, Johann Foucher, Emmanuel Fuchs+4Predicting from Strings: Language Model Embeddings for Bayesian Optimization
Tung Nguyen, Qiuyi Zhang, Bangding Yang, Chansoo Lee, Jorg Bornschein, Yingjie Miao, Sagi Perel, Yutian Chen, Xingyou Song