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
DOLLAR: Few-Step Video Generation via Distillation and Latent Reward Optimization
Zihan Ding, Chi Jin, Difan Liu, Haitian Zheng, Krishna Kumar Singh, Qiang Zhang, Yan Kang, Zhe Lin, Yuchen Liu
JailPO: A Novel Black-box Jailbreak Framework via Preference Optimization against Aligned LLMs
Hongyi Li, Jiawei Ye, Jie Wu, Tianjie Yan, Chu Wang, Zhixin Li
Foxtsage vs. Adam: Revolution or Evolution in Optimization?
Sirwan A. Aula, Tarik A. Rashid
Northeastern Uni at Multilingual Counterspeech Generation: Enhancing Counter Speech Generation with LLM Alignment through Direct Preference Optimization
Sahil Wadhwa, Chengtian Xu, Haoming Chen, Aakash Mahalingam, Akankshya Kar, Divya Chaudhary
YOLOv11 Optimization for Efficient Resource Utilization
Areeg Fagad Rasheed, M. Zarkoosh
Optimization of Collective Bayesian Decision-Making in a Swarm of Miniaturized Vibration-Sensing Robots
Thiemen Siemensma, Bahar Haghighat
Stochastic first-order methods with multi-extrapolated momentum for highly smooth unconstrained optimization
Chuan He
Defeasible Visual Entailment: Benchmark, Evaluator, and Reward-Driven Optimization
Yue Zhang, Liqiang Jing, Vibhav Gogate
Color Enhancement for V-PCC Compressed Point Cloud via 2D Attribute Map Optimization
Jingwei Bao, Yu Liu, Zeliang Li, Shuyuan Zhu, Siu-Kei Au Yeung
Fast and Slow Gradient Approximation for Binary Neural Network Optimization
Xinquan Chen, Junqi Gao, Biqing Qi, Dong Li, Yiang Luo, Fangyuan Li, Pengfei Li
A Mapper Algorithm with implicit intervals and its optimization
Yuyang Tao, Shufei Ge
Region-Based Optimization in Continual Learning for Audio Deepfake Detection
Yujie Chen, Jiangyan Yi, Cunhang Fan, Jianhua Tao, Yong Ren, Siding Zeng, Chu Yuan Zhang, Xinrui Yan, Hao Gu, Jun Xue, Chenglong Wang, Zhao Lv, Xiaohui Zhang
EditSplat: Multi-View Fusion and Attention-Guided Optimization for View-Consistent 3D Scene Editing with 3D Gaussian Splatting
Dong In Lee, Hyeongcheol Park, Jiyoung Seo, Eunbyung Park, Hyunje Park, Ha Dam Baek, Shin Sangheon, Sangmin kim, Sangpil Kim
Formulations and scalability of neural network surrogates in nonlinear optimization problems
Robert B. Parker, Oscar Dowson, Nicole LoGiudice, Manuel Garcia, Russell Bent
PSMGD: Periodic Stochastic Multi-Gradient Descent for Fast Multi-Objective Optimization
Mingjing Xu, Peizhong Ju, Jia Liu, Haibo Yang
Exploring Grokking: Experimental and Mechanistic Investigations
Hu Qiye, Zhou Hao, Yu RuoXi
SHIFT Planner: Speedy Hybrid Iterative Field and Segmented Trajectory Optimization with IKD-tree for Uniform Lightweight Coverage
Zexuan Fan, Sunchun Zhou, Hengye Yang, Junyi Cai, Ran Cheng, Lige Liu, Tao Sun