Ensemble Learning
Ensemble learning combines multiple machine learning models to improve prediction accuracy and robustness beyond the capabilities of individual models. Current research focuses on optimizing ensemble composition and diversity, exploring techniques like diversity-optimized pruning, span-level ensembling, and adaptive model selection to enhance performance while mitigating computational costs, particularly in resource-constrained environments. This approach is proving valuable across diverse applications, from healthcare (e.g., disease diagnosis, medication extraction) and natural language processing (e.g., text classification, question answering) to manufacturing (e.g., defect detection, productivity analysis) and beyond, offering improved accuracy and reliability in various prediction tasks.
Papers
LTAU-FF: Loss Trajectory Analysis for Uncertainty in Atomistic Force Fields
Joshua A. Vita, Amit Samanta, Fei Zhou, Vincenzo Lordi
Improving Weak-to-Strong Generalization with Scalable Oversight and Ensemble Learning
Jitao Sang, Yuhang Wang, Jing Zhang, Yanxu Zhu, Chao Kong, Junhong Ye, Shuyu Wei, Jinlin Xiao
Addressing Bias Through Ensemble Learning and Regularized Fine-Tuning
Ahmed Radwan, Layan Zaafarani, Jetana Abudawood, Faisal AlZahrani, Fares Fourati
Unlocking Unlabeled Data: Ensemble Learning with the Hui- Walter Paradigm for Performance Estimation in Online and Static Settings
Kevin Slote, Elaine Lee
RELIANCE: Reliable Ensemble Learning for Information and News Credibility Evaluation
Majid Ramezani, Hamed Mohammadshahi, Mahshid Daliry, Soroor Rahmani, Amir-Hosein Asghari