Curriculum Learning
Curriculum learning (CL) is a machine learning technique that improves model training by presenting data in a progressively increasing order of difficulty, mimicking human learning. Current research focuses on automating curriculum design using various methods, including Fisher information, temporal difference errors, and LLM-generated difficulty metrics, applied across diverse model architectures like large language models (LLMs), graph neural networks (GNNs), and reinforcement learning (RL) agents. CL's significance lies in its ability to enhance model efficiency, generalization, and robustness across numerous applications, including natural language processing, robotics, and computer vision, by reducing training time and improving performance on complex tasks.
Papers
Self-Supervised Curriculum Generation for Autonomous Reinforcement Learning without Task-Specific Knowledge
Sang-Hyun Lee, Seung-Woo Seo
CLIMB: Curriculum Learning for Infant-inspired Model Building
Richard Diehl Martinez, Zebulon Goriely, Hope McGovern, Christopher Davis, Andrew Caines, Paula Buttery, Lisa Beinborn
Curriculum Learning with Adam: The Devil Is in the Wrong Details
Lucas Weber, Jaap Jumelet, Paul Michel, Elia Bruni, Dieuwke Hupkes
Camera-Driven Representation Learning for Unsupervised Domain Adaptive Person Re-identification
Geon Lee, Sanghoon Lee, Dohyung Kim, Younghoon Shin, Yongsang Yoon, Bumsub Ham