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
A Syntax Aware BERT for Identifying Well-Formed Queries in a Curriculum Framework
Avinash Madasu, Anvesh Rao Vijjini
MentorGNN: Deriving Curriculum for Pre-Training GNNs
Dawei Zhou, Lecheng Zheng, Dongqi Fu, Jiawei Han, Jingrui He
DiscrimLoss: A Universal Loss for Hard Samples and Incorrect Samples Discrimination
Tingting Wu, Xiao Ding, Hao Zhang, Jinglong Gao, Li Du, Bing Qin, Ting Liu