Collaborative Learning
Collaborative learning focuses on improving machine learning model performance by leveraging data and computational resources from multiple sources, enhancing efficiency and privacy. Current research emphasizes developing algorithms that optimize communication and resource allocation among collaborating agents, including bilevel optimization and spectral estimators, while addressing challenges like negative transfer and data heterogeneity across diverse datasets. This approach is significant for improving model accuracy and generalization in various applications, from medical image segmentation to personalized recommendations, and is increasingly relevant in the context of data privacy regulations and resource-constrained environments.
Papers
Harnessing Transparent Learning Analytics for Individualized Support through Auto-detection of Engagement in Face-to-Face Collaborative Learning
Qi Zhou, Wannapon Suraworachet, Mutlu Cukurova
Predicting challenge moments from students' discourse: A comparison of GPT-4 to two traditional natural language processing approaches
Wannapon Suraworachet, Jennifer Seon, Mutlu Cukurova
Social Learning: Towards Collaborative Learning with Large Language Models
Amirkeivan Mohtashami, Florian Hartmann, Sian Gooding, Lukas Zilka, Matt Sharifi, Blaise Aguera y Arcas
Decoupled Knowledge with Ensemble Learning for Online Distillation
Baitan Shao, Ying Chen
Collaborative Learning for Annotation-Efficient Volumetric MR Image Segmentation
Yousuf Babiker M. Osman, Cheng Li, Weijian Huang, Shanshan Wang