TY - GEN
T1 - Privacy-Preserving Distributed Link Predictions Among Peers in Online Classrooms Using Federated Learning
AU - Hridi, Anurata Prabha
AU - Hoq, Muntasir
AU - Gao, Zhikai
AU - Lynch, Collin
AU - Sahay, Rajeev
AU - Hosseinalipour, Seyyedali
AU - Akram, Bita
N1 - Publisher Copyright:
© 2025 Copyright is held by the author(s).
PY - 2025
Y1 - 2025
N2 - Social interactions among classroom peers, represented as social learning networks (SLNs), play a crucial role in enhancing learning outcomes. While SLN analysis has recently garnered attention, most existing approaches rely on centralized training, where data is aggregated and processed on a local/cloud server with direct access to raw data. However, in real-world educational settings, such direct access across multiple classrooms is often restricted due to privacy concerns. Furthermore, training models on isolated classroom data prevents the identification of common interaction patterns that exist across multiple classrooms, thereby limiting model performance. To address these challenges, we propose one of the first frameworks that integrates Federated Learning (FL), a distributed and collaborative machine learning (ML) paradigm, with SLNs derived from students’ interactions in multiple classrooms’ online forums to predict future link formations (i.e., interactions) among students. By leveraging FL, our approach enables collaborative model training across multiple classrooms while preserving data privacy, as it eliminates the need for raw data centralization. Recognizing that each classroom may exhibit unique student interaction dynamics, we further employ model personalization techniques to adapt the FL model to individual classroom characteristics. Our results demonstrate the effectiveness of our approach in capturing both shared and classroom-specific representations of student interactions in SLNs. Additionally, we utilize explainable AI (XAI) techniques to interpret model predictions, identifying key factors that influence link formation across different classrooms. These insights unveil the drivers of social learning interactions within a privacy-preserving, collaborative, and distributed ML framework—an aspect that has not been explored before.
AB - Social interactions among classroom peers, represented as social learning networks (SLNs), play a crucial role in enhancing learning outcomes. While SLN analysis has recently garnered attention, most existing approaches rely on centralized training, where data is aggregated and processed on a local/cloud server with direct access to raw data. However, in real-world educational settings, such direct access across multiple classrooms is often restricted due to privacy concerns. Furthermore, training models on isolated classroom data prevents the identification of common interaction patterns that exist across multiple classrooms, thereby limiting model performance. To address these challenges, we propose one of the first frameworks that integrates Federated Learning (FL), a distributed and collaborative machine learning (ML) paradigm, with SLNs derived from students’ interactions in multiple classrooms’ online forums to predict future link formations (i.e., interactions) among students. By leveraging FL, our approach enables collaborative model training across multiple classrooms while preserving data privacy, as it eliminates the need for raw data centralization. Recognizing that each classroom may exhibit unique student interaction dynamics, we further employ model personalization techniques to adapt the FL model to individual classroom characteristics. Our results demonstrate the effectiveness of our approach in capturing both shared and classroom-specific representations of student interactions in SLNs. Additionally, we utilize explainable AI (XAI) techniques to interpret model predictions, identifying key factors that influence link formation across different classrooms. These insights unveil the drivers of social learning interactions within a privacy-preserving, collaborative, and distributed ML framework—an aspect that has not been explored before.
KW - Federated Learning
KW - Social Learning
KW - Social Network Analysis
KW - Student Interaction
UR - https://www.scopus.com/pages/publications/105023301792
U2 - 10.5281/zenodo.15870179
DO - 10.5281/zenodo.15870179
M3 - Conference contribution
AN - SCOPUS:105023301792
SN - 9781733673662
T3 - Proceedings of the International Conference on Educational Data Mining
SP - 276
EP - 288
BT - Proceedings of the 18th International Conference on Educational Data Mining, EDM 2025
A2 - Mills, Caitlin
A2 - Alexandron, Giora
A2 - Taibi, Davide
A2 - Lo Bosco, Giosuè
A2 - Paquette, Luc
PB - International Educational Data Mining Society
T2 - 18th International Conference on Educational Data Mining, EDM 2025
Y2 - 20 July 2025 through 23 July 2025
ER -