Towards Responsible AI in Education: Hybrid Recommendation System for K-12 Students Case Study
The growth of Educational Technology (EdTech) has enabled highly personalized learning experiences through Artificial Intelligence (AI)-based recommendation systems tailored to each student’s needs. However, these systems can unintentionally introduce biases, potentially limiting fair access to learning resources. This study presents a recommendation system for K-12 students that combines graph-based modeling and matrix factorization, offering personalized suggestions for extracurricular activities, learning resources, and volunteering opportunities. To address fairness concerns, the system includes a framework to detect and reduce biases by analyzing feedback across protected student groups. This work highlights the need for continuous monitoring in educational recommendation systems to support equitable, transparent, and effective learning opportunities for all students.
Tue 29 AprDisplayed time zone: Eastern Time (US & Canada) change
16:00 - 17:30 | |||
16:00 15mTalk | Towards Responsible AI in Education: Hybrid Recommendation System for K-12 Students Case Study RAIE Nazarii Drushchak SoftServe Inc., P: Vladyslava Tyshchenko SoftServe Inc., Nataliya Polyakovska SoftServe Inc. Pre-print | ||
16:15 12mShort-paper | Compliance Made Practical: Translating the EU AI Act into Implementable Actions RAIE | ||
16:27 15mTalk | Leveraging Existing Road-Vehicle Standards to address EU AI Act Compliance RAIE P: Shanza Ali Zafar Fraunhofer IKS, Jessica Kelly Fraunhofer IKS, Lena Heidemann Fraunhofer IKS, Núria Mata Fraunhofer IKS | ||
16:42 3mBreak | Mini-break RAIE | ||
16:45 35mPanel | Panel Discussion - Diversity and Inclusion in AI (Chaired by Muneera Bano) RAIE P: Muneera Bano CSIRO's Data61, P: Rashina Hoda Monash University, P: Daniel Amyot University of Ottawa, P: Ronnie de Souza Santos University of Calgary | ||
17:20 10mDay closing | Closing Remarks RAIE Qinghua Lu Data61, CSIRO |