[2602.06542] Live Knowledge Tracing: Real-Time Adaptation using Tabular Foundation Models
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Abstract page for arXiv paper 2602.06542: Live Knowledge Tracing: Real-Time Adaptation using Tabular Foundation Models
Computer Science > Machine Learning arXiv:2602.06542 (cs) [Submitted on 6 Feb 2026 (v1), last revised 30 Mar 2026 (this version, v2)] Title:Live Knowledge Tracing: Real-Time Adaptation using Tabular Foundation Models Authors:Mounir Lbath (X), Alexandre Paresy (X), Abdelkayoum Kaddouri (X), Abdelrahman Zighem (ENS-PSL), Alan André (X), Alexandre Ittah (X), Jill-Jênn Vie (SODA) View a PDF of the paper titled Live Knowledge Tracing: Real-Time Adaptation using Tabular Foundation Models, by Mounir Lbath (X) and 6 other authors View PDF Abstract:Deep knowledge tracing models have achieved significant breakthroughs in modeling student learning trajectories. However, these architectures require substantial training time and are prone to overfitting on datasets with short sequences. In this paper, we explore a new paradigm for knowledge tracing by leveraging tabular foundation models (TFMs). Unlike traditional methods that require offline training on a fixed training set, our approach performs real-time ''live'' knowledge tracing in an online way. The core of our method lies in a two-way attention mechanism: while attention knowledge tracing models only attend across earlier time steps, TFMs simultaneously attend across both time steps and interactions of other students in the training set. They align testing sequences with relevant training sequences at inference time, therefore skipping the training step entirely. We demonstrate, using several datasets of increasing size, that ou...