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Explainable Knowledge Tracing via Probabilistic Embeddings and Pattern-based Reasoning

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Knowledge Tracing (KT) models students' knowledge states based on learning interactions to predict performance. While deep learning-based KT models have boosted predictive accuracy, most models rely on deterministic vector embeddings and opaque latent state transitions, limiting interpretability regarding how specific past behaviors influence predictions. To address this limitation, we propose Probabilistic Logical Knowledge Tracing (PLKT), an interpretable KT framework that formulates prediction as a goal-conditioned evidence reasoning process over historical learning behaviors. Instead of representing knowledge states as deterministic vector embeddings, PLKT employs robust Beta-distributed probabilistic embeddings to represent student knowledge states. This probabilistic foundation allows us to model the uncertainty of historical behaviors and perform explicit logical operations (e.g., conjunction), constructing transparent reasoning paths that reveal how specific past interactions contribute to the prediction. Extensive experiments show that PLKT outperforms state-of-the-art KT methods while achieving superior interpretability. Our code is available at https://anonymous.4open.science/r/PLKT-D3CE/.

Siyu Wu, Cong Xu, Wei Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Knowledge TracingAssistments 2009
AUC0.8116
53
Knowledge TracingASSIST12
AUC78.49
37
Knowledge TracingJunyi
ACC83.33
37
Knowledge TracingAlgebra 05
AUC0.9645
25
Knowledge TracingBridge06
Accuracy86.53
13
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