MemoryKT: An Integrative Memory-and-Forgetting Method for Knowledge Tracing
By: Mingrong Lin , Ke Deng , Zhengyang Wu and more
Potential Business Impact:
Helps students learn better by remembering what they forget.
Knowledge Tracing (KT) is committed to capturing students' knowledge mastery from their historical interactions. Simulating students' memory states is a promising approach to enhance both the performance and interpretability of knowledge tracing models. Memory consists of three fundamental processes: encoding, storage, and retrieval. Although forgetting primarily manifests during the storage stage, most existing studies rely on a single, undifferentiated forgetting mechanism, overlooking other memory processes as well as personalized forgetting patterns. To address this, this paper proposes memoryKT, a knowledge tracing model based on a novel temporal variational autoencoder. The model simulates memory dynamics through a three-stage process: (i) Learning the distribution of students' knowledge memory features, (ii) Reconstructing their exercise feedback, while (iii) Embedding a personalized forgetting module within the temporal workflow to dynamically modulate memory storage strength. This jointly models the complete encoding-storage-retrieval cycle, significantly enhancing the model's perception capability for individual differences. Extensive experiments on four public datasets demonstrate that our proposed approach significantly outperforms state-of-the-art baselines.
Similar Papers
Enhancing Knowledge Tracing through Leakage-Free and Recency-Aware Embeddings
Computers and Society
Makes learning tools guess student skills better.
AdvKT: An Adversarial Multi-Step Training Framework for Knowledge Tracing
Machine Learning (CS)
Improves learning systems by predicting student knowledge better.
A Hierarchical Probabilistic Framework for Incremental Knowledge Tracing in Classroom Settings
Computation and Language
Helps students learn better with less data.