Saved in:
Bibliographic Details
Main Authors: Zhan, Peilin, Chen, Wei, Chen, Weilin, Pan, Shuyi, Cai, Ruichu
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.05958
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913100850003968
author Zhan, Peilin
Chen, Wei
Chen, Weilin
Pan, Shuyi
Cai, Ruichu
author_facet Zhan, Peilin
Chen, Wei
Chen, Weilin
Pan, Shuyi
Cai, Ruichu
contents Knowledge Tracing (KT) is fundamental to intelligent education systems, yet relies on educational logs that are selectively observed. The non-random nature of exercise recommendations and student choices inevitably induces severe selection bias. Most existing KT methods neglect this issue, training on observed logs using standard empirical risk, which yields biased mastery estimates and accumulates errors in subsequent recommendations. To address this, we introduce a doubly robust (DR) formulation for KT that integrates a propensity model with an error imputation model, theoretically guaranteeing unbiasedness if either model is accurate. Beyond unbiasedness, in the sequential setting of KT, we identify that the estimator's performance is compromised by variance-dependent stochastic deviations that accumulate over time, thereby causing training instability and limiting performance. To mitigate this, we derive a generalization bound that explicitly characterizes the impact of estimator variance and identifies temporal smoothness as a key factor in controlling it. Building on these theoretical insights, we propose the Temporal Smoothness Doubly Robust (TSDR) framework. TSDR jointly optimizes the KT predictor and the imputation model with a smoothness regularizer, effectively reducing variance while preserving the unbiasedness guarantee of DR. Experiments on multiple real-world benchmarks demonstrate that TSDR consistently enhances various state-of-the-art KT backbones, underscoring the vital role of principled bias correction in KT.
format Preprint
id arxiv_https___arxiv_org_abs_2605_05958
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Temporal Smoothness Doubly Robust Learning for Debiased Knowledge Tracing
Zhan, Peilin
Chen, Wei
Chen, Weilin
Pan, Shuyi
Cai, Ruichu
Artificial Intelligence
Knowledge Tracing (KT) is fundamental to intelligent education systems, yet relies on educational logs that are selectively observed. The non-random nature of exercise recommendations and student choices inevitably induces severe selection bias. Most existing KT methods neglect this issue, training on observed logs using standard empirical risk, which yields biased mastery estimates and accumulates errors in subsequent recommendations. To address this, we introduce a doubly robust (DR) formulation for KT that integrates a propensity model with an error imputation model, theoretically guaranteeing unbiasedness if either model is accurate. Beyond unbiasedness, in the sequential setting of KT, we identify that the estimator's performance is compromised by variance-dependent stochastic deviations that accumulate over time, thereby causing training instability and limiting performance. To mitigate this, we derive a generalization bound that explicitly characterizes the impact of estimator variance and identifies temporal smoothness as a key factor in controlling it. Building on these theoretical insights, we propose the Temporal Smoothness Doubly Robust (TSDR) framework. TSDR jointly optimizes the KT predictor and the imputation model with a smoothness regularizer, effectively reducing variance while preserving the unbiasedness guarantee of DR. Experiments on multiple real-world benchmarks demonstrate that TSDR consistently enhances various state-of-the-art KT backbones, underscoring the vital role of principled bias correction in KT.
title Temporal Smoothness Doubly Robust Learning for Debiased Knowledge Tracing
topic Artificial Intelligence
url https://arxiv.org/abs/2605.05958