Integrating Attentional Factors and Spacing in Logistic Knowledge Tracing Models to Explore the Impact of Training Sequences on Category Learning
Meng Cao, Philip I. Pavlik Jr., Wei Chu, Liang Zhang

TL;DR
This paper presents a novel logistic knowledge tracing model that integrates attentional factors and spacing to better understand how training sequences like interleaving and blocking affect student learning outcomes.
Contribution
It introduces a new computational model combining attentional and spacing features into LKT, improving prediction accuracy of student performance across different training sequences.
Findings
Incorporating attentional and spacing features improves model fit.
The enhanced model better predicts learning outcomes.
The approach bridges attention and memory in category learning.
Abstract
In category learning, a growing body of literature has increasingly focused on exploring the impacts of interleaving in contrast to blocking. The sequential attention hypothesis posits that interleaving draws attention to the differences between categories while blocking directs attention toward similarities within categories. Although a recent study underscores the joint influence of memory and attentional factors on sequencing effects, there remains a scarcity of effective computational models integrating both attentional and memory considerations to comprehensively understand the effect of training sequences on students' performance. This study introduces a novel integration of attentional factors and spacing into the logistic knowledge tracing (LKT) models to monitor students' performance across different training sequences (interleaving and blocking). Attentional factors were…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning
MethodsSoftmax · Attention Is All You Need
