Enhancing Cognitive Diagnosis Using Un-interacted Exercises: A Collaboration-Aware Mixed Sampling Approach

Authors

  • Haiping Ma Department of Information Materials and Intelligent Sensing Laboratory of Anhui Province, Institutes of Physical Science and Information Technology, Anhui University, China
  • Changqian Wang Department of Information Materials and Intelligent Sensing Laboratory of Anhui Province, Institutes of Physical Science and Information Technology, Anhui University, China
  • Hengshu Zhu Career Science Lab, BOSS Zhipin
  • Shangshang Yang School of Artificial Intelligence, Anhui University, China
  • Xiaoming Zhang Department of Information Materials and Intelligent Sensing Laboratory of Anhui Province, Institutes of Physical Science and Information Technology, Anhui University, China
  • Xingyi Zhang School of Computer Science and Technology, Anhui University, China

DOI:

https://doi.org/10.1609/aaai.v38i8.28735

Keywords:

DMKM: Applications, APP: Other Applications

Abstract

Cognitive diagnosis is a crucial task in computer-aided education, aimed at evaluating students' proficiency levels across various knowledge concepts through exercises. Current models, however, primarily rely on students' answered exercises, neglecting the complex and rich information contained in un-interacted exercises. While recent research has attempted to leverage the data within un-interacted exercises linked to interacted knowledge concepts, aiming to address the long-tail issue, these studies fail to fully explore the informative, un-interacted exercises related to broader knowledge concepts. This oversight results in diminished performance when these models are applied to comprehensive datasets. In response to this gap, we present the Collaborative-aware Mixed Exercise Sampling (CMES) framework, which can effectively exploit the information present in un-interacted exercises linked to un-interacted knowledge concepts. Specifically, we introduce a novel universal sampling module where the training samples comprise not merely raw data slices, but enhanced samples generated by combining weight-enhanced attention mixture techniques. Given the necessity of real response labels in cognitive diagnosis, we also propose a ranking-based pseudo feedback module to regulate students' responses on generated exercises. The versatility of the CMES framework bolsters existing models and improves their adaptability. Finally, we demonstrate the effectiveness and interpretability of our framework through comprehensive experiments on real-world datasets.

Published

2024-03-24

How to Cite

Ma, H., Wang, C., Zhu, H., Yang, S., Zhang, X., & Zhang, X. (2024). Enhancing Cognitive Diagnosis Using Un-interacted Exercises: A Collaboration-Aware Mixed Sampling Approach. Proceedings of the AAAI Conference on Artificial Intelligence, 38(8), 8877-8885. https://doi.org/10.1609/aaai.v38i8.28735

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management