Zero-1-to-3: Domain-Level Zero-Shot Cognitive Diagnosis via One Batch of Early-Bird Students towards Three Diagnostic Objectives

Authors

  • Weibo Gao University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Qi Liu University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Hao Wang University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Linan Yue University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Haoyang Bi University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Yin Gu University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Fangzhou Yao University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Zheng Zhang University of Science and Technology of China Anhui Province Key Laboratory of Big Data Analysis and Application & State Key Laboratory of Cognitive Intelligence
  • Xin Li University of Science and Technology of China Artificial Intelligence Research Institute, iFLYTEK Co., Ltd
  • Yuanjing He The Open University of China

DOI:

https://doi.org/10.1609/aaai.v38i8.28684

Keywords:

DMKM: Applications, APP: Humanities & Computational Social Science, APP: Other Applications, CMS: Applications

Abstract

Cognitive diagnosis seeks to estimate the cognitive states of students by exploring their logged practice quiz data. It plays a pivotal role in personalized learning guidance within intelligent education systems. In this paper, we focus on an important, practical, yet often underexplored task: domain-level zero-shot cognitive diagnosis (DZCD), which arises due to the absence of student practice logs in newly launched domains. Recent cross-domain diagnostic models have been demonstrated to be a promising strategy for DZCD. These methods primarily focus on how to transfer student states across domains. However, they might inadvertently incorporate non-transferable information into student representations, thereby limiting the efficacy of knowledge transfer. To tackle this, we propose Zero-1-to-3, a domain-level zero-shot cognitive diagnosis framework via one batch of early-bird students towards three diagnostic objectives. Our approach initiates with pre-training a diagnosis model with dual regularizers, which decouples student states into domain-shared and domain-specific parts. The shared cognitive signals can be transferred to the target domain, enriching the cognitive priors for the new domain, which ensures the cognitive state propagation objective. Subsequently, we devise a strategy to generate simulated practice logs for cold-start students through analyzing the behavioral patterns from early-bird students, fulfilling the domain-adaption goal. Consequently, we refine the cognitive states of cold-start students as diagnostic outcomes via virtual data, aligning with the diagnosis-oriented goal. Finally, extensive experiments on six real-world datasets highlight the efficacy of our model for DZCD and its practical application in question recommendation. The code is publicly available at https://github.com/bigdata-ustc/Zero-1-to-3.

Published

2024-03-24

How to Cite

Gao, W., Liu, Q., Wang, H., Yue, L., Bi, H., Gu, Y., Yao, F., Zhang, Z., Li, X., & He, Y. (2024). Zero-1-to-3: Domain-Level Zero-Shot Cognitive Diagnosis via One Batch of Early-Bird Students towards Three Diagnostic Objectives. Proceedings of the AAAI Conference on Artificial Intelligence, 38(8), 8417-8426. https://doi.org/10.1609/aaai.v38i8.28684

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management