Diffusion-Inspired Cold Start with Sufficient Prior in Computerized Adaptive Testing
Haiping Ma, Aoqing Xia, Changqian Wang, Hai Wang, Xingyi Zhang

TL;DR
This paper introduces a diffusion model-based framework to improve initial ability estimation in computerized adaptive testing, leveraging prior data from related domains to enhance cold start performance.
Contribution
The paper proposes DCSR, a novel diffusion model framework that transfers cognitive state information across domains to address the cold start problem in CAT.
Findings
DCSR significantly outperforms baseline methods on five real-world datasets.
The framework effectively utilizes prior domain information to improve initial ability estimation.
Experimental results show enhanced test efficiency and examinee experience.
Abstract
Computerized Adaptive Testing (CAT) aims to select the most appropriate questions based on the examinee's ability and is widely used in online education. However, existing CAT systems often lack initial understanding of the examinee's ability, requiring random probing questions. This can lead to poorly matched questions, extending the test duration and negatively impacting the examinee's mindset, a phenomenon referred to as the Cold Start with Insufficient Prior (CSIP) task. This issue occurs because CAT systems do not effectively utilize the abundant prior information about the examinee available from other courses on online platforms. These response records, due to the commonality of cognitive states across different knowledge domains, can provide valuable prior information for the target domain. However, no prior work has explored solutions for the CSIP task. In response to this gap,…
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Taxonomy
TopicsEducational Technology and Assessment · VLSI and Analog Circuit Testing · Numerical Methods and Algorithms
MethodsDiffusion
