ReQUESTA: A Hybrid Agentic Framework for Generating Cognitively Diverse Multiple-Choice Questions

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Bibliographic Details
Title: ReQUESTA: A Hybrid Agentic Framework for Generating Cognitively Diverse Multiple-Choice Questions
Language: English
Authors: Yu Tian, Shubham Chakraborty, Linh Huynh (ORCID 0000-0002-5387-4137), Katerina Christhilf (ORCID 0000-0003-3901-8665), Micah Watanabe (ORCID 0000-0002-9929-6600), Danielle S. McNamara (ORCID 0000-0001-5869-1420)
Source: Grantee Submission. 2026.
Peer Reviewed: Y
Page Count: 11
Publication Date: 2026
Sponsoring Agency: National Center for Education Research (NCER) (ED/IES)
Contract Number: R305T240035
Document Type: Speeches/Meeting Papers
Reports - Research
Descriptors: Test Construction, Multiple Choice Tests, Artificial Intelligence, Natural Language Processing, Computer Assisted Testing, Classification, Thinking Skills
DOI: 10.59668/2551.25167
Abstract: This study presents ReQUESTA, a hybrid agentic framework that integrates LLM-powered and rule-based agents to generate multiple choice questions (MCQs) with distinct cognitive focuses: text-based, inferential, and main-idea. To provide an initial validation of the framework, expert raters evaluated 100 ReQUESTA-generated MCQs using a cognitive classification rubric to assess alignment between intended and perceived cognitive categories. The results indicate a high level of agreement between system-assigned and expert-assigned labels (agreement rate = 0.95), suggesting that ReQUESTA can reliably instantiate targeted cognitive distinctions in question generation. These findings offer preliminary evidence of the framework's capacity to support cognitively diverse and pedagogically meaningful assessment design. ReQUESTA's modular and hybrid design supports scalable, iterative, and evidence-based assessment development. Future work will include psychometric validation and expansion to additional cognitive categories such as application-level questions. [This paper was published in: "Proceedings of the Learning Engineering Research Network Convening (LERN 2026)," 2026, pp. 303-312.]
Abstractor: As Provided
IES Funded: Yes
Entry Date: 2026
Accession Number: ED678904
Database: ERIC
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