Score: 3

Principled Design of Interpretable Automated Scoring for Large-Scale Educational Assessments

Published: November 21, 2025 | arXiv ID: 2511.17069v1

By: Yunsung Kim , Mike Hardy , Joseph Tey and more

BigTech Affiliations: Stanford University

Potential Business Impact:

Makes AI grading show its thinking, like a teacher.

Business Areas:
Natural Language Processing Artificial Intelligence, Data and Analytics, Software

AI-driven automated scoring systems offer scalable and efficient means of evaluating complex student-generated responses. Yet, despite increasing demand for transparency and interpretability, the field has yet to develop a widely accepted solution for interpretable automated scoring to be used in large-scale real-world assessments. This work takes a principled approach to address this challenge. We analyze the needs and potential benefits of interpretable automated scoring for various assessment stakeholders and develop four principles of interpretability -- Faithfulness, Groundedness, Traceability, and Interchangeability (FGTI) -- targeted at those needs. To illustrate the feasibility of implementing these principles, we develop the AnalyticScore framework for short answer scoring as a baseline reference framework for future research. AnalyticScore operates by (1) extracting explicitly identifiable elements of the responses, (2) featurizing each response into human-interpretable values using LLMs, and (3) applying an intuitive ordinal logistic regression model for scoring. In terms of scoring accuracy, AnalyticScore outperforms many uninterpretable scoring methods, and is within only 0.06 QWK of the uninterpretable SOTA on average across 10 items from the ASAP-SAS dataset. By comparing against human annotators conducting the same featurization task, we further demonstrate that the featurization behavior of AnalyticScore aligns well with that of humans.

Country of Origin
🇺🇸 United States

Repos / Data Links

Page Count
16 pages

Category
Computer Science:
Computation and Language