Litcius/Paper detail

Validity Arguments for AI‐Based Automated Scores: Essay Scoring as an Illustration

Steve Ferrara, Saed Qunbar

2022Journal of Educational Measurement38 citationsDOI

Abstract

Abstract In this article, we argue that automated scoring engines should be transparent and construct relevant—that is, as much as is currently feasible. Many current automated scoring engines cannot achieve high degrees of scoring accuracy without allowing in some features that may not be easily explained and understood and may not be obviously and directly relevant to the target assessment construct. We address the current limitations on evidence and validity arguments for scores from automated scoring engines from the points of view of the Standards for Educational and Psychological Testing (i.e., construct relevance, construct representation, and fairness) and emerging principles in Artificial Intelligence (e.g., explainable AI, an examinee's right to explanations, and principled AI). We illustrate these concepts and arguments for automated essay scores.

Topics & Concepts

Construct (python library)Construct validityComputer scienceRelevance (law)Representation (politics)Artificial intelligenceMachine learningCognitive psychologyPsychometricsPsychologyProgramming languageLawPolitical sciencePoliticsClinical psychologyExplainable Artificial Intelligence (XAI)Adversarial Robustness in Machine LearningArtificial Intelligence in Healthcare and Education