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Main Authors: Wolfe, Edward W., Barber, Justin O.
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.06772
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author Wolfe, Edward W.
Barber, Justin O.
author_facet Wolfe, Edward W.
Barber, Justin O.
contents Data augmentation can mitigate limited training data in machine-learning automated scoring engines for constructed response items. This study seeks to determine how well three approaches to large language model prompting produce essays that preserve the writing quality of the original essays and produce realistic text for augmenting ASE training datasets. We created simulated versions of student essays, and human raters assigned scores to them and rated the realism of the generated text. The results of the study indicate that the predict next prompting strategy produces the highest level of agreement between human raters regarding simulated essay scores, predict next and sentence strategies best preserve the rated quality of the original essay in the simulated essays, and predict next and 25 examples strategies produce the most realistic text as judged by human raters.
format Preprint
id arxiv_https___arxiv_org_abs_2602_06772
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Calibrating Generative AI to Produce Realistic Essays for Data Augmentation
Wolfe, Edward W.
Barber, Justin O.
Machine Learning
Data augmentation can mitigate limited training data in machine-learning automated scoring engines for constructed response items. This study seeks to determine how well three approaches to large language model prompting produce essays that preserve the writing quality of the original essays and produce realistic text for augmenting ASE training datasets. We created simulated versions of student essays, and human raters assigned scores to them and rated the realism of the generated text. The results of the study indicate that the predict next prompting strategy produces the highest level of agreement between human raters regarding simulated essay scores, predict next and sentence strategies best preserve the rated quality of the original essay in the simulated essays, and predict next and 25 examples strategies produce the most realistic text as judged by human raters.
title Calibrating Generative AI to Produce Realistic Essays for Data Augmentation
topic Machine Learning
url https://arxiv.org/abs/2602.06772