HomeLREC 2026WorkshopsDTFlrec2026-ws-dtf-06
Back to DTF 2026
LREC 2026workshop

Training data generation for context-dependent rubric-based short answer grading

Proceedings of Leveraging Derived Text Formats to Unlock Copyrighted Collections for Open Science (DTF) @ LREC 2026

DOI:10.63317/3tt9vin8tdc4

Abstract

Every four years, the PISA test is administered by the OECD to test the knowledge of teenage students worldwide and allow for comparisons of educational systems. However, having to avoid language differences and annotator bias makes the grading of student answers challenging. For these reasons, it would be interesting to consider methods of automatic student answer grading. To train some of these methods, which require machine learning, or to compute parameters or select hyperparameters for those that do not, a large amount of domain-specific data is needed. In this work, we explore a small number of methods for creating a large-scale training dataset using only a relatively small confidential dataset as a reference, leveraging a set of very simple derived text formats to preserve confidentiality. Using the proposed methods, we successfully created three surrogate datasets that are, at the very least, superficially more similar to the reference dataset than a straightforward result of prompt-based generation. Early experiments suggest one of these approaches might also lead to improved training of automatic answer grading models.

Details

Paper ID
lrec2026-ws-dtf-06
Pages
pp. 44-50
BibKey
indel-etal-2026-training
Editors
Florian Barth, Keli Du, José Calvo Tello, Philippe Genêt, Piroska Lendvai, Christof Schöch, Thorsten Trippel
Publisher
European Language Resources Association (ELRA)
ISSN
N/A
ISBN
N/A
Workshop
Proceedings of Leveraging Derived Text Formats to Unlock Copyrighted Collections for Open Science (DTF) @ LREC 2026
Location
Palma, Mallorca, Spain
Date
11 - 16 May 2026

Authors

  • Pavel Šindelář

  • FP

    Filip Prášil

  • DS

    Dávid Slivka

  • CB

    Christopher Bouma

  • OB

    Ondrej Bojar

Links