Measuring the State of Open Science in Transportation Using Large Language Models
Junyi Ji, Ruth Lu, Linda Belkessa, Liming Wang, Silvia Varotto, Yongqi Dong, Nicolas Saunier, Mostafa Ameli, Gregory S. Macfarlane, Bahman Madadi, Cathy Wu

TL;DR
This study develops an automated pipeline using Large Language Models to measure open science practices, specifically data and code sharing, in transportation research articles, revealing low sharing rates and no citation advantage.
Contribution
Introduces a scalable, LLM-based feature extraction pipeline to assess open science practices in transportation research, validated against manual annotations.
Findings
Only 5% of quantitative papers shared code
Only 4% shared data repositories
Sharing practices do not correlate with citation counts
Abstract
Open science initiatives have strengthened scientific integrity and accelerated research progress across many fields, but the state of their practice within transportation research remains under-investigated. Key features of open science, defined here as data and code availability, are difficult to extract due to the inherent complexity of the field. Previous work has either been limited to small-scale studies due to the labor-intensive nature of manual analysis or has relied on large-scale bibliometric approaches that sacrifice contextual richness. This paper introduces an automatic and scalable feature-extraction pipeline to measure data and code availability in transportation research. We employ Large Language Models (LLMs) for this task and validate their performance against a manually curated dataset and through an inter-rater agreement analysis. We applied this pipeline to examine…
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Taxonomy
Topicsscientometrics and bibliometrics research · Computational and Text Analysis Methods · Research Data Management Practices
