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arxiv:2512.11192

SciLaD: A Large-Scale, Transparent, Reproducible Dataset for Natural Scientific Language Processing

Published on Dec 12, 2025
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Abstract

SciLaD is a large-scale scientific language dataset constructed using open-source tools, featuring over 10 million English publications and 35 million multilingual publications, with a pre-trained RoBERTa model demonstrating competitive performance on scientific language benchmarks.

AI-generated summary

SciLaD is a novel, large-scale dataset of scientific language constructed entirely using open-source frameworks and publicly available data sources. It comprises a curated English split containing over 10 million scientific publications and a multilingual, unfiltered TEI XML split including more than 35 million publications. We also publish the extensible pipeline for generating SciLaD. The dataset construction and processing workflow demonstrates how open-source tools can enable large-scale, scientific data curation while maintaining high data quality. Finally, we pre-train a RoBERTa model on our dataset and evaluate it across a comprehensive set of benchmarks, achieving performance comparable to other scientific language models of similar size, validating the quality and utility of SciLaD. We publish the dataset and evaluation pipeline to promote reproducibility, transparency, and further research in natural scientific language processing and understanding including scholarly document processing.

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