Encoder Fine-tuning with Stochastic Sampling Outperforms Open-weight {GPT} in Astronomy Knowledge Extraction

Scientific literature in astronomy is rapidly expanding, making it increasingly important to automate the extraction of key entities and contextual information from research papers. In this paper, we present an encoder-based system for extracting knowledge from astronomy articles. Our objective is to develop models capable of classifying telescope references, detecting auxiliary semantic attributes, and recognizing instrument mentions from textual content. To this end, we implement a multi-task transformer-based system built upon the {SciBERT} model and fine-tuned for astronomy corpora classification. To carry out the fine-tuning, we stochastically sample segments from the training data and use majority voting over the test segments at inference time. Our system, despite its simplicity and low-cost implementation, significantly outperforms the open-weight {GPT} baseline.

Informationen zur Zitierung

Rawat, Shivam; Flek, Lucie; Karimi, Akbar: Encoder Fine-tuning with Stochastic Sampling Outperforms Open-weight {GPT} in Astronomy Knowledge Extraction, arXiv, 2025, {arXiv}:2511.08204, November, {arXiv}, http://arxiv.org/abs/2511.08204, Rawat.etal.2025a,

Assoziierte Lamarr-ForscherInnen

Prof. Dr. Lucie Flek

Prof. Dr. Lucie Flek

Area Chair NLP zum Profil
Photo. Portrait of Akbar Karimi.

Dr. Akbar Karimi

Postdoctoral Researcher NLP zum Profil