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arxiv:2509.24908

BOE-XSUM: Extreme Summarization in Clear Language of Spanish Legal Decrees and Notifications

Published on Sep 29
· Submitted by Javier de la Rosa on Sep 30
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Abstract

BOE-XSUM, a dataset of Spanish legal document summaries, demonstrates that fine-tuned medium-sized LLMs outperform general-purpose models in zero-shot summarization tasks.

AI-generated summary

The ability to summarize long documents succinctly is increasingly important in daily life due to information overload, yet there is a notable lack of such summaries for Spanish documents in general, and in the legal domain in particular. In this work, we present BOE-XSUM, a curated dataset comprising 3,648 concise, plain-language summaries of documents sourced from Spain's ``Bolet\'{\i}n Oficial del Estado'' (BOE), the State Official Gazette. Each entry in the dataset includes a short summary, the original text, and its document type label. We evaluate the performance of medium-sized large language models (LLMs) fine-tuned on BOE-XSUM, comparing them to general-purpose generative models in a zero-shot setting. Results show that fine-tuned models significantly outperform their non-specialized counterparts. Notably, the best-performing model -- BERTIN GPT-J 6B (32-bit precision) -- achieves a 24\% performance gain over the top zero-shot model, DeepSeek-R1 (accuracies of 41.6\% vs.\ 33.5\%).

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The first extreme summarization dataset for legal documents in Spanish. It demonstrate that fine-tuning medium-sized LLMs (BERTIN GPT-J) outperforms larger models in zero-shot for domain specific legal summarization.

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