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Main Authors: Moreno, Lourdes, Sanchez-Gomez, Jesus M., Sanchez-Escudero, Marco Antonio, Martínez, Paloma
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.17209
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author Moreno, Lourdes
Sanchez-Gomez, Jesus M.
Sanchez-Escudero, Marco Antonio
Martínez, Paloma
author_facet Moreno, Lourdes
Sanchez-Gomez, Jesus M.
Sanchez-Escudero, Marco Antonio
Martínez, Paloma
contents This paper describes the participation of HULAT-UC3M in CLEARS 2025 Subtask 1: Adaptation of Text to Plain Language (PL) in Spanish. We explored strategies based on models trained on Spanish texts, including a zero-shot configuration using prompt engineering and a fine-tuned version with Low-Rank Adaptation (LoRA). Different strategies were evaluated on representative internal subsets of the training data, using the official task metrics, cosine similarity (SIM) and the Fernández-Huerta readability index (FH) to guide the selection of the optimal model and prompt combination. The final system was selected for its balanced and consistent performance, combining normalization steps, the RigoChat-7B-v2 model, and a dedicated PL-oriented prompt. It ranked first in semantic similarity (SIM = 0.75), however, fourth in readability (FH = 69.72). We also discuss key challenges related to training data heterogeneity and the limitations of current evaluation metrics in capturing both linguistic clarity and content preservation.
format Preprint
id arxiv_https___arxiv_org_abs_2509_17209
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Prompt-Based Simplification for Plain Language using Spanish Language Models
Moreno, Lourdes
Sanchez-Gomez, Jesus M.
Sanchez-Escudero, Marco Antonio
Martínez, Paloma
Computation and Language
This paper describes the participation of HULAT-UC3M in CLEARS 2025 Subtask 1: Adaptation of Text to Plain Language (PL) in Spanish. We explored strategies based on models trained on Spanish texts, including a zero-shot configuration using prompt engineering and a fine-tuned version with Low-Rank Adaptation (LoRA). Different strategies were evaluated on representative internal subsets of the training data, using the official task metrics, cosine similarity (SIM) and the Fernández-Huerta readability index (FH) to guide the selection of the optimal model and prompt combination. The final system was selected for its balanced and consistent performance, combining normalization steps, the RigoChat-7B-v2 model, and a dedicated PL-oriented prompt. It ranked first in semantic similarity (SIM = 0.75), however, fourth in readability (FH = 69.72). We also discuss key challenges related to training data heterogeneity and the limitations of current evaluation metrics in capturing both linguistic clarity and content preservation.
title Prompt-Based Simplification for Plain Language using Spanish Language Models
topic Computation and Language
url https://arxiv.org/abs/2509.17209