Laura Vásquez-Rodríguez


2022

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A Benchmark for Neural Readability Assessment of Texts in Spanish
Laura Vásquez-Rodríguez | Pedro-Manuel Cuenca-Jiménez | Sergio Morales-Esquivel | Fernando Alva-Manchego
Proceedings of the Workshop on Text Simplification, Accessibility, and Readability (TSAR-2022)

We release a new benchmark for Automated Readability Assessment (ARA) of texts in Spanish. We combined existing corpora with suitable texts collected from the Web, thus creating the largest available dataset for ARA of Spanish texts. All data was pre-processed and categorised to allow experimenting with ARA models that make predictions at two (simple and complex) or three (basic, intermediate, and advanced) readability levels, and at two text granularities (paragraphs and sentences). An analysis based on readability indices shows that our proposed datasets groupings are suitable for their designated readability level. We use our benchmark to train neural ARA models based on BERT in zero-shot, few-shot, and cross-lingual settings. Results show that either a monolingual or multilingual pre-trained model can achieve good results when fine-tuned in language-specific data. In addition, all mod- els decrease their performance when predicting three classes instead of two, showing opportunities for the development of better ARA models for Spanish with existing resources.

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UoM&MMU at TSAR-2022 Shared Task: Prompt Learning for Lexical Simplification
Laura Vásquez-Rodríguez | Nhung Nguyen | Matthew Shardlow | Sophia Ananiadou
Proceedings of the Workshop on Text Simplification, Accessibility, and Readability (TSAR-2022)

We present PromptLS, a method for fine-tuning large pre-trained Language Models (LM) to perform the task of Lexical Simplification. We use a predefined template to attain appropriate replacements for a term, and fine-tune a LM using this template on language specific datasets. We filter candidate lists in post-processing to improve accuracy. We demonstrate that our model can work in a) a zero shot setting (where we only require a pre-trained LM), b) a fine-tuned setting (where language-specific data is required), and c) a multilingual setting (where the model is pre-trained across multiple languages and fine-tuned in an specific language). Experimental results show that, although the zero-shot setting is competitive, its performance is still far from the fine-tuned setting. Also, the multilingual is unsurprisingly worse than the fine-tuned model. Among all TSAR-2022 Shared Task participants, our team was ranked second in Spanish and third in English.

2021

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Investigating Text Simplification Evaluation
Laura Vásquez-Rodríguez | Matthew Shardlow | Piotr Przybyła | Sophia Ananiadou
Findings of the Association for Computational Linguistics: ACL-IJCNLP 2021