Nuria Oliver
2025
ELLIS Alicante at CQs-Gen 2025: Winning the critical thinking questions shared task: LLM-based question generation and selection
Lucile Favero
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Daniel Frases
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Juan Antonio Pérez-Ortiz
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Tanja Käser
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Nuria Oliver
Proceedings of the 12th Argument mining Workshop
The widespread adoption of chat interfaces based on Large Language Models (LLMs) raises concerns about promoting superficial learning and undermining the development of critical thinking skills. Instead of relying on LLMs purely for retrieving factual information, this work explores their potential to foster deeper reasoning by generating critical questions that challenge unsupported or vague claims in debate interventions. This study is part of a shared task of the 12th Workshop on Argument Mining, co-located with ACL 2025, focused on automatic critical question generation. We propose a two-step framework involving two small-scale open source language models: a Questioner that generates multiple candidate questions and a Judge that selects the most relevant ones. Our system ranked first in the shared task competition, demonstrating the potential of the proposed LLM-based approach to encourage critical engagement with argumentative texts.
Guardians of Trust: Risks and Opportunities for LLMs in Mental Health
Miguel Baidal
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Erik Derner
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Nuria Oliver
Proceedings of the Fourth Workshop on NLP for Positive Impact (NLP4PI)
The integration of large language models (LLMs) into mental health applications offers promising opportunities for positive social impact. However, it also presents critical risks. While previous studies have often addressed these challenges and risks individually, a broader and multi-dimensional approach is still lacking. In this paper, we introduce a taxonomy of the main challenges related to the use of LLMs for mental health and propose a structured, comprehensive research agenda to mitigate them. We emphasize the need for explainable, emotionally aware, culturally sensitive, and clinically aligned systems, supported by continuous monitoring and human oversight. By placing our work within the broader context of natural language processing (NLP) for positive impact, this research contributes to ongoing efforts to ensure that technological advances in NLP responsibly serve vulnerable populations, fostering a future where mental health solutions improve rather than endanger well-being.
2014
A Context-Aware NLP Approach For Noteworthiness Detection in Cellphone Conversations
Francesca Bonin
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Jose San Pedro
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Nuria Oliver
Proceedings of COLING 2014, the 25th International Conference on Computational Linguistics: Technical Papers
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- Miguel Baidal 1
- Francesca Bonin 1
- Erik Derner 1
- Lucile Favero 1
- Daniel Frases 1
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