Medical Argument Mining: Exploitation of Scarce Data Using NLI Systems

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Abstract
This work presents an Argument Mining process that extracts argumentative entities from clinical texts and identifies their relationships using token classification and Natural Language Inference techniques. Compared to straightforward methods like text classification, this methodology demonstrates superior performance in data-scarce settings. By assessing the effectiveness of these methods in identifying argumentative structures that support or refute possible diagnoses, this research lays the groundwork for future tools that can provide evidence-based justifications for machine-generated clinical conclusions.
View on arXiv@article{urruela2025_2506.12823, title={ Medical Argument Mining: Exploitation of Scarce Data Using NLI Systems }, author={ Maitane Urruela and Sergio Martín and Iker De la Iglesia and Ander Barrena }, journal={arXiv preprint arXiv:2506.12823}, year={ 2025 } }
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