Biomedical entities recognition in Spanish combining word embeddings

  1. LÓPEZ ÚBEDA, PILAR
Dirigida por:
  1. Luis Alfonso Ureña López Director/a
  2. María Teresa Martín Valdivia Codirector/a
  3. Manuel Carlos Díaz Galiano Codirector/a

Universidad de defensa: Universidad de Jaén

Fecha de defensa: 22 de abril de 2021

Tribunal:
  1. Rafael Muñoz Guillena Presidente
  2. Paloma Martínez Fernández Secretario/a
  3. Manuel Montes Gomez Vocal

Tipo: Tesis

Teseo: 665953 DIALNET lock_openRUJA editor

Resumen

Named Entity Recognition (NER) is an important task in the field of Natural Language Processing that is used to extract meaningful knowledge from textual documents. The goal of NER is to identify text fragments that refer to specific entities. In this thesis we aim to address the task of NER in the Spanish biomedical domain. In this domain entities can refer to drug, symptom and disease names and offer valuable knowledge to health experts. For this purpose, we propose a model based on neural networks and employ a combination of word embeddings. In addition, we generate new domain- and language-specific embeddings to test their effectiveness. Finally, we show that the combination of different word embeddings as input to the neural network improves the state-of-the-art results in the applied scenarios.