Georgi Grazhdanski

1paper

1 Paper

63.0CLApr 7
Team Fusion@ SU@ BC8 SympTEMIST track: transformer-based approach for symptom recognition and linking

Georgi Grazhdanski, Sylvia Vassileva, Ivan Koychev et al.

This paper presents a transformer-based approach to solving the SympTEMIST named entity recognition (NER) and entity linking (EL) tasks. For NER, we fine-tune a RoBERTa-based (1) token-level classifier with BiLSTM and CRF layers on an augmented train set. Entity linking is performed by generating candidates using the cross-lingual SapBERT XLMR-Large (2), and calculating cosine similarity against a knowledge base. The choice of knowledge base proves to have the highest impact on model accuracy.