SOTAVerified

Intent Detection and Entity Extraction from BioMedical Literature

2024-04-04Code Available0· sign in to hype

Ankan Mullick, Mukur Gupta, Pawan Goyal

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Biomedical queries have become increasingly prevalent in web searches, reflecting the growing interest in accessing biomedical literature. Despite recent research on large-language models (LLMs) motivated by endeavours to attain generalized intelligence, their efficacy in replacing task and domain-specific natural language understanding approaches remains questionable. In this paper, we address this question by conducting a comprehensive empirical evaluation of intent detection and named entity recognition (NER) tasks from biomedical text. We show that Supervised Fine Tuned approaches are still relevant and more effective than general-purpose LLMs. Biomedical transformer models such as PubMedBERT can surpass ChatGPT on NER task with only 5 supervised examples.

Tasks

Reproductions