abachaa/MEDIQA2019
Challenge on Textual Inference and Question Entailment in the Medical Domain https://sites.google.com/view/mediqa2019
This project provides datasets and evaluation tools for medical natural language processing tasks. It helps researchers and developers create and test systems that can understand the relationship between medical texts, determine if one medical question implies another, and answer medical questions. The output includes performance metrics for these systems, used by NLP researchers focused on healthcare applications.
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Use this if you are an NLP researcher or developer working on understanding medical text and need standardized datasets and evaluation scripts for tasks like textual inference or question answering in the medical domain.
Not ideal if you are a medical practitioner looking for a ready-to-use application to answer clinical questions or summarize patient notes.
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Python
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Last pushed
Jan 27, 2023
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