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VIDEO DOI: https://doi.org/10.48448/mqa4-m007

workshop paper

ACL 2024

August 15, 2024

Bangkok, Thailand

CogAI@SMM4H 2024: Leveraging BERT-based Ensemble Models for Classifying Tweets on Developmental Disorders

keywords:

mental-bert

social-media-mining

asd

adhd

ensemble

bert

This paper presents our work for the Task 5 of the Social Media Mining for Health Applica- tions 2024 Shared Task - Binary classification of English tweets reporting children’s medical disorders. In this paper, we present and com- pare multiple approaches for automatically clas- sifying tweets from parents based on whether they mention having a child with attention- deficit/hyperactivity disorder (ADHD), autism spectrum disorders (ASD), delayed speech, or asthma. We use ensemble of various BERT- based models trained on provided dataset that yields an F1 score of 0.901 on the test data.

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