Juan Banda


2024

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Overview of the 9th Social Media Mining for Health Applications (#SMM4H) Shared Tasks at ACL 2024 – Large Language Models and Generalizability for Social Media NLP
Dongfang Xu | Guillermo Garcia | Lisa Raithel | Philippe Thomas | Roland Roller | Eiji Aramaki | Shoko Wakamiya | Shuntaro Yada | Pierre Zweigenbaum | Karen O’Connor | Sai Samineni | Sophia Hernandez | Yao Ge | Swati Rajwal | Sudeshna Das | Abeed Sarker | Ari Klein | Ana Schmidt | Vishakha Sharma | Raul Rodriguez-Esteban | Juan Banda | Ivan Amaro | Davy Weissenbacher | Graciela Gonzalez-Hernandez
Proceedings of The 9th Social Media Mining for Health Research and Applications (SMM4H 2024) Workshop and Shared Tasks

For the past nine years, the Social Media Mining for Health Applications (#SMM4H) shared tasks have promoted community-driven development and evaluation of advanced natural language processing systems to detect, extract, and normalize health-related information in publicly available user-generated content. This year, #SMM4H included seven shared tasks in English, Japanese, German, French, and Spanish from Twitter, Reddit, and health forums. A total of 84 teams from 22 countries registered for #SMM4H, and 45 teams participated in at least one task. This represents a growth of 180% and 160% in registration and participation, respectively, compared to the last iteration. This paper provides an overview of the tasks and participating systems. The data sets remain available upon request, and new systems can be evaluated through the post-evaluation phase on CodaLab.

2022

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Overview of the Seventh Social Media Mining for Health Applications (#SMM4H) Shared Tasks at COLING 2022
Davy Weissenbacher | Juan Banda | Vera Davydova | Darryl Estrada Zavala | Luis Gasco Sánchez | Yao Ge | Yuting Guo | Ari Klein | Martin Krallinger | Mathias Leddin | Arjun Magge | Raul Rodriguez-Esteban | Abeed Sarker | Lucia Schmidt | Elena Tutubalina | Graciela Gonzalez-Hernandez
Proceedings of The Seventh Workshop on Social Media Mining for Health Applications, Workshop & Shared Task

For the past seven years, the Social Media Mining for Health Applications (#SMM4H) shared tasks have promoted the community-driven development and evaluation of advanced natural language processing systems to detect, extract, and normalize health-related information in public, user-generated content. This seventh iteration consists of ten tasks that include English and Spanish posts on Twitter, Reddit, and WebMD. Interest in the #SMM4H shared tasks continues to grow, with 117 teams that registered and 54 teams that participated in at least one task—a 17.5% and 35% increase in registration and participation, respectively, over the last iteration. This paper provides an overview of the tasks and participants’ systems. The data sets remain available upon request, and new systems can be evaluated through the post-evaluation phase on CodaLab.

2021

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Overview of the Sixth Social Media Mining for Health Applications (#SMM4H) Shared Tasks at NAACL 2021
Arjun Magge | Ari Klein | Antonio Miranda-Escalada | Mohammed Ali Al-Garadi | Ilseyar Alimova | Zulfat Miftahutdinov | Eulalia Farre | Salvador Lima López | Ivan Flores | Karen O’Connor | Davy Weissenbacher | Elena Tutubalina | Abeed Sarker | Juan Banda | Martin Krallinger | Graciela Gonzalez-Hernandez
Proceedings of the Sixth Social Media Mining for Health (#SMM4H) Workshop and Shared Task

The global growth of social media usage over the past decade has opened research avenues for mining health related information that can ultimately be used to improve public health. The Social Media Mining for Health Applications (#SMM4H) shared tasks in its sixth iteration sought to advance the use of social media texts such as Twitter for pharmacovigilance, disease tracking and patient centered outcomes. #SMM4H 2021 hosted a total of eight tasks that included reruns of adverse drug effect extraction in English and Russian and newer tasks such as detecting medication non-adherence from Twitter and WebMD forum, detecting self-reported adverse pregnancy outcomes, detecting cases and symptoms of COVID-19, identifying occupations mentioned in Spanish by Twitter users, and detecting self-reported breast cancer diagnosis. The eight tasks included a total of 12 individual subtasks spanning three languages requiring methods for binary classification, multi-class classification, named entity recognition and entity normalization. With a total of 97 registering teams and 40 teams submitting predictions, the interest in the shared tasks grew by 70% and participation grew by 38% compared to the previous iteration.