A framework for grassroots research collaboration in machine learning and global health
Currin C, Asiedu MN, Fourie C, Rosman B, Turki H, Lambebo Tonja A, Abbott J, Ajala M, Adedayo SA, Emezue CC, Machangara D. 2023. A framework for grassroots research collaboration in machine learning and global health. 1st Workshop on Machine Learning & Global Health. ICLR: International Conference on Learning Representations.
Download (ext.)
https://openreview.net/forum?id=jHY_G91R880
[Published Version]
Conference Paper
| Published
| English
Author
Currin, ChristopherISTA ;
Asiedu , Mercy Nyamewaa;
Fourie, Chris;
Rosman, Benjamin;
Turki, Houcemeddine;
Lambebo Tonja, Atnafu;
Abbott, Jade;
Ajala, Marvellous;
Adedayo, Sadiq Adewale;
Emezue, Chris Chinenye;
Machangara, Daphne
Department
Abstract
Traditional top-down approaches for global health have historically failed to achieve social progress (Hoffman et al., 2015; Hoffman & Røttingen, 2015). Recently, however, a more holistic, multi-level approach termed One Health (OH) (Osterhaus et al., 2020) is being adopted. Several sets of challenges have been identified for the implementation of OH (dos S. Ribeiro et al., 2019), including policy and funding, education and training, and multi-actor, multi-domain, and multi-level collaborations. These exist despite the increasing accessibility to
knowledge and digital collaborative research tools through the internet. To address some of these challenges, we propose a general framework for grassroots community-based means of participatory research. Additionally, we present a specific roadmap to create a Machine Learning for Global Health community in Africa. The proposed framework aims to enable any small group of individuals with scarce resources to build and sustain an online community within approximately two years. We provide a discussion on the potential impact of the proposed framework for global health research collaborations.
Publishing Year
Date Published
2023-03-02
Proceedings Title
1st Workshop on Machine Learning & Global Health
Publisher
OpenReview
Acknowledgement
Houcemeddine Turki’s contributions to this final output have been funded through the Adapting
Wikidata to support clinical practice using Data Science, Semantic Web and Machine Learning
project, which is part of the Wikimedia Research Fund maintained by the Wikimedia Foundation in San Francisco, California, United States of America.
Conference
ICLR: International Conference on Learning Representations
Conference Location
Kigali, Rwanda
Conference Date
2023-05-05 – 2023-05-05
IST-REx-ID
Cite this
Currin C, Asiedu MN, Fourie C, et al. A framework for grassroots research collaboration in machine learning and global health. In: 1st Workshop on Machine Learning & Global Health. OpenReview; 2023.
Currin, C., Asiedu , M. N., Fourie, C., Rosman, B., Turki, H., Lambebo Tonja, A., … Machangara, D. (2023). A framework for grassroots research collaboration in machine learning and global health. In 1st Workshop on Machine Learning & Global Health. Kigali, Rwanda: OpenReview.
Currin, Christopher, Mercy Nyamewaa Asiedu , Chris Fourie, Benjamin Rosman, Houcemeddine Turki, Atnafu Lambebo Tonja, Jade Abbott, et al. “A Framework for Grassroots Research Collaboration in Machine Learning and Global Health.” In 1st Workshop on Machine Learning & Global Health. OpenReview, 2023.
C. Currin et al., “A framework for grassroots research collaboration in machine learning and global health,” in 1st Workshop on Machine Learning & Global Health, Kigali, Rwanda, 2023.
Currin C, Asiedu MN, Fourie C, Rosman B, Turki H, Lambebo Tonja A, Abbott J, Ajala M, Adedayo SA, Emezue CC, Machangara D. 2023. A framework for grassroots research collaboration in machine learning and global health. 1st Workshop on Machine Learning & Global Health. ICLR: International Conference on Learning Representations.
Currin, Christopher, et al. “A Framework for Grassroots Research Collaboration in Machine Learning and Global Health.” 1st Workshop on Machine Learning & Global Health, OpenReview, 2023.
All files available under the following license(s):
Copyright Statement:
This Item is protected by copyright and/or related rights. [...]
Link(s) to Main File(s)
Access Level
Open Access