LGMar 2, 2025

Machine Learning for Health symposium 2024 -- Findings track

arXiv:2503.00984v21 citationsh-index: 10
Originality Synthesis-oriented
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This is an incremental collection of works aimed at researchers and practitioners in machine learning for health to share and discuss non-archival findings.

This paper presents a collection of accepted Findings papers from the ML4H 2024 symposium, which showcased innovative research in health-related disciplines such as healthcare, biomedicine, and public health, with the goal of fostering new insights and collaborations.

A collection of the accepted Findings papers that were presented at the 4th Machine Learning for Health symposium (ML4H 2024), which was held on December 15-16, 2024, in Vancouver, BC, Canada. ML4H 2024 invited high-quality submissions describing innovative research in a variety of health-related disciplines including healthcare, biomedicine, and public health. Works could be submitted to either the archival Proceedings track, or the non-archival Findings track. The Proceedings track targeted mature, cohesive works with technical sophistication and high-impact relevance to health. The Findings track promoted works that would spark new insights, collaborations, and discussions at ML4H. Both tracks were given the opportunity to share their work through the in-person poster session. All the manuscripts submitted to ML4H Symposium underwent a double-blind peer-review process.

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