Feb. 2, 2024, 9:45 p.m. | Congyu Fang Adam Dziedzic Lin Zhang Laura Oliva Amol Verma Fahad Razak Nicolas Papernot Bo Wan

cs.LG updates on arXiv.org arxiv.org

Machine Learning (ML) has demonstrated its great potential on medical data analysis. Large datasets collected from diverse sources and settings are essential for ML models in healthcare to achieve better accuracy and generalizability. Sharing data across different healthcare institutions is challenging because of complex and varying privacy and regulatory requirements. Hence, it is hard but crucial to allow multiple parties to collaboratively train an ML model leveraging the private datasets available at each party without the need for direct sharing …

accuracy analysis collaborative cs.cr cs.lg data data analysis datasets decentralised diverse healthcare hospital large datasets machine machine learning medical medical data ml models privacy regulatory requirements sharing data

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