journal article Jan 01, 2022

Making Early and Accurate Deep Learning Predictions to Help Disadvantaged Individuals in Medical Crowdfunding

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Published
Jan 01, 2022
Cite This Article
Tong Wang, Fujie Jin, Yuan Cheng, et al. (2022). Making Early and Accurate Deep Learning Predictions to Help Disadvantaged Individuals in Medical Crowdfunding. SSRN Electronic Journal. https://doi.org/10.2139/ssrn.3404763
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