Making Early and Accurate Deep Learning Predictions to Help Disadvantaged Individuals in Medical Crowdfunding
成果类型:
Article; Early Access
署名作者:
Wang, Tong; Jin, Fujie; Hu, Yu Jeffrey; Feng, Lu; Cheng, Yuan
署名单位:
Yale University; Indiana University System; IU Kelley School of Business; Indiana University Bloomington; Purdue University System; Purdue University; University of Electronic Science & Technology of China; Tsinghua University
刊物名称:
PRODUCTION AND OPERATIONS MANAGEMENT
ISSN/ISSBN:
1059-1478
DOI:
10.1177/10591478241231846
发表日期:
2024
关键词:
early predictions
Deep learning
medical crowdfunding
temporal clustering
disadvantaged individuals
摘要:
Medical crowdfunding is a popular channel for people seeking financial assistance to cover their medical expenses, allowing them to collect donations from a large number of donors. However, a mismatch between the supply and demand of donations creates large heterogeneity in the fundraising outcomes across medical crowdfunding campaigns, and such uncertainty can impede the timely planning of treatment for patients. Providing early and accurate forecasts for medical crowdfunding performance can better inform fundraisers and assist them in optimizing timely interventions to improve fundraising outcomes. In this study, we propose a new approach that effectively combines time-varying features and time-invariant features in a deep learning model, to provide dynamic predictions of fundraising outcomes. When compared with a comprehensive set of baseline models, our model consistently demonstrates higher predictive accuracy while requiring a shorter observation window of data, thus achieving both accurate and early prediction objectives. We further conduct a temporal clustering analysis to analyze the heterogeneous patterns in how the time-varying features relate to fundraising outcomes. In addition, we perform simulation analyses to demonstrate that interventions from fundraisers can significantly improve the fundraising performance of disadvantaged cases that are predicted to receive the lowest donation amounts, particularly when the interventions are implemented early. These findings show that our deep learning prediction model and the actionable insights can provide timely feedback to fundraisers and promote equal access to resources for all. Our proposed approach is applicable to various contexts, enabling effective processing of diverse sources of data and facilitating early interventions.