授权非营利组织通过机器学习减少捐赠损耗

Rishabh Singh, P. Sonewar, Manish Kumar, Ashwini Shingare, Anand Deshpande, Kumar Satyam, Joseph Colorafi, S. Kakade, Karen Jiggins Colorafi
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引用次数: 0

摘要

许多非营利组织(NPOs)的使命是通过提供安全和支持服务来增强弱势群体的权能,从而建立一个更健康的社会社区。这些组织成功的关键因素是来自个人、组织、企业和政府的慷慨和持续的捐赠。为了保持财政上的可行性和使命的有效性,非营利组织必须实现捐赠目标。这需要更好地了解捐赠活动,更具体地说,是现有捐赠者的倾向/流失。作为一种人工智能(AI)技术,机器学习可以在了解捐助者在不同时间和不同活动中的反应模式方面发挥至关重要的作用。这种数据驱动的见解可以帮助组织设计有效和个性化的活动,从而减少捐赠者的流失,吸引新的捐赠者,并增加每个捐赠者的捐赠金额。在本文中,我们提出了一种创新的无监督机器学习技术(K-Means)与近因、频率和货币(RFM)模型相结合的应用,以帮助改善美国非营利组织的成果,该组织的使命是帮助有需要的家庭。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering Nonprofit Organization to Reduce Donation Attrition with Machine Learning
Many Nonprofit organizations (NPOs) have a mission to empower vulnerable populations by providing safety and support services to build a healthier social community. The critical success factor for these organizations is generous and consistent donations from individuals, organizations, businesses, and governments. To remain financially viable and effective in mission, NPOs must achieve donation objectives. This demands a better understanding of donation activities and more specifically propensity/churn of existing donors. An Artificial Intelligence (AI) technique, Machine Learning can play a vital role in gaining insight into patterns of donors' response over the time and for various campaigns. Such data driven insights can help organizations design effective and personalized campaigns that result in reduced donor churn, attract new donors, and increase per donor donation amount. In this paper, we present an innovative application of unsupervised machine learning technique (K-Means) used with a Recency, Frequency, and Monetary (RFM) model to help improve outcomes of a US-based NPO with a mission to help families in need.
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