This paper studies optimal targeting as a means to increase fundraising efficacy. We randomly provide potential donors with an unconditional gift and use causal-machine learning techniques to "optimally" target this fundraising tool to the predicted net donors: individuals who, in expectation, give more than their solicitation costs. With this strategy, our fundraiser avoids lossy solicitations, significantly boosts available funds, and, consequently, can increase service and goods provision. Further, to realize these gains, the charity can merely rely on readily available data. We conclude that charities that refrain from fundraising targeting waste significant resources.
翻译:本文研究最佳目标选择,以此提高筹资效率。我们随机地向潜在捐助方提供无条件的礼品,并使用因果学习技术“最理想地”将这一筹资工具锁定给预测的净捐助方:预期会付出超出其邀约成本的个人。通过这一战略,我们的筹款者避免了损失的招标,大幅增加了可用资金,从而可以增加服务和货物供应。此外,为了实现这些收益,慈善组织只能依靠现成的数据。我们的结论是,不以浪费大量资源的慈善组织进行筹资。