In fundraising management, the assessment of the expected gift is a key point. The availability of accurate estimates of the number of donations, their amounts, and the gift probability is relevant in order to evaluate the results of a fundraising campaign. The accuracy of the expected gift esti- mation depends on the appropriate use of the information about Donors. In this contribution, we propose a non-parametric methodology for the prediction of Donors' behavior based on Arti cial Neural Networks. In particular, Multi-Layer Perceptron is applied. In the numerical experi- ments, the expected gift is then estimated based on a simulated dataset of Donors' individual characteristics and information on donations history.

Diana Barro, Luca Barzanti, Marco Corazza, Martina Nardon (2023). Machine Learning and Fundraising: Applications of Artificial Neural Networks. Venezia : Department of Economics.

Machine Learning and Fundraising: Applications of Artificial Neural Networks

Luca Barzanti;
2023

Abstract

In fundraising management, the assessment of the expected gift is a key point. The availability of accurate estimates of the number of donations, their amounts, and the gift probability is relevant in order to evaluate the results of a fundraising campaign. The accuracy of the expected gift esti- mation depends on the appropriate use of the information about Donors. In this contribution, we propose a non-parametric methodology for the prediction of Donors' behavior based on Arti cial Neural Networks. In particular, Multi-Layer Perceptron is applied. In the numerical experi- ments, the expected gift is then estimated based on a simulated dataset of Donors' individual characteristics and information on donations history.
2023
Working Paper
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Diana Barro, Luca Barzanti, Marco Corazza, Martina Nardon (2023). Machine Learning and Fundraising: Applications of Artificial Neural Networks. Venezia : Department of Economics.
Diana Barro; Luca Barzanti; Marco Corazza; Martina Nardon
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/952879
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