A machine learning approach to fundraising success in higher education

New donor acquisition and current donor promotion are the two major programs in fundraising for higher education, and developing proper targeting strategies plays an important role in the both programs. This thesis presents machine learning solutions as targeting strategies for the both programs ba...

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Bibliographic Details
Main Author: Ye, Liang
Other Authors: Wu, Kui
Language:English
en
Published: 2017
Subjects:
Online Access:http://hdl.handle.net/1828/8028
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spelling ndltd-uvic.ca-oai-dspace.library.uvic.ca-1828-80282017-05-03T17:20:57Z A machine learning approach to fundraising success in higher education Ye, Liang Wu, Kui machine learning fundraising support vector machine random forest na ̈ıve bayes predictive analysis prospect research New donor acquisition and current donor promotion are the two major programs in fundraising for higher education, and developing proper targeting strategies plays an important role in the both programs. This thesis presents machine learning solutions as targeting strategies for the both programs based on readily available alumni data in almost any institution. The targeting strategy for new donor acquisition is modeled as a donor identification problem. The Gaussian na ̈ıve bayes, random forest, and support vector machine algorithms are used and evaluated. The test results show that having been trained with enough samples, all three algorithms can distinguish donors from rejectors well, and big donors are identified more often than others.While there is a trade off between the cost of soliciting candidates and the success of donor acquisition, the results show that in a practical scenario where the models are properly used as the targeting strategy, more than 85% of new donors and more than 90% of new big donors can be acquired when only 40% of the candidates are solicited. The targeting strategy for donor promotion is modeled as a promising donor(i.e., those who will upgrade their pledge) prediction problem in machine learning.The Gaussian na ̈ıve bayes, random forest, and support vector machine algorithms are tested. The test results show that all the three algorithms can distinguish promising donors from non-promising donors (i.e., those who will not upgrade their pledge).When the age information is known, the best model produces an overall accuracy of 97% in the test set. The results show that in a practical scenario where the models are properly used as the targeting strategy, more than 85% of promising donors can be acquired when only 26% candidates are solicited. Graduate liangye714@gmail.com 2017-05-01T14:59:44Z 2017-05-01T14:59:44Z 2017 2017-05-01 Thesis http://hdl.handle.net/1828/8028 English en Available to the World Wide Web
collection NDLTD
language English
en
sources NDLTD
topic machine learning
fundraising
support vector machine
random forest
na ̈ıve bayes
predictive analysis
prospect research
spellingShingle machine learning
fundraising
support vector machine
random forest
na ̈ıve bayes
predictive analysis
prospect research
Ye, Liang
A machine learning approach to fundraising success in higher education
description New donor acquisition and current donor promotion are the two major programs in fundraising for higher education, and developing proper targeting strategies plays an important role in the both programs. This thesis presents machine learning solutions as targeting strategies for the both programs based on readily available alumni data in almost any institution. The targeting strategy for new donor acquisition is modeled as a donor identification problem. The Gaussian na ̈ıve bayes, random forest, and support vector machine algorithms are used and evaluated. The test results show that having been trained with enough samples, all three algorithms can distinguish donors from rejectors well, and big donors are identified more often than others.While there is a trade off between the cost of soliciting candidates and the success of donor acquisition, the results show that in a practical scenario where the models are properly used as the targeting strategy, more than 85% of new donors and more than 90% of new big donors can be acquired when only 40% of the candidates are solicited. The targeting strategy for donor promotion is modeled as a promising donor(i.e., those who will upgrade their pledge) prediction problem in machine learning.The Gaussian na ̈ıve bayes, random forest, and support vector machine algorithms are tested. The test results show that all the three algorithms can distinguish promising donors from non-promising donors (i.e., those who will not upgrade their pledge).When the age information is known, the best model produces an overall accuracy of 97% in the test set. The results show that in a practical scenario where the models are properly used as the targeting strategy, more than 85% of promising donors can be acquired when only 26% candidates are solicited. === Graduate === liangye714@gmail.com
author2 Wu, Kui
author_facet Wu, Kui
Ye, Liang
author Ye, Liang
author_sort Ye, Liang
title A machine learning approach to fundraising success in higher education
title_short A machine learning approach to fundraising success in higher education
title_full A machine learning approach to fundraising success in higher education
title_fullStr A machine learning approach to fundraising success in higher education
title_full_unstemmed A machine learning approach to fundraising success in higher education
title_sort machine learning approach to fundraising success in higher education
publishDate 2017
url http://hdl.handle.net/1828/8028
work_keys_str_mv AT yeliang amachinelearningapproachtofundraisingsuccessinhighereducation
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