Analytical Exploration for Duke Development

Project Summary

Natalie Bui (Math/Economics), David Cheng (Electrical & Computer Engineering), and Cathy Lee (Statistics) spent ten weeks helping the Prospect Management and Analytics office of Duke Development understand how a variety of analytic techniques might enhance their workflow. The team used topic modeling and named entity recognition to develop a pipeline that clusters potential prospects into useful categories.

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Themes and Categories
Year
2018
Contact
Paul Bendich
Mathematics
bendich@math.duke.edu

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