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Michael Safo Oduro

University of Northern Colorado



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Han Yu

University of Northern Colorado



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43 – SPEED: Statistics in Sports; Physical Activity/Sleep Studies, and Nonparametrics Part 1

The Computational Performance of Machine Learning Methods in The Success Prediction of Kickstarter Campaigns

Sponsor: Section on Statistics in Sports
Keywords: Crowdfunding, KickStarter, Machine Learning Methods, Entrepreneurship

Michael Safo Oduro

University of Northern Colorado

Han Yu

University of Northern Colorado

Crowdfunding is a large group or “crowd” of people who are interested in investment or donation activities to support project ideas financially. There are several kinds of crowdfunding such as equity, lending, rewards and donation crowdfunding. Kickstarter is one of the world‘s most prominent reward-based crowd funding platforms. This study exploits the use of machine learning methods to examine the latent structure of a web-scrapped Kickstarter data. The focal point of this project is to analyze this data by using machine learning algorithms to predict the success of a crowdfunding campaign using features inclusive of project category, duration in days from launch to deadline, population in city and many other features. The computational complexity and reliability of the predictive performance of these algorithms are examined on the large scale data.

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