Kevin Patrick
United States Department of Agriculture
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Publication
Featured researches published by Kevin Patrick.
The International Food and Agribusiness Management Review | 2018
Jennifer Ifft; Ryan Kuhns; Kevin Patrick
Businesses, researchers, and policymakers in the agricultural and food sector regularly make use of large public, private, and administrative datasets for prediction, including forecasting, public policy targeting, and management research. Machine learning has the potential to substantially improve prediction with these datasets. In this study we demonstrate and evaluate several machine learning models for predicting demand for new credit with the 2014 Agricultural Resource Management Survey. Many, but not all, of the machine learning models used are shown to have stronger predictive power than standard econometric approaches. We provide a cost based model evaluation approach for managers to analyze returns to machine learning methods relative to standard econometric approaches. While there are potentially significant returns to machine learning methods, research objectives and firm-level costs are important considerations that in some cases may favor standard econometric approaches.
Choices | 2018
Ryan Kuhns; Kevin Patrick
Choices. The Magazine of Food, Farm, and Resources Issues | 2016
Kevin Patrick; Ryan Kuhns; Allison Borchers
Economic Information Bulletin | 2014
Jennifer Ifft; Amirdara Novini; Kevin Patrick
Amber Waves | 2014
Kevin Patrick; Jennifer Ifft
Choices | 2018
Ryan Kuhns; Kevin Patrick
Archive | 2017
Jennifer Ifft; Ryan Kuhns; Kevin Patrick
Archive | 2017
Jennifer Ifft; Todd Kuethe; Kevin Patrick
Amber Waves | 2016
Kevin Patrick; Ryan Kuhns
Agricultural Outlook Forum 2016 | 2016
Ryan Kuhns; Kevin Patrick