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Article
Machine Learning in Agricultural and Applied Economics
European Review of Agricultural Economics (2019)
  • Hugo Storm, University of Bonn
  • Kathy Baylis
  • Thomas Heckelei, University of Bonn
Abstract
This review presents machine learning (ML) approaches from an applied economist’s perspective. We first introduce the key ML methods drawing connections to econometric practice. We then identify current limitations of the econometric and simulation model toolbox in applied economics and explore potential solutions afforded by ML. We dive into cases such as inflexible functional forms, unstructured data sources and large numbers of explanatory variables in both prediction and causal analysis, and highlight the challenges of complex simulation models. Finally, we argue that economists have a vital role in addressing the shortcomings of ML when used for quantitative economic analysis.
Keywords
  • machine learning,
  • econometrics,
  • simulation models,
  • quantitative economic analysis,
  • agri-environmental policy analysis
Publication Date
2019
Citation Information
Hugo Storm, Kathy Baylis and Thomas Heckelei. "Machine Learning in Agricultural and Applied Economics" European Review of Agricultural Economics (2019) p. 1 - 44
Available at: http://works.bepress.com/kathy_baylis/105/