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Overcoming data barriers in spatial agri-food systems analysis: A flexible imputation framework
Authors:Jing Yi  Samantha Cohen  Sarah Rehkamp  Patrick Canning  Miguel I Gómez  Houtian Ge
Institution:1. Charles H. Dyson School of Applied Economics and Management, Cornell University, Ithaca, New York, USA;2. USDA Economic Research Service, Washington, DC, USA
Abstract:Suppressions in public data severely limit the usefulness of spatial data and hinder research applications. In this context, data imputation is necessary to deal with suppressed values. We present and validate a flexible data imputation method that can aid in the completion of under-determined data systems. The validations use Monte Carlo and optimisation modelling techniques to recover suppressed data tables from the 2017 US Census of Agriculture. We then use econometric models to evaluate the accuracy of imputations from alternative models. Various metrics of forecast accuracy (i.e., MAPE, BIC, etc.) show the flexibility and capacity of this approach to accurately recover suppressed data. To illustrate the value of our method, we compare the livestock water withdrawal estimations with imputed data and suppressed data to show the bias in research applications when suppressions are simply dropped from analysis.
Keywords:census of agriculture  data suppressions  mathematical programing  Monte Carlo  spatial data systems
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