克服空间农业食品系统分析中的数据障碍:一个灵活的插补框架

IF 3.4 2区 经济学 Q1 AGRICULTURAL ECONOMICS & POLICY Journal of Agricultural Economics Pub Date : 2023-01-04 DOI:10.1111/1477-9552.12523
Jing Yi, Samantha Cohen, Sarah Rehkamp, Patrick Canning, Miguel I. Gómez, Houtian Ge
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引用次数: 0

摘要

公共数据的抑制严重限制了空间数据的有用性,阻碍了研究应用。在这种情况下,数据输入是必要的,以处理被抑制的值。我们提出并验证了一种灵活的数据输入方法,可以帮助完成欠确定的数据系统。验证使用蒙特卡罗和优化建模技术从2017年美国农业普查中恢复被抑制的数据表。然后,我们使用计量经济模型来评估替代模型的估算准确性。预测精度的各种指标(即MAPE, BIC等)显示了这种方法准确恢复被抑制数据的灵活性和能力。为了说明我们的方法的价值,我们将牲畜取水估计与输入数据和抑制数据进行比较,以显示当从分析中简单地删除抑制数据时,研究应用中的偏差。
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Overcoming data barriers in spatial agri-food systems analysis: A flexible imputation framework

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.

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来源期刊
Journal of Agricultural Economics
Journal of Agricultural Economics 管理科学-农业经济与政策
CiteScore
7.90
自引率
2.90%
发文量
48
审稿时长
>24 weeks
期刊介绍: Published on behalf of the Agricultural Economics Society, the Journal of Agricultural Economics is a leading international professional journal, providing a forum for research into agricultural economics and related disciplines such as statistics, marketing, business management, politics, history and sociology, and their application to issues in the agricultural, food, and related industries; rural communities, and the environment. Each issue of the JAE contains articles, notes and book reviews as well as information relating to the Agricultural Economics Society. Published 3 times a year, it is received by members and institutional subscribers in 69 countries. With contributions from leading international scholars, the JAE is a leading citation for agricultural economics and policy. Published articles either deal with new developments in research and methods of analysis, or apply existing methods and techniques to new problems and situations which are of general interest to the Journal’s international readership.
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