不可重复结果的影响评估:森林保护案例

IF 5.5 3区 经济学 Q1 BUSINESS
Alberto Garcia , Robert Heilmayr
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引用次数: 0

摘要

将准实验影响评估应用于森林砍伐的遥感测量已产生了详细说明保护政策有效性的重要证据。然而,研究人员对大多数森林砍伐数据集的二元和不可重复结构关注不够。通过分析证明和模拟,我们证明了许多常用的计量经济学方法在应用于二元和不可重复的结果时存在偏差。许多研究中估计效果的意义、大小甚至方向都可能是不正确的,有可能破坏支持保护政策采用和设计的证据基础。为了解决这些问题,我们为面板计量经济模型的设计提供了指导和新策略,从而对森林保护政策的影响做出更可靠的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact evaluation with nonrepeatable outcomes: The case of forest conservation

The application of quasiexperimental impact evaluation to remotely sensed measures of deforestation has yielded important evidence detailing the effectiveness of conservation policies. However, researchers have paid insufficient attention to the binary and nonrepeatable structure of most deforestation datasets. Using analytical proofs and simulations, we demonstrate that many commonly employed econometric approaches are biased when applied to binary and nonrepeatable outcomes. The significance, magnitude and even direction of estimated effects from many studies are likely incorrect, threatening to undermine the evidence base that underpins conservation policy adoption and design. To address these concerns, we provide guidance and new strategies for the design of panel econometric models that yield more reliable estimates of the impacts of forest conservation policies.

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来源期刊
CiteScore
8.00
自引率
4.30%
发文量
91
期刊介绍: The Journal of Environmental Economics and Management publishes theoretical and empirical papers devoted to specific natural resources and environmental issues. For consideration, papers should (1) contain a substantial element embodying the linkage between economic systems and environmental and natural resources systems or (2) be of substantial importance in understanding the management and/or social control of the economy in its relations with the natural environment. Although the general orientation of the journal is toward economics, interdisciplinary papers by researchers in other fields of interest to resource and environmental economists will be welcomed.
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