重新审视采纳的实证模型:采纳率及其决定因素的平均处理效应估计

Taking a new look at empirical models of adoption: average treatment effect estimation of adoption rates and their determinants

Agricultural Economics · 2007
被引 208 · 同刊同年前 3%
人大 A-

中文导读

证明样本采纳率不能一致估计总体采纳率,而是估计总体暴露与采纳的联合率;利用反事实结果框架,将总体采纳率定义为平均处理效应,并推导出一致估计量,应用于科特迪瓦NERICA水稻品种的采纳分析。

Abstract

Abstract This article shows that the observed sample adoption rate does not consistently estimate the population adoption rate even if the sample is random. It is proved that instead the sample adoption rate is a consistent estimate of the population joint exposure and adoption rate, which does not inform about adoption per se. Likewise, it is shown that a model of adoption with observed adoption outcome as a dependent variable and where exposure to the technology is not observed and controlled for cannot yield consistent estimates of the determinants of adoption. The article uses the counterfactual outcomes framework to show that the true population adoption rate corresponds to what is defined in the modern policy evaluation literature as the average treatment effect (ATE), which measures the effect or impact of a “treatment” on a person randomly selected in the population. In the adoption context, a “treatment” corresponds to exposure to the technology. The article uses the ATE estimation framework to derive consistent nonparametric and parametric estimators of population adoption rates and their determinants and applies the results to consistently estimate the population adoption rates and determinants of the NERICA (New Rice for Africa) rice varieties in Côte d'Ivoire. The ATE methodological approach developed in the article has significant policy implications with respect to judging the intrinsic merit of a new technology in terms of its potential demand by the target population independently of issues related to its accessibility and in terms of the decision to invest or not in its wide‐scale dissemination.

平均处理效应技术采纳率决定因素非参数估计