SNAP enrollment cycles: New insights from heterogeneous panel models with cross-sectional dependence

IF 4.2 2区 经济学 Q1 AGRICULTURAL ECONOMICS & POLICY
Pourya Valizadeh, Bart L. Fischer, Henry L. Bryant
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引用次数: 1

Abstract

The Supplemental Nutrition Assistance Program (SNAP) has grown rapidly over the past 2 decades. A large literature relies on state-level panel data on SNAP enrollment and implements traditional two-way fixed effects estimators to identify the impact of economic conditions on SNAP enrollment. This empirical strategy implicitly assumes slope parameter homogeneity and ignores the possibility of cross-sectional dependence in the regression error terms. The latter could feasibly arise in state-level panel data if the time-varying unobserved common shocks, such as national financial crises, have differential effects on SNAP participation across states in the United States. This study empirically evaluates the appropriateness of these two assumptions by adopting a more general common factor model, allowing for slope parameter heterogeneity and error term cross-sectional dependence both separately and jointly. We find that although assuming a common slope parameter across states does not seem problematic for identification, allowing for the error term cross-sectional dependence leads to a roughly 40% reduction in the estimated long-run impact of the unemployment rate on SNAP enrollment. This finding has important implications for policymaking decisions—even small biases could lead to suboptimal policy responses considering the program's size. Our counterfactual simulations support our main results, implying the importance of carefully accounting for time-varying unobserved heterogeneity when studying the cyclicality of SNAP enrollment using state-level panel data.

Abstract Image

SNAP入组周期:来自具有横断面依赖性的异质面板模型的新见解
补充营养援助计划(SNAP)在过去20年里发展迅速。大量文献依赖于国家层面的SNAP登记面板数据,并采用传统的双向固定效应估计来确定经济状况对SNAP登记的影响。这种经验策略隐含地假设斜率参数均匀性,忽略了回归误差项中横截面依赖的可能性。如果时间变化的未观察到的共同冲击,如国家金融危机,对美国各州的SNAP参与有不同的影响,则后者可能出现在州一级的面板数据中。本研究通过采用更一般的公因子模型,考虑斜率参数异质性和误差项截面相关性,分别或共同对这两个假设的适当性进行了实证评估。我们发现,尽管假设各州之间有一个共同的斜率参数对于识别似乎没有问题,但允许误差项横截面依赖性导致失业率对SNAP入学率的估计长期影响减少了大约40%。这一发现对政策制定决策具有重要意义——考虑到项目的规模,即使是很小的偏差也可能导致次优的政策反应。我们的反事实模拟支持我们的主要结果,这意味着在使用州级面板数据研究SNAP登记的周期性时,仔细考虑时变的未观察到的异质性的重要性。
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来源期刊
American Journal of Agricultural Economics
American Journal of Agricultural Economics 管理科学-农业经济与政策
CiteScore
9.10
自引率
4.80%
发文量
77
审稿时长
12-24 weeks
期刊介绍: The American Journal of Agricultural Economics provides a forum for creative and scholarly work on the economics of agriculture and food, natural resources and the environment, and rural and community development throughout the world. Papers should relate to one of these areas, should have a problem orientation, and should demonstrate originality and innovation in analysis, methods, or application. Analyses of problems pertinent to research, extension, and teaching are equally encouraged, as is interdisciplinary research with a significant economic component. Review articles that offer a comprehensive and insightful survey of a relevant subject, consistent with the scope of the Journal as discussed above, will also be considered. All articles published, regardless of their nature, will be held to the same set of scholarly standards.
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