A Method of Correcting for Misreporting Applied to the Food Stamp Program

N. Mittag
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引用次数: 9

Abstract

Survey misreporting is known to be pervasive and bias common statistical analyses. In this paper, I first use administrative data on SNAP receipt and amounts linked to American Community Survey data from New York State to show that survey data can misrepresent the program in important ways. For example, more than 1.4 billion dollars received are not reported in New York State alone. 46 percent of dollars received by house- holds with annual income above the poverty line are not reported in the survey data, while only 19 percent are missing below the poverty line. Standard corrections for measurement error cannot remove these biases. I then develop a method to obtain consistent estimates by combining parameter estimates from the linked data with publicly available data. This conditional density method recovers the correct estimates using public use data only, which solves the problem that access to linked administrative data is usually restricted. I examine the degree to which this approach can be used to extrapolate across time and geography, in order to solve the problem that validation data is often based on a convenience sample. I present evidence from within New York State that the extent of heterogeneity is small enough to make extrapolation work well across both time and geography. Extrapolation to the entire U.S. yields substantive differences to survey data and reduces deviations from official aggregates by a factor of 4 to 9 compared to survey aggregates.
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一种用于食品券计划的误报纠正方法
众所周知,统计分析中普遍存在调查误报和偏见。在本文中,我首先使用了有关SNAP收据的管理数据以及与纽约州美国社区调查数据相关的金额,以表明调查数据可以在重要方面歪曲该计划。例如,仅纽约州就有超过14亿美元的收入没有上报。年收入在贫困线以上的家庭收到的美元中,46%没有在调查数据中报告,而低于贫困线的家庭只有19%没有在调查数据中报告。测量误差的标准修正不能消除这些偏差。然后,我开发了一种方法,通过将来自链接数据的参数估计与公开可用的数据相结合来获得一致的估计。这种条件密度方法仅使用公共使用数据恢复正确的估计,从而解决了访问链接管理数据通常受到限制的问题。为了解决验证数据通常基于方便样本的问题,我研究了这种方法在多大程度上可以用于跨时间和地理的外推。我提供了来自纽约州内部的证据,表明异质性的程度足够小,可以在时间和地理上很好地进行外推。对整个美国进行外推,与调查数据产生了实质性的差异,与调查数据相比,与官方统计数据的偏差减少了4到9倍。
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