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首页> 外文期刊>Journal of public economics >Estimating Permanent And Transitory Income Elasticities Of Education Spending From Panel Data
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Estimating Permanent And Transitory Income Elasticities Of Education Spending From Panel Data

机译:从面板数据估计教育支出的永久性和暂时性收入弹性

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摘要

We use a twenty-one year panel of data to examine the role of past income and aid, and expectations of future income, in regressions explaining state and local education spending. We show that simple estimates of the elasticity of spending with respect to financial resources are not robust to specification changes because the variables are non-stationary over time, causing inconsistent estimation of model parameters. Estimation in first differences (or equivalently, in growth rates) solves the time-series problems and produces robust estimates of the model's parameters. We then show that current spending by states responds to changes in expected future income. This explains why using fixed effects in simpler models reduces estimated income elasticities; fixed effects partially capture permanent income effects on spending. Estimates of lagged income are significant when used in models that do not explicitly model the expectations process, but present and past aid both have no effect on education spending. Models with structural assumptions about expected income produce estimates very similar to simpler models which include lagged information on income as a control variable. We conclude with recommendations for estimating models when only cross-section data or only short panels are available.
机译:在解释州和地方教育支出的回归分析中,我们使用二十一年的数据面板来检查过去收入和援助的作用以及对未来收入的期望。我们表明,相对于财务资源而言,支出弹性的简单估计对于规格更改而言并不稳健,因为变量随时间变化是非平稳的,从而导致模型参数的估计不一致。第一阶差(或等效地,增长率)的估计解决了时间序列问题,并产生了模型参数的可靠估计。然后,我们表明各州的当前支出是对预期未来收入变化的响应。这解释了为什么在较简单的模型中使用固定效应会降低估计的收入弹性;固定影响部分反映了支出的永久性收入影响。当在没有明确模拟期望过程的模型中使用滞后收入的估计时,意义重大,但现在和过去的援助都对教育支出没有影响。具有关于预期收入的结构假设的模型所产生的估计值与简单模型非常相似,后者包含有关收入的滞后信息作为控制变量。当只有横截面数据或只有短面板可用时,我们以估算模型的建议作为结束。

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