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首页> 外文期刊>Journal of applied econometrics >PENALIZED QUANTILE REGRESSION WITH SEMIPARAMETRIC CORRELATED EFFECTS: AN APPLICATION WITH HETEROGENEOUS PREFERENCES
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PENALIZED QUANTILE REGRESSION WITH SEMIPARAMETRIC CORRELATED EFFECTS: AN APPLICATION WITH HETEROGENEOUS PREFERENCES

机译:半参数相关效应的量化量子回归:具有异类偏好的应用

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摘要

This paper proposes new '1-penalized quantile regression estimators for panel data, which explicitly allows for individual heterogeneity associated with covariates. Existing fixed-effects estimators can potentially suffer from three limitations which are overcome by the proposed approach: (i) incidental parameters bias in nonlinear models with large N and small T; (ii) lack of efficiency; and (iii) inability to estimate the effects of time-invariant regressors. We conduct Monte Carlo simulations to assess the small-sample performance of the new estimators and provide comparisons of new and existing penalized estimators in terms of quadratic loss. We apply the technique to an empirical example of the estimation of consumer preferences for nutrients from a demand model using a large transaction-level dataset of household food purchases. We show that preferences for nutrients vary across the conditional distribution of expenditure and across genders, and emphasize the importance of fully capturing consumer heterogeneity in demand modeling. Copyright (C) 2016 John Wiley & Sons, Ltd.
机译:本文针对面板数据提出了新的'1-惩罚分位数回归估计量,该估计量明确允许与协变量相关的个体异质性。现有的固定效果估计量可能会受到三个局限性的限制,这些局限性可以通过所提出的方法来克服: (ii)缺乏效率; (iii)无法估计时不变回归变量的影响。我们进行蒙特卡洛模拟,以评估新估计量的小样本性能,并根据二次损失对新的和现有的惩罚估计量进行比较。我们将该技术应用于使用家庭食物购买的大型交易级数据集根据需求模型估算消费者对营养素的偏好的经验示例。我们表明,营养素的偏好因支出的条件分布和性别而异,并强调了在需求建模中充分捕捉消费者异质性的重要性。版权所有(C)2016 John Wiley&Sons,Ltd.

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  • 来源
    《Journal of applied econometrics 》 |2017年第2期| 342-358| 共17页
  • 作者单位

    Duke Univ, Sanford Sch Publ Policy, 140 Sci Dr, Durham, NC 27708 USA;

    Univ Kentucky, Gatton Coll Business & Econ, Dept Econ, Lexington, KY USA;

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  • 正文语种 eng
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