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ASYMPTOTICALLY UNBIASED ESTIMATION OF AUTOCOVARIANCES AND AUTOCORRELATIONS WITH LONG PANEL DATA

机译:长面板数据的自协方差和自相关的渐近一致估计

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摘要

An important reason for analyzing panel data is to observe the dynamic nature of an economic variable separately from its time-invariant unobserved heterogeneity. This paper examines how to estimate the autocovariances of a variable separately from its time-invariant unobserved heterogeneity. When both cross-sectional and time series sample sizes tend to infinity, we show that the within-group autocovariances are consistent, although they are severely biased when the time series length is short. The biases have the leading term that converges to the long-run variance of the individual dynamics. This paper develops methods to estimate the long-run variance in panel data settings and to alleviate the biases of the within-group autocovariances based on the proposed long-run variance estimators. Monte Carlo simulations reveal that the procedures developed in this paper effectively reduce the biases of the estimators for small samples.
机译:分析面板数据的一个重要原因是要观察经济变量的动态性质,使其与时间不变的未观察到的异质性分开。本文研究了如何估计变量与其时不变的未观察到的异质性的自协方差。当横截面样本和时间序列样本的大小都趋于无穷大时,我们证明了组内自协方差是一致的,尽管在时间序列长度短时它们会严重偏向。偏差具有收敛于个体动力学的长期变化的主导术语。本文基于提出的长期方差估计量,开发了估计面板数据设置中长期方差并减轻组内自协方差偏差的方法。蒙特卡洛模拟显示,本文开发的程序有效地减少了小样本估计量的偏差。

著录项

  • 作者

    Okui Ryo;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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