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HAR Inference: Recommendations for Practice
by
Lewis, Daniel J.
, Lazarus, Eben
, Watson, Mark W.
, Stock, James H.
in
HAC
/ Heteroscedasticity- and autocorrelation-robust estimation
/ Long-run variance
/ Time series
2018
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Do you wish to request the book?
HAR Inference: Recommendations for Practice
by
Lewis, Daniel J.
, Lazarus, Eben
, Watson, Mark W.
, Stock, James H.
in
HAC
/ Heteroscedasticity- and autocorrelation-robust estimation
/ Long-run variance
/ Time series
2018
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Journal Article
HAR Inference: Recommendations for Practice
2018
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Overview
The classic papers by Newey and West (1987) and Andrews (1991) spurred a large body of work on how to improve heteroscedasticity- and autocorrelation-robust (HAR) inference in time series regression. This literature finds that using a larger-than-usual truncation parameter to estimate the long-run variance, combined with Kiefer-Vogelsang (2002, 2005) fixed-b critical values, can substantially reduce size distortions, at only a modest cost in (size-adjusted) power. Empirical practice, however, has not kept up. This article therefore draws on the post-Newey West/Andrews literature to make concrete recommendations for HAR inference. We derive truncation parameter rules that choose a point on the size-power tradeoff to minimize a loss function. If Newey-West tests are used, we recommend the truncation parameter rule S = 1.3T
1/2
and (nonstandard) fixed-b critical values. For tests of a single restriction, we find advantages to using the equal-weighted cosine (EWC) test, where the long run variance is estimated by projections onto Type II cosines, using ν = 0.4T
2/3
cosine terms; for this test, fixed-b critical values are, conveniently, t
ν
or F. We assess these rules using first an ARMA/GARCH Monte Carlo design, then a dynamic factor model design estimated using a 207 quarterly U.S. macroeconomic time series.
Publisher
Taylor & Francis,American Statistical Association,Taylor & Francis Ltd
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