The Second-order Bias and Mean Squared Error of Quantile Regression Estimators
Tae Hwy Lee,
Aman Ullah () and
He Wang ()
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Aman Ullah: Department of Economics, University of California, Riverside
He Wang: University of International Business and Economics, Beijing
No 202313, Working Papers from University of California at Riverside, Department of Economics
Abstract:
The finite sample theory using higher order asymptotics provides better approximations of the bias and mean squared error (MSE) for a class of estimators. Rilston, Srivastava and Ullah (1996) provided the second-order bias results of conditional mean regression. This paper develops new analytical results on the second-order bias up to order O(N⠻¹) and MSE up to order O(N⠻²) of the conditional quantile regression estimators. First, we provide the general results on the second-order bias and MSE of conditional quantile estimators. The second-order bias result enables an improved bias correction and thus to obtain improved quantile estimation. In particular, we show that the second-order bias are much larger towards the tails of the conditional density than near the median, and therefore the benefit of the second order bias correction is greater when we are interested in the deeper tail quantiles, e.g., for the study of financial risk management. The higher order MSE result for the quantile estimation also enables us to better understand the sources of estimation uncertainty. Next, we consider three special cases of the general results, for the unconditional quantile estimation, for the conditional quantile regression with a binary covariate, and for the instrumental variable quantile regression (IVQR). For each of these special cases, we provide the second-order bias and MSE to illustrate their behavior which depends on certain parameters and distributional characteristics. The Monte Carlo simulation indicates that the bias is larger at the extreme low and high tail quantiles, and the second-order bias corrected estimator has better behavior than the uncorrected ones in both conditional and unconditional quantile estimation. The second-order bias corrected estimators are numerically much closer to the true parameters of the data generating processes. As the higher order bias and MSE decrease as the sample size increases or as the regression error variance decreases, the benefits of the finite sample theory are more apparent when there are larger sampling errors in estimation. The empirical application of the theory to the predictive quantile regression model in finance highlights the benefit of the proposed second-order bias reduction.
Keywords: Check-loss; Dirac delta function; Quantile regression; Second-order bias; MSE. (search for similar items in EconPapers)
JEL-codes: C13 C33 C52 (search for similar items in EconPapers)
Pages: 72 Pages
Date: 2023-08
New Economics Papers: this item is included in nep-ecm
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Persistent link: https://EconPapers.repec.org/RePEc:ucr:wpaper:202313
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