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Moving Average-Based Estimators of Integrated Variance
Authors:Peter R. Hansen   Jeremy Large   Asger Lunde
Affiliation: a Department of Economics, Stanford University, Stanford, California, USAb All Souls College, University of Oxford, Oxford, UKc Department of Marketing and Statistics, Aarhus School of Business, University of Aarhus, Aarhus V, Denmark
Abstract:We examine moving average (MA) filters for estimating the integrated variance (IV) of a financial asset price in a framework where high-frequency price data are contaminated with market microstructure noise. We show that the sum of squared MA residuals must be scaled to enable a suitable estimator of IV. The scaled estimator is shown to be consistent, first-order efficient, and asymptotically Gaussian distributed about the integrated variance under restrictive assumptions. Under more plausible assumptions, such as time-varying volatility, the MA model is misspecified. This motivates an extensive simulation study of the merits of the MA-based estimator under misspecification. Specifically, we consider nonconstant volatility combined with rounding errors and various forms of dependence between the noise and efficient returns. We benchmark the scaled MA-based estimator to subsample and realized kernel estimators and find that the MA-based estimator performs well despite the misspecification.
Keywords:Bias correction  High-frequency data  Integrated variance  Moving average  Realized variance  Realized volatility
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