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Volatility forecasting and microstructure noise
Authors:Eric Ghysels  Arthur Sinko
Institution:1. Department of Finance, Kenan-Flagler, School of Business, United States;2. Department of Economics, University of North Carolina, Gardner Hall CB 3305, Gardner Hall CB 3305, Chapel Hill, NC 27599-3305, United States;3. Economics, School of Social Sciences, Arthur Lewis Building University of Manchester, Manchester M13 9PL, United Kingdom
Abstract:It is common practice to use the sum of frequently sampled squared returns to estimate volatility, yielding the so-called realized volatility. Unfortunately, returns are contaminated by market microstructure noise. Several noise-corrected realized volatility measures have been proposed. We assess to what extent correction for microstructure noise improves forecasting future volatility using a MIxed DAta Sampling (MIDAS) regression framework. We study the population prediction properties of various realized volatility measures, assuming i.i.di.i.d. microstructure noise. Next we study optimal sampling issues theoretically, when the objective is forecasting and microstructure noise contaminates realized volatility. We distinguish between conditional and unconditional optimal sampling schemes, and find that conditional optimal sampling seems to work reasonably well in practice.
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