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Subsampling realised kernels
Authors:Ole E Barndorff-Nielsen  Peter Reinhard Hansen  Asger Lunde  Neil Shephard
Institution:1. The T.N. Thiele Centre for Mathematics in Natural Science, Department of Mathematical Sciences, Aarhus University, Ny Munkegade, DK-8000 Aarhus C, Denmark;2. CREATES, Aarhus University, Denmark;3. Department of Economics, Stanford University, Landau Economics Building, 579 Serra Mall, Stanford, CA 94305-6072, USA;4. School of Economics and Management, Aarhus University, Building 1322 Bartholins Allé 10, DK-8000 Aarhus C, Denmark;5. Oxford-Man Institute, University of Oxford, Eagle House, Walton Well Road, Oxford OX2 6EE, UK;6. Department of Economics, University of Oxford, UK
Abstract:In a recent paper we have introduced the class of realised kernel estimators of the increments of quadratic variation in the presence of noise. We showed that this estimator is consistent and derived its limit distribution under various assumptions on the kernel weights. In this paper we extend our analysis, looking at the class of subsampled realised kernels and we derive the limit theory for this class of estimators. We find that subsampling is highly advantageous for estimators based on discontinuous kernels, such as the truncated kernel. For kinked kernels, such as the Bartlett kernel, we show that subsampling is impotent, in the sense that subsampling has no effect on the asymptotic distribution. Perhaps surprisingly, for the efficient smooth kernels, such as the Parzen kernel, we show that subsampling is harmful as it increases the asymptotic variance. We also study the performance of subsampled realised kernels in simulations and in empirical work.
Keywords:Long run variance estimator  Market frictions  Quadratic variation  Realised kernel  Realised variance  Subsampling
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