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Asymptotic theory of range-based multipower variation

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  • Kim Christensen
  • Mark Podolskij

Abstract

In this paper, we present a realized range-based multipower variation theory, which can be used to estimate return variation and draw jump-robust inference about the diffusive volatility component, when a high-frequency record of asset prices is available. The standard range-statistic -- routinely used in financial economics to estimate the variance of securities prices -- is shown to be biased when the price process contains jumps. We outline how the new theory can be applied to remove this bias by constructing a hybrid range-based estimator. Our asymptotic theory also reveals that when high-frequency data are sparsely sampled, as is often done in practice due to the presence of microstructure noise, the range-based multipower variations can produce significant efficiency gains over comparable subsampled return-based estimators. The analysis is supported by a simulation study and we illustrate the practical use of our framework on some recent TAQ equity data.

Suggested Citation

  • Kim Christensen & Mark Podolskij, 2026. "Asymptotic theory of range-based multipower variation," Papers 2602.19287, arXiv.org.
  • Handle: RePEc:arx:papers:2602.19287
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    References listed on IDEAS

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