Inference from high-frequency data: A subsampling approach
Kim Christensen, Mark Podolskij, Nopporn Thamrongrat, Bezirgen Veliyev

TL;DR
This paper introduces a subsampling method for estimating the asymptotic covariance matrix in high-frequency asset return volatility, providing a consistent, robust, and easy-to-implement inference tool that adapts to various market conditions.
Contribution
It develops a novel subsampling estimator for the covariance matrix that is consistent, positive semi-definite, and does not require explicit noise structure knowledge.
Findings
Estimator is consistent in frictionless and noisy markets
Provides an optimal rate for tuning parameters
Demonstrates robustness and ease of implementation
Abstract
In this paper, we show how to estimate the asymptotic (conditional) covariance matrix, which appears in central limit theorems in high-frequency estimation of asset return volatility. We provide a recipe for the estimation of this matrix by subsampling; an approach that computes rescaled copies of the original statistic based on local stretches of high-frequency data, and then it studies the sampling variation of these. We show that our estimator is consistent both in frictionless markets and models with additive microstructure noise. We derive a rate of convergence for it and are also able to determine an optimal rate for its tuning parameters (e.g., the number of subsamples). Subsampling does not require an extra set of estimators to do inference, which renders it trivial to implement. As a variance-covariance matrix estimator, it has the attractive feature that it is positive…
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