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Estimation of the lead-lag parameter from non-synchronous data

20 March 2013
M. Hoffmann
M. Rosenbaum
Nakahiro Yoshida
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Abstract

We propose a simple continuous time model for modeling the lead-lag effect between two financial assets. A two-dimensional process (Xt,Yt)(X_t,Y_t)(Xt​,Yt​) reproduces a lead-lag effect if, for some time shift ϑ∈R\vartheta\in \mathbb{R}ϑ∈R, the process (Xt,Yt+ϑ)(X_t,Y_{t+\vartheta})(Xt​,Yt+ϑ​) is a semi-martingale with respect to a certain filtration. The value of the time shift ϑ\varthetaϑ is the lead-lag parameter. Depending on the underlying filtration, the standard no-arbitrage case is obtained for ϑ=0\vartheta=0ϑ=0. We study the problem of estimating the unknown parameter ϑ∈R\vartheta\in \mathbb{R}ϑ∈R, given randomly sampled non-synchronous data from (Xt)(X_t)(Xt​) and (Yt)(Y_t)(Yt​). By applying a certain contrast optimization based on a modified version of the Hayashi-Yoshida covariation estimator, we obtain a consistent estimator of the lead-lag parameter, together with an explicit rate of convergence governed by the sparsity of the sampling design.

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