Correlation between microstructure noise and latent financial logarithmic returns is an empirically relevant phenomenon with sound theoretical justification. With few notable exceptions, all integrated variance estimators proposed in the financial literature are not designed to explicitly handle such a dependence, or handle it only in special settings. We provide an integrated variance estimator that is robust to correlated noise and returns. For this purpose, a generalization of the forward filtering backward sampling algorithm is proposed, to provide a sampling technique for a latent conditionally Gaussian random sequence. We apply our methodology to intraday Microsoft prices and compare it in a simulation study with established alternatives, showing an advantage in terms of root-mean-square error and dispersion.

Peluso, S., Mira, A., Muliere, P. (2019). Conditionally Gaussian random sequences for an integrated variance estimator with correlation between noise and returns. APPLIED STOCHASTIC MODELS IN BUSINESS AND INDUSTRY, 35(5), 1282-1297 [10.1002/asmb.2476].

Conditionally Gaussian random sequences for an integrated variance estimator with correlation between noise and returns

Stefano Peluso
;
2019

Abstract

Correlation between microstructure noise and latent financial logarithmic returns is an empirically relevant phenomenon with sound theoretical justification. With few notable exceptions, all integrated variance estimators proposed in the financial literature are not designed to explicitly handle such a dependence, or handle it only in special settings. We provide an integrated variance estimator that is robust to correlated noise and returns. For this purpose, a generalization of the forward filtering backward sampling algorithm is proposed, to provide a sampling technique for a latent conditionally Gaussian random sequence. We apply our methodology to intraday Microsoft prices and compare it in a simulation study with established alternatives, showing an advantage in terms of root-mean-square error and dispersion.
Articolo in rivista - Articolo scientifico
forward filtering and backward sampling; integrated variance; Kalman filtering; state-space models;
Forward Filtering and Backward Sampling; Integrated Variance; Kalman Filtering; State Space Models
English
2019
35
5
1282
1297
none
Peluso, S., Mira, A., Muliere, P. (2019). Conditionally Gaussian random sequences for an integrated variance estimator with correlation between noise and returns. APPLIED STOCHASTIC MODELS IN BUSINESS AND INDUSTRY, 35(5), 1282-1297 [10.1002/asmb.2476].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/266149
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