Comparing estimation methods of non-stationary errors-in-variables models

Author:

Kunitomo Naoto,Awaya Naoki,Kurisu Daisuke

Abstract

AbstractWe investigate the estimation methods of the multivariate non-stationary errors-in-variables models when there are non-stationary trend components and the measurement errors or noise components. We compare the maximum likelihood (ML) estimation and the separating information maximum likelihood (SIML) estimation. The latter was proposed by Kunitomo and Sato (Trend, seasonality and economic time series: the nonstationary errors-in-variables models. MIMS-RBP-SDS-3, MIMS, Meiji University. http://www.mims.meiji.ac.jp/, 2017) and Kunitomo et al. (Separating information maximum likelihood method for high-frequency financial data. Springer, Berlin, 2018). We have found that the Gaussian likelihood function can have non-concave shape in some cases and the ML method does work only when the Gaussianity of non-stationary and stationary components holds with some restrictions such as the signal–noise variance ratio in the parameter space. The SIML estimation has the asymptotic robust properties in more general situations. We explore the finite sample and asymptotic properties of the ML and SIML methods for the non-stationary errors-in variables models.

Funder

Japan Society for the Promotion of Science

Publisher

Springer Science and Business Media LLC

Subject

Computational Theory and Mathematics,Statistics and Probability

Reference22 articles.

1. Akaike, H. (1989). Choosing priors and its applications. In Y. Suzuki & N. Kunitomo (Eds.), Bayesian statistics and applications. Tokyo: Tokyo University Press (in Japanese).

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3. Anderson, T. W. (1971). The statistical analysis of time series. New York: Wiley.

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5. Anderson, T. W. (2003). An introduction to statistical multivariate analysis (3rd ed.). New York: Wiley.

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