We consider the problem of sequential inference of latent time-series with innovations correlated in time and observed via nonlinear functions. We accommodate time-varying phenomena with diverse properties by means of a flexible mathematical representation of the data. We characterize statistically such time-series by a Bayesian analysis of their densities. The density that describes the transition of the state from time t to the next time instant t+1 is used for implementation of novel sequential Monte Carlo (SMC) methods. We present a set of SMC methods for inference of latent ARMA time-series with innovations correlated in time for different assumptions in knowledge of parameters. The methods operate in a unified and consistent manner for data with diverse memory properties. We show the validity of the proposed approach by comprehensive simulations of the challenging stochastic volatility model.
CITATION STYLE
Urteaga, I., Bugallo, M. F., & Djurić, P. M. (2017). Sequential Monte Carlo for inference of latent ARMA time-series with innovations correlated in time. Eurasip Journal on Advances in Signal Processing, 2017(1). https://doi.org/10.1186/s13634-017-0518-4
Mendeley helps you to discover research relevant for your work.