This paper develops a method of adaptive modeling that may be applied to forecast non-stationary time series. The starting point are time-varying coefficients models introduced in statistics, econometrics and engineering. The basic step of modeling is represented by the implementation of adaptive recursive estimators for tracking parameters. This is achieved by unifying basic algorithms\u2014such as recursive least squares (RLS) and extended Kalman filter (EKF)\u2014into a general scheme and next by selecting its coefficients with the minimization of the sum of squared prediction errors. This defines a non-linear estimation problem that may be analyzed in the context of the conditional least squares (CLS) theory. A numerical application on ...
The dissertation consists of three chapters on econometric methods related to parameter instability,...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
Four techniques for time series forecasting are analyzed and combined in an artificial intelligence ...
Conditional least squares, extended Kalman filter, IBM stock price series, recursive least squares, ...
The thesis describes a new, fully recursive method for the identification, estimation and forecastin...
Deriving a relationship that allows to predict future values of a time series is a challenging task ...
This paper considers a unified approval to the problem of forecasting time series on the basis of li...
The paper describes a general approach to the modelling of nonlinear and nonstationary economic syst...
The paper discusses a new, fully recursive approach to the adaptive modelling, forecasting and seaso...
This thesis describes a first experimental project using a recursive parameter estimation and Kalman...
We construct a parsimonious model of the U.S. macro economy using a state space representation and r...
AbstractThe paper discusses a new, fully recursive approach to the adaptive modelling, forecasting a...
Until recently, the dominant paradigm in the analysis and forecasting of nonstationary time series h...
Many time series are asymptotically unstable and intrinsically nonstationary, i.e. satisfy differenc...
Timely identification of turning points in economic time series is important for plan-ning control a...
The dissertation consists of three chapters on econometric methods related to parameter instability,...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
Four techniques for time series forecasting are analyzed and combined in an artificial intelligence ...
Conditional least squares, extended Kalman filter, IBM stock price series, recursive least squares, ...
The thesis describes a new, fully recursive method for the identification, estimation and forecastin...
Deriving a relationship that allows to predict future values of a time series is a challenging task ...
This paper considers a unified approval to the problem of forecasting time series on the basis of li...
The paper describes a general approach to the modelling of nonlinear and nonstationary economic syst...
The paper discusses a new, fully recursive approach to the adaptive modelling, forecasting and seaso...
This thesis describes a first experimental project using a recursive parameter estimation and Kalman...
We construct a parsimonious model of the U.S. macro economy using a state space representation and r...
AbstractThe paper discusses a new, fully recursive approach to the adaptive modelling, forecasting a...
Until recently, the dominant paradigm in the analysis and forecasting of nonstationary time series h...
Many time series are asymptotically unstable and intrinsically nonstationary, i.e. satisfy differenc...
Timely identification of turning points in economic time series is important for plan-ning control a...
The dissertation consists of three chapters on econometric methods related to parameter instability,...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
Four techniques for time series forecasting are analyzed and combined in an artificial intelligence ...