Identification Environment and Robust Forecasting for Nonlinear Time Series
Berlin Wu
Computational Economics, 1994, vol. 7, issue 1, 37-53
Abstract:
In this paper, the methods of time series for nonlinearity are briefly surveyed, with particular attention paid to a new test design based on a neural network specification. The proposed integrated expert system contains two main components: an identification environment and a robust forecasting design. The identification environment can be viewed as a integrated dynamic design in which cognitive capabilities arise as a direct consequence of their self-organizational properties. The integrated framework used for discussing the similarities and differences in the nonlinear time series behavior is presented. Moreover, its performance in prediction proves to be superior than the former work. For the investigation of robust forecasting, we perform a simulation study to demonstrate the applicability and the forecasting performance. Citation Copyright 1994 by Kluwer Academic Publishers.
Date: 1994
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Persistent link: https://EconPapers.repec.org/RePEc:kap:compec:v:7:y:1994:i:1:p:37-53
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