Title :
Forecasting financial multivariate time series with neural networks
Abstract :
An integrated approach for modelling the behaviour of financial markets with artificial neural networks (ANNs) is presented. The method allows to forecast financial time series. Its originality lies in the fact that it is based on statistics and macroeconomics principles and it integrates fundamental economic knowledge in a multivariate nonlinear time series ANN model. The core of the work is a feasibility analysis. This is seldom attempted in ANN work and consists in a series of different univariate and multivariate, linear and nonlinear statistical tests. Here we use aggregated input indicators as a new pre-processing step. The feasibility analysis evaluate “a priori” chance of forecasting the defined system and help to define the topology of the ANN. The method is applied to a real-life case study, the Swiss bond interest rate forecasting. Results giving out-of-sample performance are discussed
Keywords :
forecasting theory; neural nets; securities trading; time series; Swiss bond interest rate forecasting; feasibility analysis; financial markets; financial multivariate time series forecasting; macroeconomics; multivariate nonlinear time series; neural networks; preprocessing step; statistics; Artificial neural networks; Bonding; Economic forecasting; Economic indicators; Macroeconomics; Neural networks; Predictive models; Statistical analysis; Testing; Time series analysis;
Conference_Titel :
Neuro-Fuzzy Systems, 1996. AT'96., International Symposium on
Conference_Location :
Lausanne
Print_ISBN :
0-7803-3367-5
DOI :
10.1109/ISNFS.1996.603826