We developed in this paper a method to predict time series with non-linear tools. The specificity of the method is to use as much information as possible as input to the model (many past values of the series, many exogenous variables), to compress this information (by a non-linear method) in order to obtain a state vector of limited size, facilitating the subsequent regression and the generalization ability of the forecasting algorithm and to fit a non-linear regressor (here a RBF neural network) on the reduced vectors. We show that this method is able to find non-linear relationships in artificial and real-world financial series. On a difficult task, which consists in forecasting the tendency of the Bel 20 stock market index, we show that ...
International audienceThe aim of this paper is to extend the index of financial safety (IFS) approac...
Considering the fact that markets are generally influenced by different external factors, the stock ...
This paper is concerned with approximating nonlinear time series by an artificial neural network bas...
We developed in this paper a method to predict time series with non-linear tools. The specificity o...
Abstract. – Prediction of financial time series using artificial neural networks has been the subjec...
The prediction of financial time series using artificial neural networks has been the subject of man...
Prediction of financial time series using artificial neural networks has been the subject of many pu...
Prediction of financial time series using artificial neural networks has been the subject of many pu...
Prediction of financial time series using artificial neural networks has been the subject of many p...
In this paper we discuss the current state-of-the-art in estimating, evaluating, and selecting among...
this paper we discuss the current state-of-the-art in estimating, evaluating, and selecting among no...
Time series analysis and prediction are major scientific challenges that find their applications in ...
We consider nonparametric generalization of various well-known financial time series models and stud...
Predicting a stock market is a challenging task for every investor. Stock market contains difficult ...
The prediction of financial time series to enable improved portfolio management is a complex topic t...
International audienceThe aim of this paper is to extend the index of financial safety (IFS) approac...
Considering the fact that markets are generally influenced by different external factors, the stock ...
This paper is concerned with approximating nonlinear time series by an artificial neural network bas...
We developed in this paper a method to predict time series with non-linear tools. The specificity o...
Abstract. – Prediction of financial time series using artificial neural networks has been the subjec...
The prediction of financial time series using artificial neural networks has been the subject of man...
Prediction of financial time series using artificial neural networks has been the subject of many pu...
Prediction of financial time series using artificial neural networks has been the subject of many pu...
Prediction of financial time series using artificial neural networks has been the subject of many p...
In this paper we discuss the current state-of-the-art in estimating, evaluating, and selecting among...
this paper we discuss the current state-of-the-art in estimating, evaluating, and selecting among no...
Time series analysis and prediction are major scientific challenges that find their applications in ...
We consider nonparametric generalization of various well-known financial time series models and stud...
Predicting a stock market is a challenging task for every investor. Stock market contains difficult ...
The prediction of financial time series to enable improved portfolio management is a complex topic t...
International audienceThe aim of this paper is to extend the index of financial safety (IFS) approac...
Considering the fact that markets are generally influenced by different external factors, the stock ...
This paper is concerned with approximating nonlinear time series by an artificial neural network bas...