We present a time series forecasting methodology and applies it to generate one-step-ahead predictions for two daily foreign exchange spot rate time series. The methodology draws from the disciplines of chaotic time series analysis, clustering, artificial neural networks and evolutionary computation. In brief, clustering is applied to identify neighborhoods in the reconstructed state space of the system; and subsequently neural networks are trained to model the dynamics of each neighborhood separately. The results obtained through this approach are promising
Financial and economic time series forecasting has never been an easy task due to its sensibility to...
This thesis work presents a comparative study of different methods for predicting future values of t...
Exchange rates are highly fluctuating by nature; thus, they are difficult to forecast. Artificial ne...
This paper presents a time series forecasting methodology and applies it to generate one--step-- ahe...
In this paper, we review our work on a time series forecasting methodology based on the combination ...
In this paper, the combination of unsupervised clustering algorithms with feedforward neural network...
this paper, the combination of unsupervised clustering algorithms with feedforward neural networks ...
This paper presents a time series forecasting methodology and applies it to generate multiple-step-a...
Forecasting the short run behavior of foreign exchange rates is a challenging problem that has attr...
A functional method for time series forecasting is presented. Based on the splitting of the past dyn...
The analysis of financial time series is of primary importance in the economic world. This paper deal...
Financial forecasting plays a critical role in present economic context where neural networks have b...
The main objective of this research paper is to highlight the global implications arising in financi...
Artificial neural networks and their systems are already capable of learning, to summarize, filter, ...
In the last decade, market financial forecasting has attracted high interests amongst the researcher...
Financial and economic time series forecasting has never been an easy task due to its sensibility to...
This thesis work presents a comparative study of different methods for predicting future values of t...
Exchange rates are highly fluctuating by nature; thus, they are difficult to forecast. Artificial ne...
This paper presents a time series forecasting methodology and applies it to generate one--step-- ahe...
In this paper, we review our work on a time series forecasting methodology based on the combination ...
In this paper, the combination of unsupervised clustering algorithms with feedforward neural network...
this paper, the combination of unsupervised clustering algorithms with feedforward neural networks ...
This paper presents a time series forecasting methodology and applies it to generate multiple-step-a...
Forecasting the short run behavior of foreign exchange rates is a challenging problem that has attr...
A functional method for time series forecasting is presented. Based on the splitting of the past dyn...
The analysis of financial time series is of primary importance in the economic world. This paper deal...
Financial forecasting plays a critical role in present economic context where neural networks have b...
The main objective of this research paper is to highlight the global implications arising in financi...
Artificial neural networks and their systems are already capable of learning, to summarize, filter, ...
In the last decade, market financial forecasting has attracted high interests amongst the researcher...
Financial and economic time series forecasting has never been an easy task due to its sensibility to...
This thesis work presents a comparative study of different methods for predicting future values of t...
Exchange rates are highly fluctuating by nature; thus, they are difficult to forecast. Artificial ne...