Exchange rates are highly fluctuating by nature; thus, they are difficult to forecast. Artificial neural networks (ANNs) have proven to be better than statistical methods. Inadequate training data may lead the model to reach sub-optimal solutions, resulting in poor accuracy (as ANN-based forecasts are data-driven). To enhance forecasting accuracy, we suggests a method of enriching training datasets through exploring and incorporating virtual data points (VDPs) by an evolutionary method called the fireworks algorithm-trained functional link artificial neural network (FWA-FLN). The model maintains a correlation between current and past data, especially at the oscillation point on the time series. The exploration of a VDP and forecast of the s...
Neural networks have been shown to be a promising tool for forecasting financial time series. Severa...
Foreign exchange Market is one of the most important financial movement in the world and for the pas...
Through time series analysis, it is possible to obtain significant statistics and other necessary da...
Exchange rates are highly fluctuating by nature, thus difficult to forecast. Artificial neural netwo...
In this paper, a neural network based foreign exchange rates forecasting method is discussed. Neural...
Actually, exchange rate is a kind of important data in economy. There is immense economic informatio...
This study predicts the exchange rates for three currency pairs (USD-INR, GBP-INR, and EUR-INR). We ...
Neural network have successfully used for exchange rate forecasting. However, due to a large number ...
ABSTRACT-The foreign currency exchange market is the highest and most liquid of the financial market...
This paper presents an artificial neural network (ANN) approach to the forecasting of exchange rate ...
We present a methodology for volatile time series forecasting using deep learning. We use a three-st...
Abstract—In this paper, the authors discuss several controversial issues about exchange rate forecas...
In this paper, the exchange rate forecasting performance of neural network models are evaluated agai...
Two alternative learning approaches of a MLP Neural Network architecture are employed to forecast fo...
Developing an understanding of exchange rate movements has long been an extremely important task bec...
Neural networks have been shown to be a promising tool for forecasting financial time series. Severa...
Foreign exchange Market is one of the most important financial movement in the world and for the pas...
Through time series analysis, it is possible to obtain significant statistics and other necessary da...
Exchange rates are highly fluctuating by nature, thus difficult to forecast. Artificial neural netwo...
In this paper, a neural network based foreign exchange rates forecasting method is discussed. Neural...
Actually, exchange rate is a kind of important data in economy. There is immense economic informatio...
This study predicts the exchange rates for three currency pairs (USD-INR, GBP-INR, and EUR-INR). We ...
Neural network have successfully used for exchange rate forecasting. However, due to a large number ...
ABSTRACT-The foreign currency exchange market is the highest and most liquid of the financial market...
This paper presents an artificial neural network (ANN) approach to the forecasting of exchange rate ...
We present a methodology for volatile time series forecasting using deep learning. We use a three-st...
Abstract—In this paper, the authors discuss several controversial issues about exchange rate forecas...
In this paper, the exchange rate forecasting performance of neural network models are evaluated agai...
Two alternative learning approaches of a MLP Neural Network architecture are employed to forecast fo...
Developing an understanding of exchange rate movements has long been an extremely important task bec...
Neural networks have been shown to be a promising tool for forecasting financial time series. Severa...
Foreign exchange Market is one of the most important financial movement in the world and for the pas...
Through time series analysis, it is possible to obtain significant statistics and other necessary da...