Neural networks demonstrate great potential for discovering non-linear relationships in time-series and extrapolating from them. Results of forecasting using financial data are particularly good [LapFar87, Schone90, ChaMeh92]. In contrast, traditional statistical methods are restrictive as they try to express these non-linear relationships as linear models. This thesis investigates the use of the Backpropagation neural model for time-series forecasting. In general, neural forecasting research [Hinton87] can be approached in three ways: research into the weight space, into the physical representation of inputs, and into the learning algorithms. A new method to enhance input representations to a neural network, referred to as model sNx, has b...
M.Comm.The availability of large amounts of information and increases in computing power have facili...
There has been increasing interest in the application of neural networks to the field of finance. Se...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
In recent years, neural networks have become increasingly popular in making stock market predictions...
Considering the fact that markets are generally influenced by different external factors, the stock ...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...
The Efficient Market Hypothesis (EMH) says that there is no better forecast of stock price possible....
This study shows that neural networks have been advocated as an alternative to traditional statistic...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
M.Comm.The availability of large amounts of information and increases in computing power have facili...
Financial market forecasting is a challenging and complex task due to the sensitivity of the market ...
M.Comm.The availability of large amounts of information and increases in computing power have facili...
There has been increasing interest in the application of neural networks to the field of finance. Se...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
In recent years, neural networks have become increasingly popular in making stock market predictions...
Considering the fact that markets are generally influenced by different external factors, the stock ...
Neural networks (NN) have been widely touted as solving many forecasting and decision modeling probl...
The Efficient Market Hypothesis (EMH) says that there is no better forecast of stock price possible....
This study shows that neural networks have been advocated as an alternative to traditional statistic...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
M.Comm.The availability of large amounts of information and increases in computing power have facili...
Financial market forecasting is a challenging and complex task due to the sensitivity of the market ...
M.Comm.The availability of large amounts of information and increases in computing power have facili...
There has been increasing interest in the application of neural networks to the field of finance. Se...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...