A number of research had been carried out to forecast stock price based on technical indicators, which rely purely on historical stock price data. Nevertheless, their performance is not always satisfactory. In this paper, the effect of using hybrid market indicators of technical, fundamental indicators and experts opinion for stock price prediction is examined. Input variables extracted from these market hybrid indicators are fed into a fuzzy-neural network for improved accuracy of stock price prediction. The empirical results obtained with published stock data shows that the proposed model can be effective to improve accuracy of stock price prediction
The following studies the effectiveness of using fuzzy logic and neural networks for forecasting fin...
Stock prices are volatile due to different factors that are involved in the stock market, such as ge...
Stock trading can be generally divided into two types – fundamental analysis and technical analysis....
In this paper the effect of hybrid market indicators is examined for an improved stock price predict...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Intraday trading rules require accurate information about the future short term market evolution. Fo...
Forecasting the price movements in stock market has been a major challenge for common investors, bus...
In this paper, a hybrid fuzzy-neural system for Egyptian stocks price prediction is proposed. The mo...
Today, investment by purchasing stock-share constitutes the greater part of economic exchange of cou...
AbstractStock market forecasting research offers many challenges and opportunities, with the forecas...
In this paper, an artificial neural network-based stock market prediction model was developed. Today...
Stock market prediction is essential and of great interest because successful prediction of stock pr...
The financial industry has been becoming more and more dependent on advanced computing technologies ...
The financial industry has been becoming more and more dependent on advanced computing technologies ...
The following studies the effectiveness of using fuzzy logic and neural networks for forecasting fin...
Stock prices are volatile due to different factors that are involved in the stock market, such as ge...
Stock trading can be generally divided into two types – fundamental analysis and technical analysis....
In this paper the effect of hybrid market indicators is examined for an improved stock price predict...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Stock prediction with data mining techniques is one of the most important issues in finance being in...
Intraday trading rules require accurate information about the future short term market evolution. Fo...
Forecasting the price movements in stock market has been a major challenge for common investors, bus...
In this paper, a hybrid fuzzy-neural system for Egyptian stocks price prediction is proposed. The mo...
Today, investment by purchasing stock-share constitutes the greater part of economic exchange of cou...
AbstractStock market forecasting research offers many challenges and opportunities, with the forecas...
In this paper, an artificial neural network-based stock market prediction model was developed. Today...
Stock market prediction is essential and of great interest because successful prediction of stock pr...
The financial industry has been becoming more and more dependent on advanced computing technologies ...
The financial industry has been becoming more and more dependent on advanced computing technologies ...
The following studies the effectiveness of using fuzzy logic and neural networks for forecasting fin...
Stock prices are volatile due to different factors that are involved in the stock market, such as ge...
Stock trading can be generally divided into two types – fundamental analysis and technical analysis....