Issuing stocks is the key method to raise money for corporations. Today, stocks have become the most important financial instruments. Currently, there are several methods by which one can predict financial markets, but none of them is quite accurate. After introducing same basic concepts and the history of stocks, this work continues to introduce some typical fundamental and technical analysis methods already developed by economists, and then presents a relatively new system to forecast the stack market using revised Back Propagation (BP) algorithms. The system exploits BP neural networks to help find the correlation between stock price and the affecting factors hidden behind the financial market. The topology is a typical three-layer neura...
In recent years, neural networks have become increasingly popular in making stock market predictions...
This paper is a survey on the application of neural networks in forecasting stock market prices. Wit...
The greater the investment, the greater the risk, and building a stock prediction model with high ac...
In this paper, Back-Propagation neural network is used to make prediction on stock price. Theories o...
The use of artificial neural network is gaining popularity in the research field. Neural network con...
Prediction of stock market has been a challenging task and of great interest for researchers as the ...
In this study, a novel adaptive learning algorithm for back-propagation neural network (BPNN) based ...
Stock markets around the world are affected by many highly correlated economic, political and eve...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
The stock market has a high profit and high risk features, on the stock market analysis and predicti...
This document presents a web application for predicting the best outcome of the stock market prices ...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
Stock price prediction is useful for investors to see how the prospects of a company's stock investm...
This document presents a web application for predicting the best outcome of the stock market prices ...
Reliable stock market movement prediction is a challenging task. The difficulty is mainly due to the...
In recent years, neural networks have become increasingly popular in making stock market predictions...
This paper is a survey on the application of neural networks in forecasting stock market prices. Wit...
The greater the investment, the greater the risk, and building a stock prediction model with high ac...
In this paper, Back-Propagation neural network is used to make prediction on stock price. Theories o...
The use of artificial neural network is gaining popularity in the research field. Neural network con...
Prediction of stock market has been a challenging task and of great interest for researchers as the ...
In this study, a novel adaptive learning algorithm for back-propagation neural network (BPNN) based ...
Stock markets around the world are affected by many highly correlated economic, political and eve...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
The stock market has a high profit and high risk features, on the stock market analysis and predicti...
This document presents a web application for predicting the best outcome of the stock market prices ...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
Stock price prediction is useful for investors to see how the prospects of a company's stock investm...
This document presents a web application for predicting the best outcome of the stock market prices ...
Reliable stock market movement prediction is a challenging task. The difficulty is mainly due to the...
In recent years, neural networks have become increasingly popular in making stock market predictions...
This paper is a survey on the application of neural networks in forecasting stock market prices. Wit...
The greater the investment, the greater the risk, and building a stock prediction model with high ac...