The paper examines a task of forecasting stock prices of Riga Stock exchange by the use of interval value prediction approach, which is carried out by modified Kohonen neural network learning algorithm. The data preprocessing methods are analyzed and implemented here to solve stock prices prediction task. The proposed data preprocessing methods has been experimentally tested with two types of artificial neural networks
Three networks are compared for low false alarm stock trend predictions. Short-term trends, particul...
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
Predicting a stock market is a challenging task for every investor. Stock market contains difficult ...
The paper examines a task of forecasting stock prices of Riga Stock exchange by the use of interval ...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
This report investigates how prediction of stock markets with Artificial Neural Networks (ANN) is af...
In this work we present an Artificial Neural Network (ANN) approach to predict stock market indices....
This thesis deals with stock price prediction based on the creation of prediction models for selecte...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
This paper explore neural network method for predicting the stock market which much-needed accuracy....
In recent years, neural networks have become increasingly popular in making stock market predictions...
This thesis investigates the application of artificial neural networks (ANNs) for forecasting financ...
Making accurate predictions for stock market values with advanced non-linear methods creates opportu...
Accurate stock price prediction is very difficult in today's economy. Accurate prediction plays an i...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
Three networks are compared for low false alarm stock trend predictions. Short-term trends, particul...
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
Predicting a stock market is a challenging task for every investor. Stock market contains difficult ...
The paper examines a task of forecasting stock prices of Riga Stock exchange by the use of interval ...
This paper presents an application of neural networks to financial time-series forecasting. No addit...
This report investigates how prediction of stock markets with Artificial Neural Networks (ANN) is af...
In this work we present an Artificial Neural Network (ANN) approach to predict stock market indices....
This thesis deals with stock price prediction based on the creation of prediction models for selecte...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
This paper explore neural network method for predicting the stock market which much-needed accuracy....
In recent years, neural networks have become increasingly popular in making stock market predictions...
This thesis investigates the application of artificial neural networks (ANNs) for forecasting financ...
Making accurate predictions for stock market values with advanced non-linear methods creates opportu...
Accurate stock price prediction is very difficult in today's economy. Accurate prediction plays an i...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
Three networks are compared for low false alarm stock trend predictions. Short-term trends, particul...
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
Predicting a stock market is a challenging task for every investor. Stock market contains difficult ...