<p>Some data fluctuates rapidly in a short period of time. Classical and computational models are useful in predicting this<br>highly volatile data. In this study Partial Least Square Regression and computational neural network models are used to explore<br>stock market tendency. Thirteen variables are considered to predict the daily closing prices of BSE sensex data. To evaluate the<br>prediction ability of the models, standard error values are calculated. The results revealed that Nonparametric PLS regression<br>model is better in prediction.</p> <p> </p
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
The process of predicting stock market movements may initially appear to be non-statistical due to t...
Accurate prediction of stock prices plays an increasingly prominent role in the stock market where r...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
This thesis deals with stock price prediction based on the creation of prediction models for selecte...
Different methods for prediction of future situation always have been one of the important concerns ...
In this paper, predictions of future price movements of a major American stock index were made by an...
This report investigates how prediction of stock markets with Artificial Neural Networks (ANN) is af...
The main goal of this research thesis was to construct and test the effectiveness of a stock price p...
A stock market is a public market for the trading of company stock. It is an organized set-up with a...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
Stock markets around the world are affected by many highly correlated economic, political and eve...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
Volatility is one of the major factor that causes uncertainty in short term stock market movement. E...
Stock market prediction is important for investors seeking a return on the capital invested, though ...
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
The process of predicting stock market movements may initially appear to be non-statistical due to t...
Accurate prediction of stock prices plays an increasingly prominent role in the stock market where r...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
This thesis deals with stock price prediction based on the creation of prediction models for selecte...
Different methods for prediction of future situation always have been one of the important concerns ...
In this paper, predictions of future price movements of a major American stock index were made by an...
This report investigates how prediction of stock markets with Artificial Neural Networks (ANN) is af...
The main goal of this research thesis was to construct and test the effectiveness of a stock price p...
A stock market is a public market for the trading of company stock. It is an organized set-up with a...
This paper presents computational approach for stock market prediction. Artificial Neural Network (A...
Stock markets around the world are affected by many highly correlated economic, political and eve...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
Volatility is one of the major factor that causes uncertainty in short term stock market movement. E...
Stock market prediction is important for investors seeking a return on the capital invested, though ...
Neural Networks are very good in learning patterns from a lot of information. Thus, it is generally ...
The process of predicting stock market movements may initially appear to be non-statistical due to t...
Accurate prediction of stock prices plays an increasingly prominent role in the stock market where r...