In this research, the total equities in Tehran Stock Exchange are predicted using different neural network models. Research hypothesis states that the performance of WDBP wavelet neural network model for stock index prediction is better than PB neural network model and research period is ten years from the beginning of 2002 to the end of 2011. Information is collected from the statistics and data in Tehran Stock Exchange’s database. In order to create the WDBP model, db5 wavelet is used for denoising the data in five steps. The criterion used for measuring the prediction error is root mean square error (RMSE). Wilcoxon hypothesis test is conducted on results after prediction by neural networks. Test results indicate that the significance le...
Time series data analysis is today’s financial need which is to be predicted with highest accuracy. ...
Abstract — One of the most important problems in modern finance is finding efficient ways to summari...
Stock forecasting is complicated with its non-linearity and high noise, and current forecasting mode...
This paper explores the application of a wavelet neural network (WNN), whose hidden layer is compris...
Wavelet neural networks (WNN) have been applied successfully into many fields. The main purpose of t...
The main aim of this report is to study the topic of Wavelet Neural Networks, and see how they are u...
Traditional prediction methods for time series often restrict on linear regression analysis, exponen...
Stock market is a highly volatile domain. Actually, it has always been a challenge to researchers ov...
This research examines the forecasting performance of wavelet neural network (WNN) model using publi...
In this paper we apply neural network with denoising layer method for forecasting of Central Europea...
Recently, a new decomposition method known as wavelet decomposition was introduced, which is accompl...
Stock movement prediction is important in the financial world because investors want to observe tren...
Stock prediction with data mining techniques is one of the most important issues in finance. This fi...
Stock prediction with data mining techniques is one of the most important issues in finance. This fi...
Due to the large amounts of risks and potential financial benefits involved, the ability to achieve ...
Time series data analysis is today’s financial need which is to be predicted with highest accuracy. ...
Abstract — One of the most important problems in modern finance is finding efficient ways to summari...
Stock forecasting is complicated with its non-linearity and high noise, and current forecasting mode...
This paper explores the application of a wavelet neural network (WNN), whose hidden layer is compris...
Wavelet neural networks (WNN) have been applied successfully into many fields. The main purpose of t...
The main aim of this report is to study the topic of Wavelet Neural Networks, and see how they are u...
Traditional prediction methods for time series often restrict on linear regression analysis, exponen...
Stock market is a highly volatile domain. Actually, it has always been a challenge to researchers ov...
This research examines the forecasting performance of wavelet neural network (WNN) model using publi...
In this paper we apply neural network with denoising layer method for forecasting of Central Europea...
Recently, a new decomposition method known as wavelet decomposition was introduced, which is accompl...
Stock movement prediction is important in the financial world because investors want to observe tren...
Stock prediction with data mining techniques is one of the most important issues in finance. This fi...
Stock prediction with data mining techniques is one of the most important issues in finance. This fi...
Due to the large amounts of risks and potential financial benefits involved, the ability to achieve ...
Time series data analysis is today’s financial need which is to be predicted with highest accuracy. ...
Abstract — One of the most important problems in modern finance is finding efficient ways to summari...
Stock forecasting is complicated with its non-linearity and high noise, and current forecasting mode...