Abstract. In this study, a hybrid intelligent data mining methodology, genetic algorithm based support vector machine (GASVM) model, is proposed to explore stock market tendency. In this hybrid data mining approach, GA is used for variable selection in order to reduce the model complexity of SVM and improve the speed of SVM, and then the SVM is used to identify stock market movement direction based on the historical data. To evaluate the forecasting ability of GASVM, we compare its performance with that of conventional methods (e.g., statistical models and time series models) and neural network models. The empirical results reveal that GASVM outperforms other forecasting models, implying that the proposed approach is a promising alternative...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
The main motivation for this paper is to introduce a novel hybrid method for the prediction of the ...
Today, time series data are predicted using various methods. The main technique currently used to id...
Abstract: Time series forecasting is receiving remarkable attention from the research community in u...
The main motivation for this paper is to introduce a novel hybrid method for the prediction of the d...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Stock price movement prediction has been one of the most challenging issues in finance since the tim...
In this work, we propose and investigate a series of methods to predict stock market movements. Thes...
Stock market data is a high dimensional time series financial data that poses unique computational c...
In this study, a prediction model based on support vector machines (SVM) improved by introducing a v...
A hybrid machine learning system based on Genetic Algorithm (GA) and Time Series Analysis is propose...
[[abstract]]By integrating genetic algorithm (GA)-based optimal time-scale feature extractions with ...
The aim of the paper was to outline a trend prediction model for the BELEX15 stock market index of t...
The stock market forecast includes forecasting the future value of the company's shares or other fin...
In this paper, two hybrid models are used for timing of the stock markets on the basis of the techni...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
The main motivation for this paper is to introduce a novel hybrid method for the prediction of the ...
Today, time series data are predicted using various methods. The main technique currently used to id...
Abstract: Time series forecasting is receiving remarkable attention from the research community in u...
The main motivation for this paper is to introduce a novel hybrid method for the prediction of the d...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Stock price movement prediction has been one of the most challenging issues in finance since the tim...
In this work, we propose and investigate a series of methods to predict stock market movements. Thes...
Stock market data is a high dimensional time series financial data that poses unique computational c...
In this study, a prediction model based on support vector machines (SVM) improved by introducing a v...
A hybrid machine learning system based on Genetic Algorithm (GA) and Time Series Analysis is propose...
[[abstract]]By integrating genetic algorithm (GA)-based optimal time-scale feature extractions with ...
The aim of the paper was to outline a trend prediction model for the BELEX15 stock market index of t...
The stock market forecast includes forecasting the future value of the company's shares or other fin...
In this paper, two hybrid models are used for timing of the stock markets on the basis of the techni...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
The main motivation for this paper is to introduce a novel hybrid method for the prediction of the ...
Today, time series data are predicted using various methods. The main technique currently used to id...