Abstract—Stock trend forecasting is one of the important issues in stock market research. However, forecasting stock trend remains a challenge because of its irregular characteristic in the stock indices distribution, which changes over time. Support Vector Machine (SVM) produces a fairly good result in stock trend forecasting, but the performance of SVM can be affected by the high dimensional input features and noisy data. This paper hybridizes the Particle Swarm Optimization (PSO) algorithm to generate the optimum features set prior to facilitate SVM learning. The SVM algorithm uses the Radial Basis Function (RBF) kernel function and optimization of the gamma and large margin parameters are done using the PSO algorithm. The proposed algor...
Trading signal detection is a very popular yet challenging research topic in the financial investmen...
The present paper introduces a new clonal particle swarm optimisation (CPSO) and PSO techniques to d...
Bankruptcy prediction has been extensively investigated by data mining techniques since it is a crit...
Stock trend forecasting is one of the important issues in stock market research. However, forecastin...
Stock investing is one of the most popular types of investments since it provides the highest return...
In this study, a prediction model based on support vector machines (SVM) improved by introducing a v...
Abstract – Stock market prediction is the act of trying to determine the future value of a company s...
Prediction of stock trends is the most significant and challenging task for the enterprise as well a...
Stock occupies a very important position in the market economy. The individual can affect the operat...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Due to non-linearity and non-stationary characteristics of stock market time series data, prior appr...
Previous research shows strong evidence that traditional regression based predictive models face sig...
The aim of the paper was to outline a trend prediction model for the BELEX15 stock market index of t...
Trading signal detection is a very popular yet challenging research topic in the financial investmen...
Trading signal detection is a very popular yet challenging research topic in the financial investmen...
The present paper introduces a new clonal particle swarm optimisation (CPSO) and PSO techniques to d...
Bankruptcy prediction has been extensively investigated by data mining techniques since it is a crit...
Stock trend forecasting is one of the important issues in stock market research. However, forecastin...
Stock investing is one of the most popular types of investments since it provides the highest return...
In this study, a prediction model based on support vector machines (SVM) improved by introducing a v...
Abstract – Stock market prediction is the act of trying to determine the future value of a company s...
Prediction of stock trends is the most significant and challenging task for the enterprise as well a...
Stock occupies a very important position in the market economy. The individual can affect the operat...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Due to non-linearity and non-stationary characteristics of stock market time series data, prior appr...
Previous research shows strong evidence that traditional regression based predictive models face sig...
The aim of the paper was to outline a trend prediction model for the BELEX15 stock market index of t...
Trading signal detection is a very popular yet challenging research topic in the financial investmen...
Trading signal detection is a very popular yet challenging research topic in the financial investmen...
The present paper introduces a new clonal particle swarm optimisation (CPSO) and PSO techniques to d...
Bankruptcy prediction has been extensively investigated by data mining techniques since it is a crit...