Forecasting stock price movement direction (SPMD) is an essential issue for short-term investors and a hot topic for researchers. It is a real challenge concerning the efficient market hypothesis that historical data would not be helpful in forecasting because it is already reflected in prices. Some commonly-used classical methods are based on statistics and econometric models. However, forecasting becomes more complicated when the variables in the model are all nonstationary, and the relationships between the variables are sometimes very weak or simultaneous. The continuous development of powerful algorithms features in machine learning and artificial intelligence has opened a promising new direction. This study compares the predictive abi...
There has been extensive literature written about the efficiency of the stock market. Practitioners ...
In this work were investigated efficient market hypothesis problem, support vector machines an...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...
Forecasting stock price movement direction (SPMD) is an essential issue for short-term investors and...
Our paper investigates the performance of two machine learning models, namely Support Ve...
2nd International Afro-European Conference for Industrial Advancement (AECIA) -- SEP 09-11, 2015 -- ...
Stock price movement prediction has been one of the most challenging issues in finance since the tim...
In this paper, we investigate analysis and prediction of the time-dependent data. We focus our atten...
Predicting the direction of the stock market has always been a huge challenge. Also, the way of fore...
Forecasting of stock prices has been a challenging area due to its complex and dynamic nature. There...
Forecasting of stock prices has been a challenging area due to its complex and dynamic nature. There...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
Generally, stock investors tend to implement different analysis tools on stock prediction, in order ...
This research addresses the problem of predicting the trends of two stocks and two stock indexes fo...
There has been extensive literature written about the efficiency of the stock market. Practitioners ...
In this work were investigated efficient market hypothesis problem, support vector machines an...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...
Forecasting stock price movement direction (SPMD) is an essential issue for short-term investors and...
Our paper investigates the performance of two machine learning models, namely Support Ve...
2nd International Afro-European Conference for Industrial Advancement (AECIA) -- SEP 09-11, 2015 -- ...
Stock price movement prediction has been one of the most challenging issues in finance since the tim...
In this paper, we investigate analysis and prediction of the time-dependent data. We focus our atten...
Predicting the direction of the stock market has always been a huge challenge. Also, the way of fore...
Forecasting of stock prices has been a challenging area due to its complex and dynamic nature. There...
Forecasting of stock prices has been a challenging area due to its complex and dynamic nature. There...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
Since the stock market is one of the most important areas for investors, stock market price trend pr...
Generally, stock investors tend to implement different analysis tools on stock prediction, in order ...
This research addresses the problem of predicting the trends of two stocks and two stock indexes fo...
There has been extensive literature written about the efficiency of the stock market. Practitioners ...
In this work were investigated efficient market hypothesis problem, support vector machines an...
The purpose of this paper is to compare the performance of various state-of-the-art machine learning...