In this paper, we apply both supervised and unsupervised machine learning techniques to predict the trend of financial time series based on trading rules. These techniques are K-means for clustering the similar group of data and support vector machine for training and testing historical data to perform a one-day-ahead trend prediction. To evaluate the method, we compare the proposed method with traditional back-propagation neural network and a standalone support vector machine. In addition, to implement this combination method, we use the financial time series data obtained from Yahoo Finance website and the experimental results also validate the effectiveness of the method
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
In this work, we propose and investigate a series of methods to predict stock market movements. Thes...
This article conducts a systematic comparison of three methods for predicting the direction (+/-) of...
The aim of the paper was to outline a trend prediction model for the BELEX15 stock market index of t...
Today, time series data are predicted using various methods. The main technique currently used to id...
Previous research shows strong evidence that traditional regression based predictive models face sig...
In this study, a prediction model based on support vector machines (SVM) improved by introducing a v...
A popular Machine Learning Technique called the Support Vector Machine (SVM) is adopted on the Stock...
Abstract- Recently, data mining and time series prediction in financial forecasting has received muc...
In this paper, we investigate analysis and prediction of the time-dependent data. We focus our atten...
Financial markets are the biggest business platforms in the world. Therefore, financial forecasting ...
With cloud computing oering organizations a level of scalability and power, we are nally at a point...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Forecasting stock price movement direction (SPMD) is an essential issue for short-term investors and...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
In this work, we propose and investigate a series of methods to predict stock market movements. Thes...
This article conducts a systematic comparison of three methods for predicting the direction (+/-) of...
The aim of the paper was to outline a trend prediction model for the BELEX15 stock market index of t...
Today, time series data are predicted using various methods. The main technique currently used to id...
Previous research shows strong evidence that traditional regression based predictive models face sig...
In this study, a prediction model based on support vector machines (SVM) improved by introducing a v...
A popular Machine Learning Technique called the Support Vector Machine (SVM) is adopted on the Stock...
Abstract- Recently, data mining and time series prediction in financial forecasting has received muc...
In this paper, we investigate analysis and prediction of the time-dependent data. We focus our atten...
Financial markets are the biggest business platforms in the world. Therefore, financial forecasting ...
With cloud computing oering organizations a level of scalability and power, we are nally at a point...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Forecasting stock price movement direction (SPMD) is an essential issue for short-term investors and...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
Stock market is a highly complex and non-linear dynamic system. Successful predictions in the stock ...
In this work, we propose and investigate a series of methods to predict stock market movements. Thes...