In this study, performance of classification techniques is compared in order to predict dividend policy decisions. We first analyzed the feasibility of all available companies listed in the Korea Exchange (KRX) market as dividend data sets by using classification techniques. Then we developed a prediction model based on support vector machines (SVM). We compare the classification accuracy performance between our SVM model and artificial intelligence techniques, and suggest a better dividend policy forecasting model to help a chief executive officer (CEO) or a board of directors (BOD) make better decision in a corporate dividend policy. The experiments demonstrate that the SVM model always outperforms other models in the performance of divid...
Previous research shows strong evidence that traditional regression based predictive models face sig...
Our paper investigates the performance of two machine learning models, namely Support Ve...
There is a lack of research on the application of machine learning for stock return prediction in sm...
Recently, many researches attempt to apply data mining methods to construct attractive decision supp...
Foreign Exchange Market is a fast moving market with the highest returns as compared to other forms ...
Since one of the most important sources of information for investors and other beneficial is dividen...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
Financial forecasting in general, and exchange rate prediction in particular, is an issue of much in...
This thesis deals with use of regression or classification based on support vector machines from mac...
Investing money has never been a risk-free process. Many models have been designed for the predictio...
Prediction of stock trends is the most significant and challenging task for the enterprise as well a...
Since it is easy to access stock and financial information of public companies, people, especially i...
There are many types of investments to make money, one of which is in the form of shares. Shares is ...
There are many types of investments to make money, one of which is in the form of shares. Shares is ...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
Previous research shows strong evidence that traditional regression based predictive models face sig...
Our paper investigates the performance of two machine learning models, namely Support Ve...
There is a lack of research on the application of machine learning for stock return prediction in sm...
Recently, many researches attempt to apply data mining methods to construct attractive decision supp...
Foreign Exchange Market is a fast moving market with the highest returns as compared to other forms ...
Since one of the most important sources of information for investors and other beneficial is dividen...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
Financial forecasting in general, and exchange rate prediction in particular, is an issue of much in...
This thesis deals with use of regression or classification based on support vector machines from mac...
Investing money has never been a risk-free process. Many models have been designed for the predictio...
Prediction of stock trends is the most significant and challenging task for the enterprise as well a...
Since it is easy to access stock and financial information of public companies, people, especially i...
There are many types of investments to make money, one of which is in the form of shares. Shares is ...
There are many types of investments to make money, one of which is in the form of shares. Shares is ...
Many marketing problems require accurately predicting the outcome of a process or the future state o...
Previous research shows strong evidence that traditional regression based predictive models face sig...
Our paper investigates the performance of two machine learning models, namely Support Ve...
There is a lack of research on the application of machine learning for stock return prediction in sm...