Recently, many researches attempt to apply data mining methods to construct attractive decision support models for stock prediction. These models mainly focus on forecasting the price trend and providing advice for investors. According to the practical requirements, this paper proposes a model based on the combination of financial indicators and data mining methods to help fund managers make decision. Four industries were selected as our initial stock pool. One of the most popular data mining methods, support vector machine, was employed to construct a stock prediction model. The results indicate that our model is capable of selecting uptrend stocks. The predictive precision exceeds 60% for each industry in almost entire test period. The se...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
The paper focuses on predicting the Nifty 50 Index by using 8 Supervised Machine Learning Models. Th...
Stock market is considered too uncertain to be predictable. Many individuals have developed methodol...
With rapid digitalization of mass media and successive evolution of computational modeling, applying...
Prediction of stock trends is the most significant and challenging task for the enterprise as well a...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
Investors in the stock market are always interested and looking for better methods of predicting the...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Generally, stock investors tend to implement different analysis tools on stock prediction, in order ...
The stock market forecast includes forecasting the future value of the company's shares or other fin...
The financial markets see a fair amount of usage of predictive technology and automated computer pro...
Previous research shows strong evidence that traditional regression based predictive models face sig...
Investing money has never been a risk-free process. Many models have been designed for the predictio...
Since it is easy to access stock and financial information of public companies, people, especially i...
This study examines the value of technical, financial and macroeconomic variables in stock index pre...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
The paper focuses on predicting the Nifty 50 Index by using 8 Supervised Machine Learning Models. Th...
Stock market is considered too uncertain to be predictable. Many individuals have developed methodol...
With rapid digitalization of mass media and successive evolution of computational modeling, applying...
Prediction of stock trends is the most significant and challenging task for the enterprise as well a...
This report depicts the work done by me, Abburu Manasa, as a contribution towards my Final Year Proj...
Investors in the stock market are always interested and looking for better methods of predicting the...
Financial markets facilitate international trade, are indicative of the future prospects of organiza...
Generally, stock investors tend to implement different analysis tools on stock prediction, in order ...
The stock market forecast includes forecasting the future value of the company's shares or other fin...
The financial markets see a fair amount of usage of predictive technology and automated computer pro...
Previous research shows strong evidence that traditional regression based predictive models face sig...
Investing money has never been a risk-free process. Many models have been designed for the predictio...
Since it is easy to access stock and financial information of public companies, people, especially i...
This study examines the value of technical, financial and macroeconomic variables in stock index pre...
Nowadays, people show more and more enthusiasm for applying machine learning methods to finance doma...
The paper focuses on predicting the Nifty 50 Index by using 8 Supervised Machine Learning Models. Th...
Stock market is considered too uncertain to be predictable. Many individuals have developed methodol...