Textual analysis of news articles is increasingly important in predicting stock prices. Previous research has intensively utilized the textual analysis of news and other firmrelated documents in volatility prediction models. It has been demonstrated that the news may be related to abnormal stock price behavior subsequent to their dissemination. However, previous studies to date have tended to focus on linear regression methods in predicting volatility. Here, we show that non-linear models can be effectively employed to explain the residual variance of the stock price. Moreover, we use meta-learning approach to simulate the decision-making process of various investors. The results suggest that this approach significantly improves the...
Stock market prediction with data mining techniques is one of the most important issues to be inves...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
This thesis analyzes various text classification techniques in order to assess whether the knowledge...
Textual analysis of news articles is increasingly important in predicting stock prices. Previous res...
Current models for predicting volatility do not incorporate information flow and are solely based on...
Vast amount of news articles are published daily reflecting global topics. The stories represent inf...
Current models for predicting volatility do not incorporate information flow and are solely based on...
The behaviour of time series data from financial markets is influenced by a rich mixture of quantita...
Due to the fast delivery of news articles by news providers on the Internet and/or via news datafeed...
The efficient market hypothesis states that an efficient market incorporates all available informati...
A statistical approach to depict stock volatility based on general news headlines by exploiting Mach...
This article aims to provide a comprehensive analysis of the influence of financial news on the stoc...
In this work we set out to determine the impact, if any, of the analysis of news on stock price pred...
Forecasting the volatility of stock return plays an important role in the financial markets. The GAR...
The stock market is volatile and volatility occurs in clusters, price fluctuations based on sentimen...
Stock market prediction with data mining techniques is one of the most important issues to be inves...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
This thesis analyzes various text classification techniques in order to assess whether the knowledge...
Textual analysis of news articles is increasingly important in predicting stock prices. Previous res...
Current models for predicting volatility do not incorporate information flow and are solely based on...
Vast amount of news articles are published daily reflecting global topics. The stories represent inf...
Current models for predicting volatility do not incorporate information flow and are solely based on...
The behaviour of time series data from financial markets is influenced by a rich mixture of quantita...
Due to the fast delivery of news articles by news providers on the Internet and/or via news datafeed...
The efficient market hypothesis states that an efficient market incorporates all available informati...
A statistical approach to depict stock volatility based on general news headlines by exploiting Mach...
This article aims to provide a comprehensive analysis of the influence of financial news on the stoc...
In this work we set out to determine the impact, if any, of the analysis of news on stock price pred...
Forecasting the volatility of stock return plays an important role in the financial markets. The GAR...
The stock market is volatile and volatility occurs in clusters, price fluctuations based on sentimen...
Stock market prediction with data mining techniques is one of the most important issues to be inves...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
This thesis analyzes various text classification techniques in order to assess whether the knowledge...