Current models for predicting volatility do not incorporate information flow and are solely based on historical volatilities. We suggest a method to quantify the semantic content of words in news articles about a company and use this as a predictor of its stock volatility. The results show that future stock volatility is better predicted by our method than the conventional models. We also analyze the functional role of text in media either as a passive documentation of past information flow or as an active source for new information influencing future volatility. Our data suggest that semantic content may take both roles
Volatility prediction--an essential concept in financial markets--has recently been addressed using ...
The behaviour of time series data from financial markets is influenced by a rich mixture of quantita...
Stock market prediction with data mining techniques is one of the most important issues to be inves...
Current models for predicting volatility do not incorporate information flow and are solely based on...
Due to the fast delivery of news articles by news providers on the Internet and/or via news datafeed...
A popular theory of markets is that they are efficient: all available information is deemed to provi...
Textual analysis of news articles is increasingly important in predicting stock prices. Previous re...
The efficient market hypothesis states that the market incorporates all available information to pro...
In a quick search online, one can find many tools which use information from news headlines to make ...
This thesis analyzes various text classification techniques in order to assess whether the knowledge...
The focus of this paper is to understand whether the words contained in a text corpus improves the e...
The efficient market hypothesis states that the market incorporates all available information to pro...
Both traditional finance and behavioral finance theory have reached a consensus that the news media ...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
This paper presents a new method to predicting the change of stock prices by utilizing text mining n...
Volatility prediction--an essential concept in financial markets--has recently been addressed using ...
The behaviour of time series data from financial markets is influenced by a rich mixture of quantita...
Stock market prediction with data mining techniques is one of the most important issues to be inves...
Current models for predicting volatility do not incorporate information flow and are solely based on...
Due to the fast delivery of news articles by news providers on the Internet and/or via news datafeed...
A popular theory of markets is that they are efficient: all available information is deemed to provi...
Textual analysis of news articles is increasingly important in predicting stock prices. Previous re...
The efficient market hypothesis states that the market incorporates all available information to pro...
In a quick search online, one can find many tools which use information from news headlines to make ...
This thesis analyzes various text classification techniques in order to assess whether the knowledge...
The focus of this paper is to understand whether the words contained in a text corpus improves the e...
The efficient market hypothesis states that the market incorporates all available information to pro...
Both traditional finance and behavioral finance theory have reached a consensus that the news media ...
Abstract — Mining textual documents and time series concurrently, such as predicting the movements o...
This paper presents a new method to predicting the change of stock prices by utilizing text mining n...
Volatility prediction--an essential concept in financial markets--has recently been addressed using ...
The behaviour of time series data from financial markets is influenced by a rich mixture of quantita...
Stock market prediction with data mining techniques is one of the most important issues to be inves...