In this paper we present a framework for automatic exploitation of news in stock trading strategies. Events are extracted from news messages presented in free text without annotations. We test the introduced framework by deriving trading strategies based on technical indicators and impacts of the extracted events. The strategies take the form of rules that combine technical trading indicators with a news variable, and are revealed through the use of genetic programming. We find that the news variable is often included in the optimal trading rules, indicating the added value of news for predictive purposes and validating our proposed framework for automatically incorporating news in stock trading strategies
This thesis tries to answer the question how to predict the reaction of the stock market to news art...
It has been shown that news events influ-ence the trends of stock price movements. However, previous...
This thesis investigates the prediction of possible stock price changes immediately after news artic...
In this paper we present a framework for automatic exploitation of news in stock trading strategies....
This thesis is dedicated to Ednah Thomas, who showed me language; and Victor Yonash, who showed me c...
Today’s financial markets are inextricably linked with financial events like acquisitions, profit an...
This PhD thesis contributes to the newly emerged, growing body of scientific work on the use of News...
Event studies in finance have focused on traditional news headlines to assess the impact an event ha...
The efficient market hypothesis (EMH) suggests that a stock market behaves like a random walk; if so...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
In this paper, we describe NewsCATS (news categorization and trading system), a system implemented t...
Due to its high productivity at relatively low costs, algorithmic trading has become increasingly po...
In this paper, I propose a genetic learning approach to generate technical trading systems for stock...
The thesis focuses on exploiting imperfections on the stock market by utilizing state-of-the-art lea...
Algorithmic Trading (AT) is a financial sector that trades financial instruments, such as stocks, wi...
This thesis tries to answer the question how to predict the reaction of the stock market to news art...
It has been shown that news events influ-ence the trends of stock price movements. However, previous...
This thesis investigates the prediction of possible stock price changes immediately after news artic...
In this paper we present a framework for automatic exploitation of news in stock trading strategies....
This thesis is dedicated to Ednah Thomas, who showed me language; and Victor Yonash, who showed me c...
Today’s financial markets are inextricably linked with financial events like acquisitions, profit an...
This PhD thesis contributes to the newly emerged, growing body of scientific work on the use of News...
Event studies in finance have focused on traditional news headlines to assess the impact an event ha...
The efficient market hypothesis (EMH) suggests that a stock market behaves like a random walk; if so...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
In this paper, we describe NewsCATS (news categorization and trading system), a system implemented t...
Due to its high productivity at relatively low costs, algorithmic trading has become increasingly po...
In this paper, I propose a genetic learning approach to generate technical trading systems for stock...
The thesis focuses on exploiting imperfections on the stock market by utilizing state-of-the-art lea...
Algorithmic Trading (AT) is a financial sector that trades financial instruments, such as stocks, wi...
This thesis tries to answer the question how to predict the reaction of the stock market to news art...
It has been shown that news events influ-ence the trends of stock price movements. However, previous...
This thesis investigates the prediction of possible stock price changes immediately after news artic...