Today’s financial markets are inextricably linked with financial events like acquisitions, profit announcements, or product launches. Information extracted from news messages that report on such events could hence be beneficial for financial decision making. The ubiquity of news, however, makes manual analysis impossible, and due to the unstructured nature of text, the (semi-)automatic extraction and application of financial events remains a non-trivial task. Therefore, the studies composing this dissertation investigate 1) how to accurately identify financial events in news text, and 2) how to effectively use such extracted events in financial applications. Based on a detailed evaluation of current event extraction systems, this thesis ...
textabstractAs today's financial markets are sensitive to breaking news on economic events, accurate...
This thesis investigates the prediction of possible stock price changes immediately after news artic...
Based on a recently developed fine-grained event extraction dataset for the economic domain, we pres...
Today’s financial markets are inextricably linked with financial events like acquisitions, profit an...
Breaking news on economic events such as stock splits or mergers and acquisitions has been shown to ...
In business and management, there is a need to understand the situations that occur in the stock mar...
Due to its high productivity at relatively low costs, algorithmic trading has become increasingly po...
Due to the market sensitivity to emerging news, investors on financial markets need to continuously ...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
This paper presents a dataset and supervised classification approach for economic event detection in...
Event studies in finance have focused on traditional news headlines to assess the impact an event ha...
In the current age of overwhelming information and massive production of textual data on the Web, Ev...
This PhD thesis contributes to the newly emerged, growing body of scientific work on the use of News...
In this paper we present a framework for automatic exploitation of news in stock trading strategies....
It has been shown that news events influ-ence the trends of stock price movements. However, previous...
textabstractAs today's financial markets are sensitive to breaking news on economic events, accurate...
This thesis investigates the prediction of possible stock price changes immediately after news artic...
Based on a recently developed fine-grained event extraction dataset for the economic domain, we pres...
Today’s financial markets are inextricably linked with financial events like acquisitions, profit an...
Breaking news on economic events such as stock splits or mergers and acquisitions has been shown to ...
In business and management, there is a need to understand the situations that occur in the stock mar...
Due to its high productivity at relatively low costs, algorithmic trading has become increasingly po...
Due to the market sensitivity to emerging news, investors on financial markets need to continuously ...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
This paper presents a dataset and supervised classification approach for economic event detection in...
Event studies in finance have focused on traditional news headlines to assess the impact an event ha...
In the current age of overwhelming information and massive production of textual data on the Web, Ev...
This PhD thesis contributes to the newly emerged, growing body of scientific work on the use of News...
In this paper we present a framework for automatic exploitation of news in stock trading strategies....
It has been shown that news events influ-ence the trends of stock price movements. However, previous...
textabstractAs today's financial markets are sensitive to breaking news on economic events, accurate...
This thesis investigates the prediction of possible stock price changes immediately after news artic...
Based on a recently developed fine-grained event extraction dataset for the economic domain, we pres...