Breaking news on economic events such as stock splits or mergers and acquisitions has been shown to have a substantial impact on the financial markets. As it is important to be able to automatically identify events in news items accurately and in a timely manner, we present in this paper proof-of-concept experiments for a supervised machine learning approach to economic event detection in newswire text. For this purpose, we created a corpus of Dutch financial news articles in which 10 types of company-specific economic events were annotated. We trained classifiers using various lexical, syntactic and semantic features. We obtain good results based on a basic set of shallow features, thus showing that this method is a viable approach for eco...
In the current age of overwhelming information and massive production of textual data on the Web, Ev...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
International audienceGiven a corpus of financial news labelled according to the market reaction fol...
Breaking news on economic events such as stock splits or mergers and acquisitions has been shown to ...
This paper presents a dataset and supervised classification approach for economic event detection in...
Today’s financial markets are inextricably linked with financial events like acquisitions, profit an...
Based on a recently developed fine-grained event extraction dataset for the economic domain, we pres...
We present SENTiVENT, a corpus of fine-grained company-specific events in English economic news arti...
In today's information-driven global economy, breaking news on economic events such as acquisitions ...
In today’s information-driven global economy, breaking news on economic events such as acquisitions ...
textabstractAs today's financial markets are sensitive to breaking news on economic events, accurate...
As today's financial markets are sensitive to breaking news on economic events, accurate and timely ...
Nowadays, emerging news on economic events such as acquisitions has a substantial impact on the fina...
In this paper, we present CrudeOilNews, a corpus of English Crude Oil news for event extraction. It ...
We explore several ways of using news articles and financial data to train neural network machine le...
In the current age of overwhelming information and massive production of textual data on the Web, Ev...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
International audienceGiven a corpus of financial news labelled according to the market reaction fol...
Breaking news on economic events such as stock splits or mergers and acquisitions has been shown to ...
This paper presents a dataset and supervised classification approach for economic event detection in...
Today’s financial markets are inextricably linked with financial events like acquisitions, profit an...
Based on a recently developed fine-grained event extraction dataset for the economic domain, we pres...
We present SENTiVENT, a corpus of fine-grained company-specific events in English economic news arti...
In today's information-driven global economy, breaking news on economic events such as acquisitions ...
In today’s information-driven global economy, breaking news on economic events such as acquisitions ...
textabstractAs today's financial markets are sensitive to breaking news on economic events, accurate...
As today's financial markets are sensitive to breaking news on economic events, accurate and timely ...
Nowadays, emerging news on economic events such as acquisitions has a substantial impact on the fina...
In this paper, we present CrudeOilNews, a corpus of English Crude Oil news for event extraction. It ...
We explore several ways of using news articles and financial data to train neural network machine le...
In the current age of overwhelming information and massive production of textual data on the Web, Ev...
In this thesis, we develop a system that analyzes unstructured financial news using text classificat...
International audienceGiven a corpus of financial news labelled according to the market reaction fol...