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Project

SENTiVENT: event extraction and sentiment analysis for financial applications. (SentEvent)

In economic news, journalists and analysts give objective information on recent events while also
discussing the implications of events in an implicitly subjective manner. We investigate text mining
approaches for extracting structured factual data alongside subjective information from Dutch and
English economic news reporting. Event extraction obtains detailed information about economic
events such as acquisitions, CEO changes, or product launches: it summarizes an event and tells us
who is involved in what event with which event properties. Aspect-based sentiment analysis gives
us an overview about what negative or positive opinion is expressed about what part of an event
or entity. In standard sentiment analysis, only explicitly expressed sentiment is detected ("This
movie is fantastic.") and current systems do not not handle common-sense implicit sentiments
which is connotationally attached to certain events or situations. For instance, "Motorola sees an
increase in revenue" implies a positive sentiment towards the company. This implicit sentiment
makes up half of the opinion expressions in economic news, so processing it is important for
making financial technology applications. As validation, the extracted factual and opinion data is
compared to judgments of financial analysts and is used in stock price prediction experiments
where we automatically predict the price movement of stocks.

Date:1 Jan 2017 →  31 Dec 2021
Keywords:event extraction, sentiment analysis, financial analysis applications, information retrieval, natural language processing, text mining, machine learning
Disciplines:Corpus linguistics, Business economics, Machine learning and decision making, Knowledge representation and machine learning, Ontologies, data curation and text mining, Computational linguistics, Information retrieval and web search, Natural language processing, Applied economics not elsewhere classified, Data mining