Title :
"Boom" or "Ruin"--Does It Make a Difference? Using Text Mining and Sentiment Analysis to Support Intraday Investment Decisions
Author :
Siering, Michael
Author_Institution :
Goethe-Univ., Frankfurt, Germany
Abstract :
Investors have to deal with an increasing amount of information in order to make beneficial investment decisions. Thus, text mining is often applied to support the decision-making process by predicting the stock price impact of financial news. Recent research has shown that there exists a relation between news article sentiment and stock prices. However, this is not considered by previous text mining studies. In this paper, we develop a novel two-stage approach that connects text mining with sentiment analysis to predict the stock price impact of company-specific news. We find that the combination of text mining and sentiment analysis improves forecasting results. Additionally, a higher accuracy can be achieved by using finance-related word lists for sentiment analysis instead of a generic dictionary.
Keywords :
data mining; investment; stock markets; text analysis; company-specific news; decision making process; financial news; intraday investment decisions; sentiment analysis; stock price; text mining; Dictionaries; Indexes; Investments; Labeling; Machine learning; Support vector machines; Text mining; Financial Decision-Making; Sentiment Analysis; Text Mining;
Conference_Titel :
System Science (HICSS), 2012 45th Hawaii International Conference on
Conference_Location :
Maui, HI
Print_ISBN :
978-1-4577-1925-7
Electronic_ISBN :
1530-1605
DOI :
10.1109/HICSS.2012.2