DocumentCode :
3290808
Title :
Automated News Reading: Stock Price Prediction Based on Financial News Using Context-Specific Features
Author :
Hagenau, Michael ; Liebmann, Michael ; Hedwig, Markus ; Neumann, Dirk
fYear :
2012
fDate :
4-7 Jan. 2012
Firstpage :
1040
Lastpage :
1049
Abstract :
We examine whether stock price effects can be automatically predicted analyzing unstructured textual information in financial news. Accordingly, we enhance existing text mining methods to evaluate the information content of financial news as an instrument for investment decisions. The main contribution of this paper is the usage of more expressive features to represent text and the employment of market feedback as part of our word selection process. In our study, we show that a robust Feature Selection allows lifting classification accuracies significantly above previous approaches when combined with complex feature types. That is because our approach allows selecting semantically relevant features and thus, reduces the problem of over-fitting when applying a machine learning approach. The methodology can be transferred to any other application area providing textual information and corresponding effect data.
Keywords :
data mining; investment; learning (artificial intelligence); stock markets; text analysis; automated news reading; classification accuracies; context-specific features; feature selection; financial news; information content; investment decision; machine learning; market feedback; stock price prediction; text mining; unstructured textual information; Accuracy; Dictionaries; Feature extraction; Machine learning; Support vector machines; Text mining; Training; event study; financial forecasting; machine learning; sentiment; text mining;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
System Science (HICSS), 2012 45th Hawaii International Conference on
Conference_Location :
Maui, HI
ISSN :
1530-1605
Print_ISBN :
978-1-4577-1925-7
Electronic_ISBN :
1530-1605
Type :
conf
DOI :
10.1109/HICSS.2012.129
Filename :
6149155
Link To Document :
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