Title :
Extracting Investor Sentiment from Weblog Texts: A Knowledge-based Approach
Author :
Klein, Achim ; Altuntas, Olena ; Häusser, Tobias ; Kessler, Wiltrud
Author_Institution :
Inf. Syst. 2, Univ. of Hohenheim, Stuttgart, Germany
Abstract :
Financial web logs contain a large amount of investor sentiments, i.e., expert assessments of financial instruments and market situations. These blogs provide potentially new and relevant information for investment managers. Since humans are not able to process and interpret the large amounts of available web information, an automated solution is required. We present a knowledge-based approach for extracting investor sentiment directly at high frequency. The approach performs a semantic analysis that starts on the word and sentence level. We employ ontology-guided and rule-based web information extraction based on domain expertise and linguistic knowledge. We evaluate our approach against standard machine learning approaches. A portfolio selection test using extracted sentiments provides evidence for the economic utility of investor sentiments from weblogs.
Keywords :
Web sites; financial data processing; information retrieval; investment; knowledge based systems; ontologies (artificial intelligence); semantic networks; text analysis; Weblog texts; domain expertise; economic utility; financial instruments; financial weblogs; investor sentiment extraction; knowledge-based approach; linguistic knowledge; market situations; ontology-guided Web information extraction; portfolio selection test; rule-based Web information extraction; semantic analysis; Correlation; Economic indicators; Indexes; Instruments; Ontologies; Semantics; Stock markets; Investor sentiment extraction; financial weblogs; knowledgebased web information extraction; portfolio selection;
Conference_Titel :
Commerce and Enterprise Computing (CEC), 2011 IEEE 13th Conference on
Conference_Location :
Luxembourg
Print_ISBN :
978-1-4577-1542-6
Electronic_ISBN :
978-0-7695-4535-6
DOI :
10.1109/CEC.2011.10