Ontology Learning and Information Extraction for the Semantic Web – Martin Kavalec
Martin Kavalec
Doctoral thesis
Ontology Learning and Information Extraction for the Semantic Web
Abstract:
The work gives overview of its three main topics: semantic web, information extraction and ontology learning. A method for identification relevant information on web pages is described and experimentally tested on pages of companies offering products and services. The method is based on analysis of a sample web pages and their position in the Open Directory catalogue. Furthermore, a modfication of …more
Language used: English
Date on which the thesis was submitted / produced: 4. 9. 2006
Identifier:
http://www.vse.cz/vskp/eid/55027
Thesis defence
- Date of defence: 2016
- Supervisor: Petr Berka
- Reader: Olga Burešová
Citation record
Full text of thesis
Contents of on-line thesis archive
Published in Theses:- autentizovaným zaměstnancům ze stejné školy/fakulty
Other ways of accessing the text
Institution archiving the thesis and making it accessible: Vysoká škola ekonomická v Prazehttp://www.vse.cz/vskp/eid/55027
Vysoká škola ekonomická v Praze
Doctoral programme / field:
Aplikovaná informatika / Informatika
Theses on a related topic
-
Practical use of natural language processing in education technology
Dominik Hartinger -
Application of Natural language processing to enhance qualitative research used for marketing
Poj Nuangniyom Netsiri -
Scalability of Semantic Analysis in Natural Language Processing
Radim Řehůřek -
Ontology Learning and Information Extraction for the Semantic Web
Martin Kavalec -
Učení business rules z výsledků dolování GUHA asociačních pravidel
Stanislav Vojíř -
Application of Semantic Web Technologies to Verification of Business Requirements
Anastasia Shuvalova -
Modeling Events on the Semantic Web
Tomáš Hanzal -
Building of domain-specific semantic networks from web pages
Ron Šmeral