%0 Conference Paper %1 omelayenko2001learning %A Omelayenko, Borys %B Proceedings of the International Workshop on Web Dynamics, held in conj. with the 8th International Conference on Database Theory (ICDT’01), London, UK %D 2001 %K ol_web2.0 ontology_learning overview web %T Learning of Ontologies for the Web: the Analysis of Existent Approaches %U http://www.dcs.bbk.ac.uk/webDyn/webDynPapers/omelayenko.pdf %X The next generation of the Web, called Semantic Web, has to improve the Web with semantic (ontological) page annotations to enable knowledge-level querying and searches. Manual construction of these ontologies will require tremendous efforts that force future integration of machine learning with knowledge acquisition to enable highly automated ontology learning. In the paper we present the state of the-art in the field of ontology learning from the Web to see how it can contribute to the task of semantic Web querying. We consider three components of the query processing system: natural language ontologies, domain ontologies and ontology instances. We discuss the requirements for machine learning algorithms to be applied for the learning of the ontologies of each type from the Web documents, and survey the existent ontology learning and other closely related approaches.