 Copyright 2009 Digital Enterprise Research Institute. All rights reserved Digital Enterprise Research Institute www.deri.ie Ontologies & Natural Language.

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 Copyright 2009 Digital Enterprise Research Institute. All rights reserved Digital Enterprise Research Institute Ontologies & Natural Language Processing Paul Buitelaar DERI – Unit for Natural Language Processing National University of Ireland, Galway

Digital Enterprise Research Institute Some History – Ontologies & NLP Circumscription (McCarthy 1980) TACITUS Commonsense Physics (Hobbs et al 1987)  Natural Language Understanding Subworld Concept Lexicon (Nirenburg & Raskin 1987)  Sub-language, Knowledge-based Machine Translation Temporal Ontology (Moens & Steedman 1988)  Event Structure Analysis in Natural Language Naive Semantics (Dahlgren 1988)  Natural Language Understanding (PP attachment) PENMAN Upper Ontology (Bateman et al 1990)  Natural Language Generation MikroKosmos (Mahesh & Nirenburg 1995)  Knowledge-based Machine Translation Conclusions at end of 90s  Knowledge Representation effort/maintenance is to costly & less robust in applications  Cheaper, more robust but shallow (semantic) approaches needed  Turn towards empirical methods in NLP; KR loses central place in NLP

Digital Enterprise Research Institute Recent Parallel Developments in KR & NLP Knowledge Representation  KR moves to the (Semantic) Web: RDF, DAML/OIL > OWL - standardization  Distributed, collaborative Ontology Development - less costly, more robust  Ontology sharing, merging, etc. – Ontology libraries/repositories NLP  Robust, statistical methods developed for syntactic analysis: part of speech tagging, chunking, dependency parsing  Renewed interest in semantic analysis: semantic role labelling, temporal analysis, entailment, taxonomy extraction  Applied work in ontology-based information extraction for specific domains, e.g. biomedical, business intelligence KR & NLP moving slowly back together  KR provides ontologies for use in NLP – information extraction  NLP provides input for ontology development – text mining

Digital Enterprise Research Institute Current Trends (relevant for IAOA) Ontology Learning  Extracting domain ontology models from domain-specific text data Ontology Population  Semantic annotation, Ontology-based information extraction  Extracting instances from text for knowledge base generation Lexicalized Ontologies, Lexical/linguistic ontology enrichment  Ontologies often lack information on linguistic realization  Integration of linguistic information with domain semantics needed  LexInfo model: integrating lexical information with ontologies – Paul Buitelaar, Philipp Cimiano, Peter Haase, Michael Sintek Towards Linguistically Grounded Ontologies In: Proceedings of the 6th European Semantic Web Conference (ESWC 2009). Lecture Notes in Computer Science. Springer.