Detailed Information on Publication Record
2007
Advanced learning techniques for NLP
POPELÍNSKÝ, LubomírBasic information
Original name
Advanced learning techniques for NLP
Name in Czech
Pokročilé metody učení pro zpracování přirozeného jazyka
Name (in English)
Advanced learning techniques for NLP
Authors
POPELÍNSKÝ, Lubomír (203 Czech Republic, guarantor, belonging to the institution)
Edition
8th summer school of the European Masters in Language and Speech, 2007
Other information
Language
Czech
Type of outcome
Vyžádané přednášky
Field of Study
10201 Computer sciences, information science, bioinformatics
Country of publisher
Czech Republic
Confidentiality degree
není předmětem státního či obchodního tajemství
RIV identification code
RIV/00216224:14330/07:00041849
Organization unit
Faculty of Informatics
Keywords in English
machine learning; inductive logic programming; natural language processing
Tags
International impact
Změněno: 3/5/2011 06:50, doc. RNDr. Lubomír Popelínský, Ph.D.
V originále
Inductive logic programing (ILP) aims at learning first-order predicate formula from positive and maybe negative examples. This learning technique is not limited to single-table data (like most of other learning method) and is especially suitable for data of complex structure. ILP has been successful in part-of-speech tagging (English, Swedish, Spanish, Czech), error detection in a morphologically tagged Czech corpus, in text categorization and information extraction. The aim of the tutorial is to provide the participants with practical usage of ILP for several NLP tasks. Summary A brief overview of ILP ILP for Part-of-Speech Tagging. A case studies: POS tagging for English; Error detection in a Czech corpus ILP for Text filtering and Information Extraction A case studies: Filtering situations and action from news reports; Learning agent-target from biomedical texts First-order frequent patterns and association rules for NLP
In English
Inductive logic programing (ILP) aims at learning first-order predicate formula from positive and maybe negative examples. This learning technique is not limited to single-table data (like most of other learning method) and is especially suitable for data of complex structure. ILP has been successful in part-of-speech tagging (English, Swedish, Spanish, Czech), error detection in a morphologically tagged Czech corpus, in text categorization and information extraction. The aim of the tutorial is to provide the participants with practical usage of ILP for several NLP tasks. Summary A brief overview of ILP ILP for Part-of-Speech Tagging. A case studies: POS tagging for English; Error detection in a Czech corpus ILP for Text filtering and Information Extraction A case studies: Filtering situations and action from news reports; Learning agent-target from biomedical texts First-order frequent patterns and association rules for NLP