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Semantic Search:
Algorithms and Applications
Michael Schroeder
BioTechnological Center
TU Dresden
Biotec
Syllabus
The module deals with practical applications of logic and reasoning.
The course "semantic search" deals with a novel search paradigm that uses
background knowledge in the form of ontologies.
The course introduces the necessary cocnepts from information retrieval and
text-mining to realize ontology learning and alignments and ontologybased search.
By Michael Schroeder, Biotec, 2006
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Practicals
 Two types:
 Pen and paper exercises
 Programming tasks
By Michael Schroeder, Biotec, 2006
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Assessment
 Written exam counting 80% of final mark
 Practicals: Labs and Programming task counting 20%
 Do labs
 Build a semantic search engine (group work)
 Strategy for preparation
 Follow slides
 Do all labs and homework
By Michael Schroeder, Biotec, 2006
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Getting in touch
Email: {ms,george.tsatasronis}@biotec.dresden.de
Web site: http://www.biotec.tu dresden.de
Click Schroeder->Group->Teaching
Includes web site for ILS module
Bioinformatics group: Structural protein interactions and functional
annotation with ontologies, textmining, rules
Example: Ontology-based literature search at ww.gopubmed.org
By Michael Schroeder, Biotec, 2006
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Part I: Books and Papers
Natual language processing
 Manning and Schütze. Foundations of statsitical natural language
processing
 Gene mention normalization and interaction extraction with
context models and sentence motifs. Hakenberg et al., Genome
Biology, 2008
 Information retrieval
 Manning, Raghavan, Schütze. Introduction to information retrieval.
Book is online at http://nlp.stanford.edu/IR-book/information-retrievalbook.html
Ontology learning and alignment:
 P Cimiano. Ontology learning and population from text. Springer
Bio ontologies:
 The Gene Ontology (GO) project in 2006. Gene Ontology Consortium. Nucleic
Acids Res. 2006 Jan 1;34(Database issue):D322-6
By Michael Schroeder, Biotec, 2006
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