Information Technology Reference
In-Depth Information
qualitative concepts, such as similarity groups (equivalence classes), patterns and
quantitative concepts, such as similarity measures that are present in all fields.
Acknowledgements
This material is partly based on the lectures of the course “Bioinformatics: Computer
applications in molecular biology”, held in Trieste, Italy, 1992-2003. Special thanks are due
to M. Bishop (Hinxton, UK), E. Gasteiger (Geneva, Switzerland), R. Harper (Hinxton,
UK). D. Judge (Cambridge, UK), D. Landsman (Bethesda, MD), J. Leunissen
(Wageningen, The Netherlands) for advice, as well as to the following individuals for their
comments on various topics in the manuscript: Stephen Altschul (Bethesda, US), Steve
Bryant (Bethesda, US), Alexandre De Leon, (Calgary, Canada), Jacques Demongeot
(Grenoble, France), Mark Gerstein (New Haven, UK), Andrew Harrison (London, UK),
Lisa Holm (Hinxton, UK), Jack Leunissen (Wageningen, The Netherlands), Christine
Orengo (London, UK), William F. Pearson (US), János Podani (Budapest, Hungary).
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