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Please use this identifier to cite or link to this item: http://hdl.handle.net/10016/9785

Google™ Scholar. Others By: García-Jiménez, Beatriz - Ledezma, Agapito - Sanchis, Araceli
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Title: S.cerevisiae complex function prediction with modular multi-relational framework
Author(s): García-Jiménez, Beatriz
Ledezma, Agapito
Sanchis, Araceli
Publisher: Springer
Issued date: 2010
Citation: Trends in applied intelligent systems: 23rd International Conference on Industrial Engineering and Other Applications of Applied Intelligent Systems, IEA/AIE 2010. Proceedings, part III. Springer, 2010, pp.1-6
URI: http://hdl.handle.net/10016/9785
ISBN: 978-3-642-13032-8
ISSN: 0302-9743
DOI: http://dx.doi.org/10.1007/978-3-642-13033-5_9
Description: Proceeding of: 23rd International Conference on Industrial Engineering and Other Applications of Applied Intelligent Systems, IEA/AIE 2010, Córdoba, Spain, June 1-4, 2010
Abstract: Determining the functions of genes is essential for understanding how the metabolisms work, and for trying to solve their malfunctions. Genes usually work in groups rather than isolated, so functions should be assigned to gene groups and not to individual genes. Moreover, the genetic knowledge has many relations and is very frequently changeable. Thus, a propositional ad-hoc approach is not appropriate to deal with the gene group function prediction domain. We propose the Modular Multi-Relational Framework (MMRF), which faces the problem from a relational and flexible point of view. The MMRF consists of several modules covering all involved domain tasks (grouping, representing and learning using computational prediction techniques). A specific application is described, including a relational representation language, where each module of MMRF is individually instantiated and refined for obtaining a prediction under specific given conditions.
Sponsor: This research work has been supported by CICYT, TRA 2007-67374-C02-02 project and by the expert biological knowledge of the Structural Computational Biology Group in Spanish National Cancer Research Centre (CNIO). The authors would like to thank members of Tilde tool developer group in K.U.Leuven for providing their help and many useful suggestions.
Review: PeerReviewed
Serie / Nº.: Lecture notes in computer science, vol. 6098
Publisher version: http://dx.doi.org/10.1007/978-3-642-13033-5_9
Keywords: Multi relational data mining
Gene function
Multi-label relational decision tree
Inductive logic programming
Structure data
Biological data integration
Rights: © Springer-Verlag Berlin Heidelberg
Appears in Collections:DI - CAOS - Capítulos de Monografías
DI - CAOS - Comunicaciones en Congresos y otros eventos

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