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  4. Automatic inference of graph transformation rules using the cyclic nature of chemical reactions
 
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2016
Conference Paper
Title

Automatic inference of graph transformation rules using the cyclic nature of chemical reactions

Abstract
Graph transformation systems have the potential to be realistic models of chemistry, provided a comprehensive collection of reaction rules can be extracted from the body of chemical knowledge. A first key step for rule learning is the computation of atom-atom mappings, i.e., the atom-wise correspondence between products and educts of all published chemical reactions. This can be phrased as a maximum common edge subgraph problem with the constraint that transition states must have cyclic structure. We describe a search tree method well suited for small edit distance and an integer linear program best suited for general instances and demonstrate that it is feasible to compute atom-atom maps at large scales using a manually curated database of biochemical reactions as an example. In this context we address the network completion problem
Author(s)
Flamm, Christoph
Universität Wien
Merkle, Daniel
University of Southern Denmark
Stadler, Peter F.
Fraunhofer-Institut für Zelltherapie und Immunologie IZI  
Thorsen, Uffe
University of Southern Denmark
Mainwork
Graph transformation. 9th international conference, ICGT 2016  
Conference
International Conference on Graph Transformation (ICGT) 2016  
Conference "Software Technologies - Application and Foundations" (STAF) 2016  
Open Access
DOI
10.1007/978-3-319-40530-8_13
Additional link
Full text
Language
English
Fraunhofer-Institut für Zelltherapie und Immunologie IZI  
Keyword(s)
  • chemistry

  • atom-atom mapping

  • maximum common edge subgraph

  • integer linear programming

  • network completion

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