MoSS: A Program for Molecular Substructure Mining

Borgelt C, Meinl T, Berthold MR (2005)


Publication Language: English

Publication Type: Conference contribution, Original article

Publication year: 2005

Publisher: IEEE

Edited Volumes: Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining

Pages Range: 6-15

Conference Proceedings Title: Proceedings of Open Source Data Mining Workshop on Frequent Pattern Mining Implementations (OSDM 2005)

Event location: Chicago, IL US

ISBN: 1-59593-210-0

URI: http://www2.informatik.uni-erlangen.de/publication/download/moss_osdm.pdf

DOI: 10.1145/1133905.1133908

Abstract

Molecular substructure mining is currently an intensively studied research area. In this paper we present an implementation of an algorithm for finding frequent substructures in a set of molecules, which may also be used to find substructures that discriminate well between a focus and a complement group. In addition to the basic algorithm, we discuss advanced pruning techniques, demonstrating their effectiveness with experiments on two publicly available molecular data sets, and briefly mention some other extensions. Copyright 2005 ACM.

How to cite

APA:

Borgelt, C., Meinl, T., & Berthold, M.R. (2005). MoSS: A Program for Molecular Substructure Mining. In Goethals, Bart ; Nijssen, Siegfried ; Zaki, Mohammed J. (Eds.), Proceedings of Open Source Data Mining Workshop on Frequent Pattern Mining Implementations (OSDM 2005) (pp. 6-15). Chicago, IL, US: IEEE.

MLA:

Borgelt, Christian, Thorsten Meinl, and Michael R. Berthold. "MoSS: A Program for Molecular Substructure Mining." Proceedings of the Open Source Data Mining Workshop on Frequent Pattern Mining Implementations (OSDM 2005), Chicago, IL Ed. Goethals, Bart ; Nijssen, Siegfried ; Zaki, Mohammed J., IEEE, 2005. 6-15.

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