Structuring dependencies in homogeneous groups can be possibly useful to gain insight into the behavior of complex systems. This is the case, for example, of biological and regulatory processes. In this contribution we approach the problem by applying Kernel Methods in order to cluster homogeneous pairs of gene-to-gene dependencies deriving from activation or inhibition relationships. Specifically, we apply Support Vector Clustering (SVC), which is a novelty detection algorithm, to provide groups of similarly interacting pairs of genes in respect to some measure, i.e. kernel function, of their regulatory activity. In our application we take advantage of the adjacency graph obtained from the approximation of a combinatorial optimization problem i.e. the Maximum Gene Regulatory Network (MGRN). The effectiveness of the proposed approach is given by numerical evaluation by comparing the modularity results of the obtained clusters with other standard techniques using a biological data set of microarray experiments.

Zoppis, I., Mauri, G. (2008). Clustering dependencies with support vectors. In Trends in Intelligent Systems and Computer Engineering (pp. 155-165). Springer [10.1007/978-0-387-74935-8_11].

Clustering dependencies with support vectors

ZOPPIS, ITALO FRANCESCO
Primo
;
MAURI, GIANCARLO
Ultimo
2008

Abstract

Structuring dependencies in homogeneous groups can be possibly useful to gain insight into the behavior of complex systems. This is the case, for example, of biological and regulatory processes. In this contribution we approach the problem by applying Kernel Methods in order to cluster homogeneous pairs of gene-to-gene dependencies deriving from activation or inhibition relationships. Specifically, we apply Support Vector Clustering (SVC), which is a novelty detection algorithm, to provide groups of similarly interacting pairs of genes in respect to some measure, i.e. kernel function, of their regulatory activity. In our application we take advantage of the adjacency graph obtained from the approximation of a combinatorial optimization problem i.e. the Maximum Gene Regulatory Network (MGRN). The effectiveness of the proposed approach is given by numerical evaluation by comparing the modularity results of the obtained clusters with other standard techniques using a biological data set of microarray experiments.
Capitolo o saggio
clustering, support vectors, Kernel Methods, Gene Regulatory Network
English
Trends in Intelligent Systems and Computer Engineering
2008
978-0-387-74934-1
Springer
155
165
Zoppis, I., Mauri, G. (2008). Clustering dependencies with support vectors. In Trends in Intelligent Systems and Computer Engineering (pp. 155-165). Springer [10.1007/978-0-387-74935-8_11].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/12251
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