Title :
Graph kernels based on relevant patterns and cycle information for chemoinformatics
Author :
Gauzere, Benoit ; Brun, Luc ; Villemin, Didier ; Brun, Marcel
Author_Institution :
GREYC, Univ. de Caen, Caen, France
Abstract :
Chemoinformatics aim to predict molecule´s properties through informational methods. Computer science´s research fields concerned with chemoinformatics are machine learning and graph theory. From this point of view, graph kernels provide a nice framework for combining these two fields. We present in this paper two contributions to this research field: a graph kernel based on an optimal linear combination of kernels applied to acyclic patterns and a new kernel on the cyclic system of two graphs. These two extensions are validated on two chemoinformatics datasets.
Keywords :
chemical engineering computing; graph theory; learning (artificial intelligence); acyclic patterns; chemoinformatics dataset; cycle information; graph cyclic system; graph kernels; graph theory; informational methods; kernel optimal linear combination; machine learning; molecule properties prediction; relevant patterns; Accuracy; Complexity theory; Equations; Kernel; Labeling; Training; Vectors;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
Print_ISBN :
978-1-4673-2216-4