A Multi-kernel Framework for Inductive Semi-supervised Learning

Xilan Tian, Gilles Gasso, Stéphane Canu
2011 The European Symposium on Artificial Neural Networks  
We investigate the benefit of combining both cluster assumption and manifold assumption underlying most of the semi-supervised algorithms using the flexibility and the efficiency of multi-kernel learning. The multiple kernel version of Transductive SVM (a cluster assumption based approach) is proposed and it is solved based on DC (Difference of Convex functions) programming. Promising results on benchmark data sets suggesting the effectiveness of proposed work.
dblp:conf/esann/TianGC11 fatcat:m4eci2nwtfbrfaalo64opg4xrm