Eduardo Paluzo-HidalgoRocı́o González-Dı́azMiguel Á. Gutiérrez-Naranjo
Simplicial map neural networks (SMNNs) are topology-based neural networks with interesting properties such as universal approximation ability and robustness to adversarial examples under appropriate conditions. However, SMNNs present some bottlenecks for their possible application in high-dimensional datasets. First, SMNNs have precomputed fixed weight and no SMNN training process has been defined so far, so they lack generalization ability. Second, SMNNs require the construction of a convex polytope surrounding the input dataset. In this paper, we overcome these issues by proposing an SMNN training procedure based on a support subset of the given dataset and replacing the construction of the convex polytope by a method based on projections to a hypersphere. In addition, the explainability capacity of SMNNs and effective implementation are also newly introduced in this paper.
Stefania EbliMichaël DefferrardGard Spreemann
Ebli, StefaniaDefferrard, MichaëlSpreemann, Gard
Nicolás RodríguezP. JuliánMartín Villemur
Hanrui WuAndy YipJinyi LongJia ZhangMichael K. Ng
Maosheng YangElvin IsufiGeert Leus