Bagged kernel SOM

Archive ouverte

Mariette, Jérôme, J. | Olteanu, Madalina | Boelaert, Julien | Vialaneix, Nathalie

Edité par CCSD ; Springer -

International audience. In a number of real-life applications, the user is interested in analyzing non vectorial data, for which kernels are useful tools that embed data into an (implicit) Euclidean space. However, when using such approaches with prototype-based methods, the computational time is related to the number of observations (because the prototypes are expressed as convex combinations of the original data). Also, a side effect of the method is that the interpretability of the prototypes is lost. In the present paper, we propose to overcome these two issues by using a bagging approach. The results are illustrated on simulated data sets and compared to alternatives found in the literature.

Suggestions

Du même auteur

Efficient interpretable variants of online SOM for large dissimilarity data

Archive ouverte | Mariette, Jérôme, J. | CCSD

International audience. Self-organizing maps (SOM) are a useful tool for exploring data. In its original version, the SOM algorithm was designed for numerical vectors. Since then, several extensions have been propos...

Kernel and dissimilarity methods for exploratory analysis in a social context

Archive ouverte | Mariette, Jérôme, J. | CCSD

International audience. While most of statistical methods for prediction or data mining have been built for data made of independent observations of a common set of p numerical variables, many real-world application...

Unsupervised multiple kernel learning for heterogeneous data integration

Archive ouverte | Mariette, Jérôme, J. | CCSD

International audience. Motivation: Recent high-throughput sequencing advances have expanded the breadth of available omics datasets and the integrated analysis of multiple datasets obtained on the same samples has ...

Chargement des enrichissements...