PROBABILITY ESTIMATION FOR MULTICLASS PROBLEMS COMBINING SVMS AND NEURAL NETWORKS

Bravo C.; L'Huillier G.; Lobato JL; Weber R.

Abstract

This paper addresses the problem of probability estimation in Multiclass classification tasks combining two well-known data mining techniques: Support Vector Machines and Neural Networks. We present an algorithm which uses both techniques in a two-step procedure. The first step employs Support Vector Machines within a One-vs-All reduction from multiclass to binary approach to obtain the distances between each observation and the Support Vectors representing the classes. The second step uses these distances as inputs for a Neural Network, built with an entropy cost function and softmax transfer function for the output layer where class membership is used for training. Consequently, this network estimates probabilities of class membership for new observations. A benchmark using different databases demonstrates that the proposed algorithm is highly competitive with the most recent techniques for multiclass probability estimation. ©ICS AS CR 2010.

Más información

Título según WOS: PROBABILITY ESTIMATION FOR MULTICLASS PROBLEMS COMBINING SVMS AND NEURAL NETWORKS
Título según SCOPUS: Probability estimation for multiclass problems combining svms and neural networks
Título de la Revista: Neural Network World
Volumen: 20
Número: 4
Editorial: Springer-Verlag
Fecha de publicación: 2010
Página de inicio: 475
Página final: 489
Idioma: English
Notas: ISI, SCOPUS