Title :
Feature Combiners With Gate-Generated Weights for Classification
Author :
Omari, Abdoulghafar ; Figueiras-Vidal, Anibal R.
Author_Institution :
Dept. of Signal Theor. & Commun., Univ. Carlos III de Madrid, Leganes, Spain
Abstract :
Using functional weights in a conventional linear combination architecture is a way of obtaining expressive power and represents an alternative to classical trainable and implicit nonlinear transformations. In this brief, we explore this way of constructing binary classifiers, taking advantage of the possibility of generating functional weights by means of a gate with fixed radial basis functions. This particular form of the gate permits training the machine directly with maximal margin algorithms. We call the resulting scheme “feature combiners with gate generated weights for classification.” Experimental results show that these architectures outperform support vector machines (SVMs) and Real AdaBoost ensembles in most considered benchmark examples. An increase in the computational design effort due to cross-validation demands is the price to be paid to obtain this advantage. Nevertheless, the operational effort is usually lower than that needed by SVMs.
Keywords :
learning (artificial intelligence); pattern classification; radial basis function networks; support vector machines; SVM; binary classifiers; classification; conventional linear combination architecture; feature combiners; functional weights; gate-generated weights; implicit nonlinear transformations; maximal margin algorithms; radial basis functions; real AdaBoost ensembles; support vector machines; Algorithm design and analysis; Computer architecture; Learning systems; Logic gates; Member and Geographic Activities Board committees; Support vector machines; Training; Functional weights; gate fusion; maximal margin; neural networks;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2012.2223232