Self-organizing maps as feature detectors for supervised neural network pattern recognition

College

College of Computer Studies

Department/Unit

Computer Technology

Document Type

Conference Proceeding

Source Title

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Volume

9950 LNCS

First Page

618

Last Page

625

Publication Date

1-1-2016

Abstract

Convolutional neural network (CNN)-based works show that learned features, rather than handpicked features, produce more desirable performance in pattern recognition. This learning approach is based on higher organisms visual system which are developed based on the input environment. However, the feature detectors of CNN are trained using an error-correcting teacher as opposed to the natural competition to build node connections. As such, a neural network model using self-organizing map (SOM) as feature detector is proposed in this work. As proof of concept, the handwritten digits dataset is used to test the performance of the proposed architecture. The size of the feature detector as well as the different arrangement of receptive fields are considered to benchmark the performance of the proposed network. The performance for the proposed architecture achieved comparable performance to vanilla MLP, being 96.93% using 4×4 SOM and six receptive field regions. © Springer International Publishing AG 2016.

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Digitial Object Identifier (DOI)

10.1007/978-3-319-46681-1_73

Disciplines

Computer Sciences

Keywords

Self-organizing maps; Neural networks (Computer science)

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