Reduced Dilation-Erosion Perceptron for Binary Classification

Dilation and erosion are two elementary operations from mathematical morphology, a non-linear lattice computing methodology widely used for image processing and analysis. The dilation-erosion perceptron (DEP) is a morphological neural network obtained by a convex combination of a dilation and an ero...

Full description

Bibliographic Details
Main Author: Marcos Eduardo Valle
Format: Article
Language:English
Published: MDPI AG 2020-04-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/8/4/512
id doaj-de01b50a6830453ba292221435022693
record_format Article
spelling doaj-de01b50a6830453ba2922214350226932020-11-25T03:37:31ZengMDPI AGMathematics2227-73902020-04-01851251210.3390/math8040512Reduced Dilation-Erosion Perceptron for Binary ClassificationMarcos Eduardo Valle0Department of Applied Mathematics, University of Campinas, 13083-859 Campinas, BrazilDilation and erosion are two elementary operations from mathematical morphology, a non-linear lattice computing methodology widely used for image processing and analysis. The dilation-erosion perceptron (DEP) is a morphological neural network obtained by a convex combination of a dilation and an erosion followed by the application of a hard-limiter function for binary classification tasks. A DEP classifier can be trained using a convex-concave procedure along with the minimization of the hinge loss function. As a lattice computing model, the DEP classifier assumes the feature and class spaces are partially ordered sets. In many practical situations, however, there is no natural ordering for the feature patterns. Using concepts from multi-valued mathematical morphology, this paper introduces the reduced dilation-erosion (r-DEP) classifier. An r-DEP classifier is obtained by endowing the feature space with an appropriate reduced ordering. Such reduced ordering can be determined using two approaches: one based on an ensemble of support vector classifiers (SVCs) with different kernels and the other based on a bagging of similar SVCs trained using different samples of the training set. Using several binary classification datasets from the OpenML repository, the ensemble and bagging r-DEP classifiers yielded mean higher balanced accuracy scores than the linear, polynomial, and radial basis function (RBF) SVCs as well as their ensemble and a bagging of RBF SVCs.https://www.mdpi.com/2227-7390/8/4/512lattice computingbinary classificationmulti-valued mathematical morphologysupport vector machineconvex-concave optimizationcomputational intelligence
collection DOAJ
language English
format Article
sources DOAJ
author Marcos Eduardo Valle
spellingShingle Marcos Eduardo Valle
Reduced Dilation-Erosion Perceptron for Binary Classification
Mathematics
lattice computing
binary classification
multi-valued mathematical morphology
support vector machine
convex-concave optimization
computational intelligence
author_facet Marcos Eduardo Valle
author_sort Marcos Eduardo Valle
title Reduced Dilation-Erosion Perceptron for Binary Classification
title_short Reduced Dilation-Erosion Perceptron for Binary Classification
title_full Reduced Dilation-Erosion Perceptron for Binary Classification
title_fullStr Reduced Dilation-Erosion Perceptron for Binary Classification
title_full_unstemmed Reduced Dilation-Erosion Perceptron for Binary Classification
title_sort reduced dilation-erosion perceptron for binary classification
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2020-04-01
description Dilation and erosion are two elementary operations from mathematical morphology, a non-linear lattice computing methodology widely used for image processing and analysis. The dilation-erosion perceptron (DEP) is a morphological neural network obtained by a convex combination of a dilation and an erosion followed by the application of a hard-limiter function for binary classification tasks. A DEP classifier can be trained using a convex-concave procedure along with the minimization of the hinge loss function. As a lattice computing model, the DEP classifier assumes the feature and class spaces are partially ordered sets. In many practical situations, however, there is no natural ordering for the feature patterns. Using concepts from multi-valued mathematical morphology, this paper introduces the reduced dilation-erosion (r-DEP) classifier. An r-DEP classifier is obtained by endowing the feature space with an appropriate reduced ordering. Such reduced ordering can be determined using two approaches: one based on an ensemble of support vector classifiers (SVCs) with different kernels and the other based on a bagging of similar SVCs trained using different samples of the training set. Using several binary classification datasets from the OpenML repository, the ensemble and bagging r-DEP classifiers yielded mean higher balanced accuracy scores than the linear, polynomial, and radial basis function (RBF) SVCs as well as their ensemble and a bagging of RBF SVCs.
topic lattice computing
binary classification
multi-valued mathematical morphology
support vector machine
convex-concave optimization
computational intelligence
url https://www.mdpi.com/2227-7390/8/4/512
work_keys_str_mv AT marcoseduardovalle reduceddilationerosionperceptronforbinaryclassification
_version_ 1724545465099223040