Generalized multi-scale stacked sequential learning for multi-class classification

Publication date

2018-01-18T13:43:24Z

2018-01-18T13:43:24Z

2015-04-30

2018-01-18T13:43:24Z

Abstract

In many classification problems, neighbor data labels have inherent sequential relationships. Sequential learning algorithms take benefit of these relationships in order to improve generalization. In this paper, we revise the multi-scale sequential learning approach (MSSL) for applying it in the multi-class case (MMSSL). We introduce the error-correcting output codesframework in the MSSL classifiers and propose a formulation for calculating confidence maps from the margins of the base classifiers. In addition, we propose a MMSSL compression approach which reduces the number of features in the extended data set without a loss in performance. The proposed methods are tested on several databases, showing significant performance improvement compared to classical approaches.

Document Type

Article


Accepted version

Language

English

Subjects and keywords

Algorismes; Aprenentatge; Algorithms; Learning

Publisher

Springer Verlag

Related items

Versió postprint del document publicat a: https://doi.org/10.1007/s10044-013-0333-y

Pattern Analysis and Applications, 2015, vol. 18, num. 2, p. 247-261

https://doi.org/10.1007/s10044-013-0333-y

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Rights

(c) Springer Verlag, 2015

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