Evolutionary Simplicial Learning as a Generative and Compact Sparse Framework for Classification

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Date

2020

Authors

Turkan, Mehmet

Journal Title

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Volume Title

Publisher

Elsevier

Open Access Color

BRONZE

Green Open Access

Yes

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Publicly Funded

No
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Average
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Average
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Abstract

Dictionary learning for sparse representations has been successful in many reconstruction tasks. Simplicial learning is an adaptation of dictionary learning, where subspaces become clipped and acquire arbitrary offsets, taking the form of simplices. Such adaptation is achieved through additional constraints on sparse codes. Furthermore, an evolutionary approach can be chosen to determine the number and the dimensionality of simplices composing the simplicial, in which most generative and compact simplicials are favored. This paper proposes an evolutionary simplicial learning method as a generative and compact sparse framework for classification. The proposed approach is first applied on a one-class classification task and it appears as the most reliable method within the considered benchmark. Most surprising results are observed when evolutionary simplicial learning is considered within a multi-class classification task. Since sparse representations are generative in nature, they bear a fundamental problem of not being capable of distinguishing two classes lying on the same subspace. This claim is validated through synthetic experiments and superiority of simplicial learning even as a generative-only approach is demonstrated. Simplicial learning loses its superiority over discriminative methods in high-dimensional cases but can further be modified with discriminative elements to achieve state-of-the-art performance in classification tasks. (C) 2020 Elsevier B.V. All rights reserved.

Description

Keywords

Sparse representations, Machine learning, Simplex, Simplicial, Dictionary learning, Classification, Dictionary, Recognition, FOS: Computer and information sciences, Computer Science - Machine Learning, Statistics - Machine Learning, Machine Learning (stat.ML), Machine Learning (cs.LG)

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

Citation

WoS Q

Q2

Scopus Q

Q1
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OpenCitations Citation Count
2

Source

Sıgnal Processıng

Volume

174

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CrossRef : 2

Scopus : 2

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Mendeley Readers : 4

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2

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2

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2

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13

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