PUBLICATION DATE

2016-10-03

AUTHORS

Haiying Zhang, Yonghe Chu, Deqin Yan, Deshan Liu

TITLE

Information discriminative extreme learning machine

ISSUE

N/A

VOLUME

N/A

ISSN (print)

1432-7643

ISSN (electronic)

1433-7479

ABSTRACT

Extreme learning machine (ELM) has become one of the new research hotspots in the field of pattern recognition and machine learning. However, the existing extreme learning machine algorithms cannot better use identification information of data. Aiming at solving this problem, we propose a regularized extreme learning machine (algorithm) based on discriminative information (called IELM). In order to evaluate and verify the effectiveness of the proposed method, experiments use widely used image data sets. The comparative experimental results show that the proposed algorithm in the paper can significantly improve the classification performance and generalization ability of ELM.

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31 TRIPLES      26 PREDICATES      32 URIs      17 LITERALS

Subject Predicate Object
1 articles:d37e9ff5191c18014046d8107d035a4d sg:abstract Abstract Extreme learning machine (ELM) has become one of the new research hotspots in the field of pattern recognition and machine learning. However, the existing extreme learning machine algorithms cannot better use identification information of data. Aiming at solving this problem, we propose a regularized extreme learning machine (algorithm) based on discriminative information (called IELM). In order to evaluate and verify the effectiveness of the proposed method, experiments use widely used image data sets. The comparative experimental results show that the proposed algorithm in the paper can significantly improve the classification performance and generalization ability of ELM.
2 sg:articleType OriginalPaper
3 sg:ddsId s00500-016-2372-y
4 sg:ddsIdJournalBrand 500
5 sg:doi 10.1007/s00500-016-2372-y
6 sg:doiLink http://dx.doi.org/10.1007/s00500-016-2372-y
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12 sg:hasFieldOfResearchCode anzsrc-for:08
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14 sg:hasJournal journals:01ee81543e6b4a5d0f0eb290972ee886
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16 sg:hasJournalBrand journal-brands:51f96a8b98e202597328190153b52549
17 sg:indexingDatabase Scopus
18 sg:issnElectronic 1433-7479
19 sg:issnPrint 1432-7643
20 sg:language English
21 sg:license http://scigraph.springernature.com/explorer/license/
22 sg:pageEnd 13
23 sg:pageStart 1
24 sg:publicationDate 2016-10-03
25 sg:publicationYear 2016
26 sg:publicationYearMonth 2016-10
27 sg:scigraphId d37e9ff5191c18014046d8107d035a4d
28 sg:title Information discriminative extreme learning machine
29 sg:webpage https://link.springer.com/10.1007/s00500-016-2372-y
30 rdf:type sg:Article
31 rdfs:label Article: Information discriminative extreme learning machine
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