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Article

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Title

Aspects in classification learning – review of recent developments in learning vector quantization

Authors

Year of publication

2014

Published in

Foundations of Computing and Decision Sciences

Journal year: 2014 | Journal volume: vol. 39 | Journal number: no. 2

Article type

scientific article

Publication language

english

Keywords
EN
  • learning vector quantization
  • non-standard metrics
  • classification
  • classification certainty
  • statistics
Abstract

EN Classification is one of the most frequent tasks in machine learning. However, the variety of classification tasks as well as classifier methods is huge. Thus the question is coming up: which classifier is suitable for a given problem or how can we utilize a certain classifier model for different tasks in classification learning. This paper focuses on learning vector quantization classifiers as one of the most intuitive prototype based classification models. Recent extensions and modifications of the basic learning vector quantization algorithm, which are proposed in the last years, are highlighted and also discussed in relation to particular classification task scenarios like imbalanced and/or incomplete data, prior data knowledge, classification guarantees or adaptive data metrics for optimal classification.

Pages (from - to)

79 - 105

DOI

10.2478/fcds-2014-0006

URL

https://sciendo.com/article/10.2478/fcds-2014-0006

License type

CC BY-NC-ND (attribution - noncommercial - no derivatives)

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Access level to full text

public

Ministry points / journal

15

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