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Please use this identifier to cite or link to this item: http://acervodigital.unesp.br/handle/11449/8295
Title: 
HOW FAR do WE GET USING MACHINE LEARNING BLACK-BOXES?
Author(s): 
Institution: 
  • Universidade Estadual de Campinas (UNICAMP)
  • Universidade Estadual Paulista (UNESP)
ISSN: 
0218-0014
Sponsorship: 
  • Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP)
  • University of Campinas PAPDIC Grant
  • Conselho Nacional de Desenvolvimento Científico e Tecnológico (CNPq)
  • Microsoft Research
Sponsorship Process Number: 
  • FAPESP: 09/16206-1
  • FAPESP: 10/05647-4
  • University of Campinas PAPDIC Grant: 519.292-340/10
Abstract: 
With several good research groups actively working in machine learning (ML) approaches, we have now the concept of self-containing machine learning solutions that oftentimes work out-of-the-box leading to the concept of ML black-boxes. Although it is important to have such black-boxes helping researchers to deal with several problems nowadays, it comes with an inherent problem increasingly more evident: we have observed that researchers and students are progressively relying on ML black-boxes and, usually, achieving results without knowing the machinery of the classifiers. In this regard, this paper discusses the use of machine learning black-boxes and poses the question of how far we can get using these out-of-the-box solutions instead of going deeper into the machinery of the classifiers. The paper focuses on three aspects of classifiers: (1) the way they compare examples in the feature space; (2) the impact of using features with variable dimensionality; and (3) the impact of using binary classifiers to solve a multi-class problem. We show how knowledge about the classifier's machinery can improve the results way beyond out-of-the-box machine learning solutions.
Issue Date: 
1-Mar-2012
Citation: 
International Journal of Pattern Recognition and Artificial Intelligence. Singapore: World Scientific Publ Co Pte Ltd, v. 26, n. 2, p. 23, 2012.
Time Duration: 
23
Publisher: 
World Scientific Publ Co Pte Ltd
Keywords: 
  • Machine learning black-boxes
  • binary to multi-class classifiers
  • support vector machines
  • optimum-path forest
  • visual words
  • K-nearest neighbors
Source: 
http://dx.doi.org/10.1142/S0218001412610010
URI: 
Access Rights: 
Acesso restrito
Type: 
outro
Source:
http://repositorio.unesp.br/handle/11449/8295
Appears in Collections:Artigos, TCCs, Teses e Dissertações da Unesp

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