Typically, machine learning methods produce non-qualified estimates, i.e. the accuracy and reliability of the predictions are not provided. Transductive predictors are very recent classifiers able to provide, simultaneously with the prediction, a couple of values (confidence and credibility) to reflect the quality of the prediction. Usually, a drawback of the transductive techniques for huge datasets and large dimensionality is the high computational time. To overcome this issue, a more efficient classifier has been used in a multi-class image classification problem in the TJ-II stellarator database. It is based on the creation of a hash function to generate several "one versus the rest" classifiers for every class. By using Support Vector Machines as the underlying classifier, a comparison between the pure transductive approach and the new method has been performed. In both cases, the success rates are high and the computation time with the new method is up to 0.4 times the old one.

Computationally efficient SVM multi-class image recognition with confidence measures

Andrea Murari
2011

Abstract

Typically, machine learning methods produce non-qualified estimates, i.e. the accuracy and reliability of the predictions are not provided. Transductive predictors are very recent classifiers able to provide, simultaneously with the prediction, a couple of values (confidence and credibility) to reflect the quality of the prediction. Usually, a drawback of the transductive techniques for huge datasets and large dimensionality is the high computational time. To overcome this issue, a more efficient classifier has been used in a multi-class image classification problem in the TJ-II stellarator database. It is based on the creation of a hash function to generate several "one versus the rest" classifiers for every class. By using Support Vector Machines as the underlying classifier, a comparison between the pure transductive approach and the new method has been performed. In both cases, the success rates are high and the computation time with the new method is up to 0.4 times the old one.
2011
Istituto gas ionizzati - IGI - Sede Padova
Inglese
86
6-8
1213
1216
4
http://www.sciencedirect.com/science/article/pii/S0920379611002511
Sì, ma tipo non specificato
Classifier
Conformal prediction
Hashed transduction
Support Vector Machines
This work was partially funded by the Spanish Ministry of Science and Innovation under the Project No. ENE2008-02894/FTN. / La rivista è pubblicata anche online con ISSN 1873-7196 (Editore: Elsevier Science SA)
5
info:eu-repo/semantics/article
262
Makili, Lázaro; Vega, Jesús; Dormidocanto, Sebastián; Pastor, Ignacio; Murari, Andrea
01 Contributo su Rivista::01.01 Articolo in rivista
none
   EU Fusion for ITER Applications
   EUFORIA
   FP7
   211804
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/41592
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