DocumentCode :
4285
Title :
Fully Empirical and Data-Dependent Stability-Based Bounds
Author :
Oneto, Luca ; Ghio, Alessandro ; Ridella, Sandro ; Anguita, Davide
Author_Institution :
Dept. of Electr. & Telecommun. Eng. & Naval Archit., Univ. of Genoa, Genoa, Italy
Volume :
45
Issue :
9
fYear :
2015
fDate :
Sept. 2015
Firstpage :
1913
Lastpage :
1926
Abstract :
The purpose of this paper is to obtain a fully empirical stability-based bound on the generalization ability of a learning procedure, thus, circumventing some limitations of the structural risk minimization framework. We show that assuming a desirable property of a learning algorithm is sufficient to make data-dependency explicit for stability, which, instead, is usually bounded only in an algorithmic-dependent way. In addition, we prove that a well-known and widespread classifier, like the support vector machine (SVM), satisfies this condition. The obtained bound is then exploited for model selection purposes in SVM classification and tested on a series of real-world benchmarking datasets demonstrating, in practice, the effectiveness of our approach.
Keywords :
learning (artificial intelligence); pattern classification; stability; support vector machines; SVM classification; data-dependency; data-dependent stability-based bounds; generalization ability; learning algorithm; learning procedure; model selection; structural risk minimization framework; support vector machine; Computational modeling; Data models; Stability criteria; Support vector machines; Tin; Training; Algorithmic stability; data-dependent bounds; fully empirical bounds; in-sample; model selection; out-of-sample; support vector machine (SVM);
fLanguage :
English
Journal_Title :
Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2267
Type :
jour
DOI :
10.1109/TCYB.2014.2361857
Filename :
6930772
Link To Document :
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