DocumentCode :
671528
Title :
A support vector machine classifier from a bit-constrained, sparse and localized hypothesis space
Author :
Anguita, Davide ; Ghio, Alessandro ; Oneto, Luca ; Ridella, Sandro
Author_Institution :
DITEN Dept., Univ. of Genoa, Genoa, Italy
fYear :
2013
fDate :
4-9 Aug. 2013
Firstpage :
1
Lastpage :
10
Abstract :
Choosing an appropriate hypothesis space in classification applications, according to the Structural Risk Minimization (SRM) principle, is of paramount importance to train effective models: in fact, properly selecting the the space complexity allows to optimize the learned functions performance. This selection is not straightforward, especially (though not solely) when few samples are available for deriving an effective model (e.g. in bioinformatics applications). In this paper, by exploiting a bit-based definition for Support Vector Machine (SVM) classifiers, selected from an hypothesis space described according to sparsity and locality principles, we show how the complexity of the corresponding space of functions can be effectively tuned through the number of bits used for the function representation. Real world datasets are exploited to show how the number of bits and the degree of sparsity/locality imposed to define the hypothesis space affect the complexity of the space of classifiers and, consequently, the performance of the model, picked up from this set.
Keywords :
computational complexity; minimisation; pattern classification; support vector machines; SRM principle; SVM classifiers; bit-based definition; bit-constrained hypothesis space; function representation; learned functions performance; locality principle; localized hypothesis space; real world datasets; space complexity; sparse hypothesis space; sparsity principle; structural risk minimization principle; support vector machine classifier; Approximation algorithms; Complexity theory; Extraterrestrial measurements; Fasteners; Optimization; Support vector machines; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks (IJCNN), The 2013 International Joint Conference on
Conference_Location :
Dallas, TX
ISSN :
2161-4393
Print_ISBN :
978-1-4673-6128-6
Type :
conf
DOI :
10.1109/IJCNN.2013.6706868
Filename :
6706868
Link To Document :
بازگشت