Title of article
SVM-like decision theoretical classification of high-dimensional vectors
Author/Authors
Bradshaw، نويسنده , , David J. and Pensky، نويسنده , , Marianna، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
14
From page
705
To page
718
Abstract
In this paper, we consider the classification of high-dimensional vectors based on a small number of training samples from each class. The proposed method follows the Bayesian paradigm, and it is based on a small vector which can be viewed as the regression of the new observation on the space spanned by the training samples. The classification method provides posterior probabilities that the new vector belongs to each of the classes, hence it adapts naturally to any number of classes. Furthermore, we show a direct similarity between the proposed method and the multicategory linear support vector machine introduced in Lee et al. [2004. Multicategory support vector machines: theory and applications to the classification of microarray data and satellite radiance data. Journal of the American Statistical Association 99 (465), 67–81]. We compare the performance of the technique proposed in this paper with the SVM classifier using real-life military and microarray datasets. The study shows that the misclassification errors of both methods are very similar, and that the posterior probabilities assigned to each class are fairly accurate.
Keywords
Decision theoretical approach , Posterior probabilities , Support vector machine
Journal title
Journal of Statistical Planning and Inference
Serial Year
2010
Journal title
Journal of Statistical Planning and Inference
Record number
2220507
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