DocumentCode
948302
Title
Multiclass Posterior Probability Support Vector Machines
Author
Gönen, Mehmet ; Tanugur, Ayse Gönül ; Alpaydin, Ethem
Author_Institution
Bogazici Univ., Istanbul
Volume
19
Issue
1
fYear
2008
Firstpage
130
Lastpage
139
Abstract
Tao et. al. have recently proposed the posterior probability support vector machine (PPSVM) which uses soft labels derived from estimated posterior probabilities to be more robust to noise and outliers. Tao et. al.´s model uses a window-based density estimator to calculate the posterior probabilities and is a binary classifier. We propose a neighbor-based density estimator and also extend the model to the multiclass case. Our bias-variance analysis shows that the decrease in error by PPSVM is due to a decrease in bias. On 20 benchmark data sets, we observe that PPSVM obtains accuracy results that are higher or comparable to those of canonical SVM using significantly fewer support vectors.
Keywords
estimation theory; pattern classification; probability; support vector machines; SVM; bias-variance analysis; binary classifier; multiclass posterior probability estimation; neighbor-based density estimator; support vector machine; Density estimation; kernel machines; multiclass classification; support vector machines (SVMs); Algorithms; Artificial Intelligence; Humans; Models, Statistical; Neural Networks (Computer); Pattern Recognition, Automated; Probability;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2007.903157
Filename
4359207
Link To Document