Tree-Structured Support Vector Machines for Multi-class Pattern Recognition

Support vector machines (SVM) are learning algorithms derived from statistical learning theory. The SVM approach was originally developed for binary classification problems. In this paper SVM architectures for multi-class classification problems are discussed, in particular we consider binary trees of SVMs to solve the multi-class pattern recognition problem. Numerical results for different classifiers on a benchmark data set handwritten digits are presented.