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Incremental training of support vector machines | IEEE Journals & Magazine | IEEE Xplore

Incremental training of support vector machines


Abstract:

We propose a new algorithm for the incremental training of support vector machines (SVMs) that is suitable for problems of sequentially arriving data and fast constraint ...Show More

Abstract:

We propose a new algorithm for the incremental training of support vector machines (SVMs) that is suitable for problems of sequentially arriving data and fast constraint parameter variation. Our method involves using a "warm-start" algorithm for the training of SVMs, which allows us to take advantage of the natural incremental properties of the standard active set approach to linearly constrained optimization problems. Incremental training involves quickly retraining a support vector machine after adding a small number of additional training vectors to the training set of an existing (trained) support vector machine. Similarly, the problem of fast constraint parameter variation involves quickly retraining an existing support vector machine using the same training set but different constraint parameters. In both cases, we demonstrate the computational superiority of incremental training over the usual batch retraining method.
Published in: IEEE Transactions on Neural Networks ( Volume: 16, Issue: 1, January 2005)
Page(s): 114 - 131
Date of Publication: 31 January 2005

ISSN Information:

PubMed ID: 15732393

I. Introduction

Binary pattern recognition involves constructing a decision rule to classify vectors into one of two classes based on a training set of vectors whose classification is known a priori. Support vector machines (SVMs) [1] do this by implicitly mapping the training data into a higher dimensional feature space. A hyperplane (decision surface) is then constructed in this feature space that bisects the two categories and maximizes the margin of separation between itself and those points lying nearest to it (called the support vectors). This decision surface can then be used as a basis for classifying vectors of unknown classification.

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References

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