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A New Approximate Maximal Margin Classification Algorithm

Conference Paper Artificial Intelligence ยท Machine Learning

Abstract

A new incremental learning algorithm is described which approximates the maximal margin hyperplane w. r. t. norm p ~ 2 for a set of linearly separable data. Our algorithm, called ALMAp (Approximate Large Mar- gin algorithm w. r. t. norm p), takes 0 ((P~21; ;2) corrections to sepa(cid: 173) rate the data with p-norm margin larger than (1 - 0: ), ,(, where, ,( is the p-norm margin of the data and X is a bound on the p-norm of the in(cid: 173) stances. ALMAp avoids quadratic (or higher-order) programming meth(cid: 173) ods. It is very easy to implement and is as fast as on-line algorithms, such as Rosenblatt's perceptron. We report on some experiments comparing ALMAp to two incremental algorithms: Perceptron and Li and Long's ROMMA. Our algorithm seems to perform quite better than both. The accuracy levels achieved by ALMAp are slightly inferior to those obtained by Support vector Machines (SVMs). On the other hand, ALMAp is quite faster and easier to implement than standard SVMs training algorithms.

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Context

Venue
Annual Conference on Neural Information Processing Systems
Archive span
1987-2025
Indexed papers
30776
Paper id
320362997604755713