Incremental and Decremental Support Vector Machine Learning

Neural Information Processing Systems 

An on-line recursive algorithm for training support vector machines, one vector at a time, is presented. Adiabatic increments retain the Kuhn(cid:173) Tucker conditions on all previously seen training data, in a number of steps each computed analytically.