References
Fast Training of Support Vector Machines Using Sequential Minimal Optimization
John C. Platt (1998)
Advances in Kernel Methods .
DOI: https://doi.org/10.7551/mitpress/1130.003.0016
Abstract. Platt's SMO algorithm broke the
SVM quadratic program into minimal two-variable subproblems solvable in closed form, dramatically accelerating training and enabling SVMs to scale to large datasets.
Tags: svm optimisation
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