Publication | Closed Access
Maximum-Gain Working Set Selection for SVMs
68
Citations
13
References
2006
Year
Unknown Venue
Support vector machines are trained by solving constrained quadratic optimization problems. This is usually done with an iterative decomposition algorithm operating on a small working set of variables in every iteration. The training time strongly depends on the selection of these variables. We propose the maximum-gain working set selection algorithm for large scale quadratic programming. It is based
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