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JMLR
2002

The Set Covering Machine

13 years 11 months ago
The Set Covering Machine
We extend the classical algorithms of Valiant and Haussler for learning compact conjunctions and disjunctions of Boolean attributes to allow features that are constructed from the data and to allow a trade-off between accuracy and complexity. The result is a generalpurpose learning machine, suitable for practical learning tasks, that we call the set covering machine. We present a version of the set covering machine that uses data-dependent balls for its set of features and compare its performance with the support vector machine. By extending a technique pioneered by Littlestone and Warmuth, we bound its generalization error as a function of the amount of data compression it achieves during training. In experiments with real-world learning tasks, the bound is shown to be extremely tight and to provide an effective guide for model selection.
Mario Marchand, John Shawe-Taylor
Added 22 Dec 2010
Updated 22 Dec 2010
Type Journal
Year 2002
Where JMLR
Authors Mario Marchand, John Shawe-Taylor
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