Improved Generalization via Tolerant Training

dc.contributor.authorMangasarian, O. L.
dc.contributor.authorStreet, W. Nick
dc.date.accessioned2013-03-06T20:16:19Z
dc.date.available2013-03-06T20:16:19Z
dc.date.issued1996-12-20
dc.description.abstractTheoretical and computational justification is given for improved generalization when the training set is learned with less accuracy. The model used for this investigation is a simple linear one. It is shown that learning a training set with a tolerance T improves generalization, over zero-tolerance training, for any testing set satisfying a certain closeness condition to the training set. These results, obtained via a mathematical programming formulation, are placed in the context of some well-known machine linear systems (including nine of the twelve real-world data sets tested), as well as for nonlinear systems such as neural networks for which no theoretical results are available at present. In particular, the tolerant training metod improves generalization on noisy, sparse, and over-parametrized problems.en
dc.identifier.citation95-11en
dc.identifier.urihttp://digital.library.wisc.edu/1793/65030
dc.subjectgeneralizationen
dc.subjectfunction approximationen
dc.subjectinductive learningen
dc.titleImproved Generalization via Tolerant Trainingen
dc.typeTechnical Reporten

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