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Efficient cross-validation for kernelized least-squares regression with sparse basis expansions

dc.contributor.authorPahikkala, Tapio
dc.contributor.authorSuominen, Hanna
dc.contributor.authorBoberg, Jorma
dc.date.accessioned2015-12-10T23:26:50Z
dc.date.issued2012
dc.date.updated2016-02-24T08:48:31Z
dc.description.abstractWe propose an efficient algorithm for calculating hold-out and cross-validation (CV) type of estimates for sparse regularized least-squares predictors. Holding out H data points with our method requires O(min(H2 n,Hn2)) time provided that a predictor with n basis vectors is already trained. In addition to holding out training examples, also some of the basis vectors used to train the sparse regularized least-squares predictor with the whole training set can be removed from the basis vector set used in the hold-out computation. In our experiments, we demonstrate the speed improvements provided by our algorithm in practice, and we empirically show the benefits of removing some of the basis vectors during the CV rounds.
dc.identifier.issn1532-4435
dc.identifier.urihttp://hdl.handle.net/1885/67949
dc.publisherMIT Press
dc.rightsAuthor/s retain copyrighten_AU
dc.sourceJournal of Machine Learning Research
dc.subjectKeywords: Cross validation; Hold-out; Kernel methods; Least Square; Least squares support vector machines; Sparse basis; Algorithms; Vectors; Least squares approximations Cross-validation; Hold-out; Kernel methods; Least-squares support vector machine; Regularized least-squares; Sparse basis expansions
dc.titleEfficient cross-validation for kernelized least-squares regression with sparse basis expansions
dc.typeJournal article
dcterms.accessRightsOpen Accessen_AU
local.bibliographicCitation.issue3
local.bibliographicCitation.lastpage407
local.bibliographicCitation.startpage381
local.contributor.affiliationPahikkala, Tapio, University of Turku
local.contributor.affiliationSuominen, Hanna, College of Engineering and Computer Science, ANU
local.contributor.affiliationBoberg, Jorma, Univesity of Turku
local.contributor.authoruidSuominen, Hanna, u4872279
local.description.notesImported from ARIES
local.identifier.absfor080109 - Pattern Recognition and Data Mining
local.identifier.absfor080201 - Analysis of Algorithms and Complexity
local.identifier.absseo890301 - Electronic Information Storage and Retrieval Services
local.identifier.absseo890205 - Information Processing Services (incl. Data Entry and Capture)
local.identifier.ariespublicationf5625xPUB1571
local.identifier.citationvolume87
local.identifier.doi10.1007/s10994-012-5287-6
local.identifier.scopusID2-s2.0-84862027224
local.identifier.thomsonID000303353000004
local.type.statusPublished Version

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