Result for 04A5A6892442592F1F5DE537E250B033C9C04296

Query result

Key Value
FileName./usr/lib/R/site-library/CVST/INDEX
FileSize774
MD50A37A611ADBFDB143A1D479AA04E447E
SHA-104A5A6892442592F1F5DE537E250B033C9C04296
SHA-256954E8578B78D455186D6B0D3BF432E7FC6016CF274B0BB079407D9E529B9F252
SSDEEP12:ixVAwHB6mXXZHpKL42C7dEWnSdNL0JmHB6AppuukMWTCTiUz04JNv:kVrBnXppKLB7RBbOTAn
TLSHT1B2017D01B6F3C7B4D9E2C0C910428E117625860131DC8ADA71DC42B11757F6597765CC
hashlookup:parent-total8
hashlookup:trust90

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Parents (Total: 8)

The searched file hash is included in 8 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
FileSize53668
MD52649744344DFF3E0C30187B9E35325E4
PackageDescriptionGNU R fast cross-validation via sequential testing This package implements the fast cross-validation via sequential testing (CVST) procedure. CVST is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating underperforming candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamer-cran-cvst
PackageSectiongnu-r
PackageVersion0.2-1-1
SHA-1B6C0A948D80761FA728A2500B10E23B87CCF9679
SHA-2564B8CE3F35825B79C4E6FA49A545F97B8B63856F3C1BFE419389242C3DAAE1391
Key Value
FileSize85952
MD5A5E9E5CB6734D16B838DFBFF456BD0CE
PackageDescriptionGNU R fast cross-validation via sequential testing This package implements the fast cross-validation via sequential testing (CVST) procedure. CVST is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating underperforming candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamer-cran-cvst
PackageSectiongnu-r
PackageVersion0.2-2-2
SHA-196EFBD09FF862B3EC1406941A3593CAF913FE855
SHA-25613947E3FBAA0F01C8934720452910E003479DE98DCB674230D776770954988D1
Key Value
MD53B4FF4E1584D374A1D5ABA8E6B3CE121
PackageArchx86_64
PackageDescriptionThe fast cross-validation via sequential testing (CVST) procedure is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating under-performing candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageNameR-CVST
PackageRelease2.24
PackageVersion0.2.2
SHA-1F61C4BBC76BFDE951A00350BB66FE1685887C361
SHA-256083709A5528E2AB0A0039A4C1D4F4E54ABF4C5728ECBD6835B6ED54506C5A702
Key Value
MD5D00ED811A2D5223B90CF4FB97D1BB0CE
PackageArchx86_64
PackageDescriptionThe fast cross-validation via sequential testing (CVST) procedure is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating under-performing candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageNameR-CVST
PackageReleaselp153.2.3
PackageVersion0.2.2
SHA-1EE84C0AEF87804DA73D07E76C76301F4A3A43C15
SHA-256746FFA0B518F011AB116100EF7303D50FB4DFBEE8308C2EBF06A1D6CC453CAB6
Key Value
MD5AE9C79468CD273777FCB82DDAEEE51F3
PackageArchx86_64
PackageDescriptionThe fast cross-validation via sequential testing (CVST) procedure is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating under-performing candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageNameR-CVST
PackageReleaselp152.2.6
PackageVersion0.2.2
SHA-1267F3C83EE5D8ADB2F413D8CF06C74B31EE72453
SHA-2560EFFB06E84B4E5DBAC6D1E9174788933F67C38E779950BB0C30A43A811A9655D
Key Value
MD50D408AA1A42074C62B0E0248EB361B38
PackageArchx86_64
PackageDescriptionThe fast cross-validation via sequential testing (CVST) procedure is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating under-performing candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageNameR-CVST
PackageReleaselp153.2.1
PackageVersion0.2.2
SHA-11FCACE5685159988E209421EDBAAE82BB4023C25
SHA-256A587FDA35E1907F69BF80556E80F2648440D013B5D4C122A05A016EFD519CAED
Key Value
FileSize85736
MD5D4136FD7D7C78CBBBB5F1B26DE8F3E61
PackageDescriptionGNU R fast cross-validation via sequential testing This package implements the fast cross-validation via sequential testing (CVST) procedure. CVST is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating underperforming candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageMaintainerDebian R Packages Maintainers <r-pkg-team@alioth-lists.debian.net>
PackageNamer-cran-cvst
PackageSectiongnu-r
PackageVersion0.2-2-2
SHA-1411DAA051D0751653BF920FA8E1E3FA7C38FA918
SHA-256E8C9921F645BA124EE65B55FF04F94395D0F22DFE8E0B47B75DA56A675C4EE9A
Key Value
MD5505A926DEEF0EE159CB61F00AB9BFE5B
PackageArchx86_64
PackageDescriptionThe fast cross-validation via sequential testing (CVST) procedure is an improved cross-validation procedure which uses non-parametric testing coupled with sequential analysis to determine the best parameter set on linearly increasing subsets of the data. By eliminating under-performing candidates quickly and keeping promising candidates as long as possible, the method speeds up the computation while preserving the capability of a full cross-validation. Additionally to the CVST the package contains an implementation of the ordinary k-fold cross-validation with a flexible and powerful set of helper objects and methods to handle the overall model selection process. The implementations of the Cochran's Q test with permutations and the sequential testing framework of Wald are generic and can therefore also be used in other contexts.
PackageMaintainerhttps://www.suse.com/
PackageNameR-CVST
PackageReleaselp154.2.1
PackageVersion0.2.2
SHA-14FC0E11AFD02F976096882950C38A21E0F76B795
SHA-2563194154DF768C67C120E5EEA066E6D53FA581015429CA2E70A1F1918FE1176B7