Result for 97AB836346DC7A856435D6680C829D2A4A3FFB78

Query result

Key Value
FileName./usr/lib64/R/library/CVST/help/CVST.rdb
FileSize29151
MD5843FDD41E5B4D2B4CEE8ED298E8CB5D7
SHA-197AB836346DC7A856435D6680C829D2A4A3FFB78
SHA-256CDF31D2EF43EB5B10DD32FF6E925400AA9439C85D0C2A5A6E459827EE48E5CC0
SSDEEP768:2eyNjs9+KFi+ABGF4cbGIZUKS2nO4navbgAVmif0MH:2VjUFipGF4IhUKIv04JfhH
TLSHT139D2E0BD02B2198304A3A3B9E63C0662748C12F5ECA9F76366978952DCD120C9BC3797
hashlookup:parent-total4
hashlookup:trust70

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Parents (Total: 4)

The searched file hash is included in 4 parent files which include package known and seen by metalookup. A sample is included below:

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
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
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