Result for 31C256C4F8476931C8E1506669E7D613087367CA

Query result

Key Value
FileName./usr/lib64/R/library/LassoBacktracking/Meta/links.rds
FileSize157
MD5057C02D74FA0CF1AA27A1F8F61FD5B3C
SHA-131C256C4F8476931C8E1506669E7D613087367CA
SHA-25661CD1EF7D441F9D1DAF922CCCA901CB111EFB6E4FAB24B25113859D5805D06A5
SSDEEP3:FttVFD/EWOjf9hdrtsmDNBkEd5tl510HgNQAQ0nlE39z2VpsV5gubp7/:XtVFDjOJhYmpBkEd5tl5qtAQ0qN0sV5b
TLSHT1A0C08C890308E899E80CE9B2EF444281C5891928E6E44842A829000EAB568206CBA9FC
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
MD5E20B4C5C1810350DBCDA76093FE81EAE
PackageArchx86_64
PackageDescriptionImplementation of the algorithm introduced in Shah, R. D. (2016) <http://www.jmlr.org/papers/volume17/13-515/13-515.pdf>. Data with thousands of predictors can be handled. The algorithm performs sequential Lasso fits on design matrices containing increasing sets of candidate interactions. Previous fits are used to greatly speed up subsequent fits so the algorithm is very efficient.
PackageNameR-LassoBacktracking
PackageReleaselp153.2.3
PackageVersion0.1.2
SHA-11D1744933B95A664F1CC8EA75C6AC813FFBF0CCB
SHA-2563874480241DFDB17B2B196E6886407108AAB42EBBC14F868E9CA4E2E37E12AA5
Key Value
MD54B7E5A3D7C1125D1A6665AB402C3D7B8
PackageArchx86_64
PackageDescriptionImplementation of the algorithm introduced in Shah, R. D. (2016) <http://www.jmlr.org/papers/volume17/13-515/13-515.pdf>. Data with thousands of predictors can be handled. The algorithm performs sequential Lasso fits on design matrices containing increasing sets of candidate interactions. Previous fits are used to greatly speed up subsequent fits so the algorithm is very efficient.
PackageNameR-LassoBacktracking
PackageReleaselp152.2.7
PackageVersion0.1.2
SHA-17D34061EBCA47D2070E1AC3A318B627107238A1A
SHA-2560B09474CD8B88450F64F2C1FDFCE0320EC7D8F549B995B0FD45E6C9AC73D63A2
Key Value
MD5A47CAA386B83042C17B31B428C2229F5
PackageArchx86_64
PackageDescriptionImplementation of the algorithm introduced in Shah, R. D. (2016) <http://www.jmlr.org/papers/volume17/13-515/13-515.pdf>. Data with thousands of predictors can be handled. The algorithm performs sequential Lasso fits on design matrices containing increasing sets of candidate interactions. Previous fits are used to greatly speed up subsequent fits so the algorithm is very efficient.
PackageNameR-LassoBacktracking
PackageRelease2.28
PackageVersion0.1.2
SHA-1850558920D6912397EA3185CEAE81CA0D908E930
SHA-256CFDF4B3E9D9FE67F7C8C988F9444B622A0D6919ED301C70A7B1DE271CC4EFE92
Key Value
MD596F101A9268EC58EDF785558BA149048
PackageArchx86_64
PackageDescriptionImplementation of the algorithm introduced in Shah, R. D. (2016) <http://www.jmlr.org/papers/volume17/13-515/13-515.pdf>. Data with thousands of predictors can be handled. The algorithm performs sequential Lasso fits on design matrices containing increasing sets of candidate interactions. Previous fits are used to greatly speed up subsequent fits so the algorithm is very efficient.
PackageMaintainerhttps://www.suse.com/
PackageNameR-LassoBacktracking
PackageReleaselp154.2.1
PackageVersion0.1.2
SHA-100098FB3933A291D2F4962355806959F77BE7F37
SHA-256FC538C14B1F6B3ACD1229797AF7E7E6C258E52476758EA74BC4C3FCFA39A3858