Result for 1D2010B4B85F9BC7408B67BF8E4B8E3110384523

Query result

Key Value
FileName./usr/lib64/R/library/glmnet/help/glmnet.rdx
FileSize1291
MD56AEFB2CF211B25531C9A67AEB66AC07A
SHA-11D2010B4B85F9BC7408B67BF8E4B8E3110384523
SHA-2566FC871CB3A3B854AD3E8ED2219948117C700C9CFE758BB591F9BCC116F4F4928
SSDEEP24:XJ+uMI4jnEi2cYucYor9i5ob88s59HWH0/Sjn6Y6EP0VF8:XwD9rnY3YorjpsWWSj30r8
TLSHT1C321C5E03A32818FA64A617D1D0D55BEB7593EBC3C8848B21D141EB586890EF60F807C
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
MD59362F3D01DDAD6F1278F63A06189162C
PackageArchx86_64
PackageDescriptionExtremely efficient procedures for fitting the entire lasso or elastic-net regularization path for linear regression, logistic and multinomial regression models, Poisson regression, Cox model, multiple-response Gaussian, and the grouped multinomial regression. There are two new and important additions. The family argument can be a GLM family object, which opens the door to any programmed family. This comes with a modest computational cost, so when the built-in families suffice, they should be used instead. The other novelty is the relax option, which refits each of the active sets in the path unpenalized. The algorithm uses cyclical coordinate descent in a path-wise fashion, as described in the papers listed in the URL below.
PackageNameR-glmnet
PackageReleaselp154.1.1
PackageVersion4.1.3
SHA-1CF8180F8BA52271E4C1D365EC1F4970D6A97F473
SHA-25686535A789AF3A8034F8731316993DCC9EC45F3FD2876CA539B8F2520FF68F7B9
Key Value
MD5273703A00DF54B82A21C4D6D80979CC5
PackageArchx86_64
PackageDescriptionExtremely efficient procedures for fitting the entire lasso or elastic-net regularization path for linear regression, logistic and multinomial regression models, Poisson regression, Cox model, multiple-response Gaussian, and the grouped multinomial regression. There are two new and important additions. The family argument can be a GLM family object, which opens the door to any programmed family. This comes with a modest computational cost, so when the built-in families suffice, they should be used instead. The other novelty is the relax option, which refits each of the active sets in the path unpenalized. The algorithm uses cyclical coordinate descent in a path-wise fashion, as described in the papers listed in the URL below.
PackageNameR-glmnet
PackageRelease1.5
PackageVersion4.1.3
SHA-161C617CA894F98F158A30F108955341F359D5E4A
SHA-256C588AEE5F3B23D51D47D1B9C9AC45DB8F69A3BD989B8045A504852B3A9285B1C
Key Value
MD5C9F904FA1BDF623CAE8396C0749DE5FD
PackageArchx86_64
PackageDescriptionExtremely efficient procedures for fitting the entire lasso or elastic-net regularization path for linear regression, logistic and multinomial regression models, Poisson regression, Cox model, multiple-response Gaussian, and the grouped multinomial regression. There are two new and important additions. The family argument can be a GLM family object, which opens the door to any programmed family. This comes with a modest computational cost, so when the built-in families suffice, they should be used instead. The other novelty is the relax option, which refits each of the active sets in the path unpenalized. The algorithm uses cyclical coordinate descent in a path-wise fashion, as described in the papers listed in the URL below.
PackageNameR-glmnet
PackageReleaselp153.1.1
PackageVersion4.1.3
SHA-127B93867AE1ECCB4D417F4517154114F35B9A824
SHA-2566AD689DB0BE8A7A847945EDCE2B37472E1DECD397D3DB950670AEB354F56D2FB
Key Value
MD592B92894E5880A87FA6A1A4683E6EFC5
PackageArchx86_64
PackageDescriptionExtremely efficient procedures for fitting the entire lasso or elastic-net regularization path for linear regression, logistic and multinomial regression models, Poisson regression, Cox model, multiple-response Gaussian, and the grouped multinomial regression. There are two new and important additions. The family argument can be a GLM family object, which opens the door to any programmed family. This comes with a modest computational cost, so when the built-in families suffice, they should be used instead. The other novelty is the relax option, which refits each of the active sets in the path unpenalized. The algorithm uses cyclical coordinate descent in a path-wise fashion, as described in the papers listed in the URL below.
PackageNameR-glmnet
PackageReleaselp152.1.1
PackageVersion4.1.3
SHA-1957C313036C1A6868DBD28F221D88CC133233C79
SHA-256A99F3D285491117F397E34F572BE4F442904A8D704BF057FB66AF076B7AC1B37