Result for 8ED309C16DFE8E0460556C84DAFC5CF57A11E3B3

Query result

Key Value
FileName./usr/lib64/R/library/brglm/Meta/data.rds
FileSize121
MD5686C245C480D745559243DDA0C60038F
SHA-18ED309C16DFE8E0460556C84DAFC5CF57A11E3B3
SHA-256D20C9858B806D6BDCE4D0E01A3E7D670CE6F0B79F168A4EB1E4D96821F07248E
SSDEEP3:FttVFD/EWOjf9hdpp7OPZiSHkwuuHR/9ks5Pr:XtVFDjOJhhSfx/K0Pr
TLSHT1B2B022CA03008200AC88802882E30A00A8AEE8F2C080882B0A28088023CA20008BB8EE
hashlookup:parent-total17
hashlookup:trust100

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Parents (Total: 17)

The searched file hash is included in 17 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD5B9E647E17D49571CB4D7C063518FD7A1
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageReleaselp153.3.12
PackageVersion0.5_9
SHA-115E34DD893E734654A49196439D74F8E852E75EF
SHA-256DA005EB073906E220BA813B5567FD426DC2B128FAFDBDB62E999559C0C32849D
Key Value
MD56707CD3E7C586268115756A90F1FBE29
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageRelease3.16
PackageVersion0.5_9
SHA-142EDCCFDDB4446674E896DE43511234FC2D5F9D5
SHA-256F8299DEB9486F8BC08049CE3E0DB708A3D488171DA0251FDB3BC0EDA847A5827
Key Value
MD505CCCA38069C76223CDC895DEFB13365
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageReleaselp150.3.48
PackageVersion0.5_9
SHA-1507D00E665869828A39E7157C279194FF8FB1918
SHA-2560EE733EAF24F3DB28775BADB6FC9BA4AD4CB066AB71F0DD2BAF01389F2F4E350
Key Value
MD5912002974319CA69CD812B7B882E4087
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageRelease3.228
PackageVersion0.5_9
SHA-16544396DD879F27EBC274943172A9C6252F4698A
SHA-2563C8D1710532B0FAA04CE28ACD6E53B93B543B238AA1DA0CF46314209AE8B3AF9
Key Value
MD55724C63933B2F8DE45D59D5A1B734426
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageReleaselp153.1.3
PackageVersion0.7.2
SHA-178F4A7164F96FDC7532CCA2BC3D71AEC35FD87FA
SHA-2566B666F3A0709954FD394C74BACAE349E6C35A0AAA773F9BEF0088F2C7257760D
Key Value
MD55973830AEB84AF8516D71EBA12EAD45B
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageReleaselp152.3.12
PackageVersion0.5_9
SHA-186CB437A85653021C4DC9EABCC7ADF334FEB74A8
SHA-25624F041A5384B9CD9D2F4842E686B90E2917AF384BBD91685E737D216CC5CF119
Key Value
MD56CBEE56EED656AAE8AFE7C01F82ED182
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageRelease1.20
PackageVersion0.7.2
SHA-187507AB50873EB366A36D93741D108CAA18B3B0B
SHA-2564D7E0A86977773F572160D66A06A72C6FE924D91CA3FB66C88D2CEBA12584AA5
Key Value
MD5EE4F685A8202ECB56C55196782CC5AC5
PackageArchi586
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageRelease3.229
PackageVersion0.5_9
SHA-189B5D80B93BEFD77A7F87E099B90450B70D49602
SHA-256E9FBDA0A20252EB609133C6F3F07F649D6EE59561106443767E2E151E2ED0BF8
Key Value
MD5F6A80F98A40868424E95AD850A01F8FB
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageRelease3.229
PackageVersion0.5_9
SHA-1983CDDCA7DB9481B919D9789FE3BC21BB03A9056
SHA-2566AF8368EA2D55999C6F10BBDD566BDE729718CCB40E92C6EB69F22DC8F308477
Key Value
MD556AADE7A867F871B437C0FA66E4EA5CB
PackageArchx86_64
PackageDescriptionFit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.
PackageNameR-brglm
PackageRelease3.26
PackageVersion0.5_9
SHA-1B1D6D8B82AB45FB309F967FC9FB80DE82CE23447
SHA-2565C80E2EBB1E917A441B857D1156C799E9953EB1AF326A8E0A20BFF0D08437C3E