Result for 1F7AE8B5FAF18758499E1AC7FD3BE3583A34C4B6

Query result

Key Value
FileName./usr/lib/R/site-library/rms/demo/all.R
FileSize17017
MD5DB553DD9DFB547C6BFDA11C11B47CA45
SHA-11F7AE8B5FAF18758499E1AC7FD3BE3583A34C4B6
SHA-25609CEBFE99724CC886763D8B90E9B810B7AFA3A2E20F7574FB1C2B465BF51445A
SSDEEP384:+bSExdcnOT0B08oF4DMxLCtATEgdqz/qukf27:RG+DM005r0
TLSHT11F72191672291717ABDB10F0B147A1CCA76DD1E82DC39954F12FEE52030D87CA2BBE66
hashlookup:parent-total21
hashlookup:trust100

Network graph view

Parents (Total: 21)

The searched file hash is included in 21 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD5C990591E1715898CDEE60D25D57B4D32
PackageArchx86_64
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageReleaselp153.3.13
PackageVersion4.2_0
SHA-10469544E8FE0786B360396EA3B76391D1555A1A3
SHA-256054BFAB29950A86A3F7D0FFCB7884CCE57EDBE042757E26A4045F4BEFFD297F2
Key Value
MD557F4A7E94DD9F8F1EA5450685F20F8DB
PackageArchx86_64
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageReleaselp150.3.49
PackageVersion4.2_0
SHA-109DBDDFCC897C1EDB34FC59C086E4987594F35EB
SHA-25662263B78790BAF7BFC51C36AAECE5316A36AA4415DB6C6614EA6138ED67CE496
Key Value
MD59491CB1FBBEC2D1CA38A7F1330C23C62
PackageArchx86_64
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageRelease3.6
PackageVersion4.2_0
SHA-112DF2D18BB725E42F161E6C3AF974FF8EF977116
SHA-256FCC49A60F90A92E6F1E289845A18588807B406D367FD262C591EB98155C66F58
Key Value
FileSize994642
MD5A461664C6D207D06A5734E37BCE4BED7
PackageDescriptionGNU R regression modeling strategies by Frank Harrell Regression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of 229 functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal logistic regression, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression. . See Frank Harrell (2001), Regression Modeling Strategies, Springer Series in Statistics, as well as http://biostat.mc.vanderbilt.edu/Rrms.
PackageMaintainerDirk Eddelbuettel <edd@debian.org>
PackageNamer-cran-rms
PackageSectiongnu-r
PackageVersion4.2-0-2
SHA-11699F39177BAA7746AD892E4BAEECBD3363E7553
SHA-25641088618A9F6B27C3530D4A7ED33E2F1F85AF9AE9B07164F2DA71FE1E4B9FE87
Key Value
MD5D363C8DD28B0936DBC691029E46DDB84
PackageArchi586
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageRelease3.242
PackageVersion4.2_0
SHA-1268A63771B47BCBCCC107C890AC589B4A05B904B
SHA-2568BA5AD16752BE5175949E6B3BB3DBB4701D58B012476EC321F58BFDE5BF189DD
Key Value
MD5E806ED76954656E07B441DF9F3ABB6A5
PackageArcharmv7hl
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageRelease3.192
PackageVersion4.2_0
SHA-130070ED7294922AAFDE3A33C8600D9A3FA3F6D86
SHA-256B7AB02821D252A1DDC3F597393923102782FB7CF0860C64054434DFC46DC96A5
Key Value
FileSize992560
MD5344B0E4323BE9C7D45A736ED66D93A16
PackageDescriptionGNU R regression modeling strategies by Frank Harrell Regression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of 229 functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal logistic regression, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression. . See Frank Harrell (2001), Regression Modeling Strategies, Springer Series in Statistics, as well as http://biostat.mc.vanderbilt.edu/Rrms.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamer-cran-rms
PackageSectiongnu-r
PackageVersion4.1-1-1
SHA-1340EE7809D18C2A743D97D561C03B394C2060BEF
SHA-25602D1458C2FE8DEF68C78B9615280F8F916E3174F70E46A5561EF4565C0A13A3C
Key Value
MD528A15E33D0AEADBDB452B2385D3F747A
PackageArchx86_64
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageRelease3.242
PackageVersion4.2_0
SHA-13DC40FE2EECF4A9A04B33097D91EC75839E49170
SHA-25635301A0364AE8DF7317411E8881CA2176F336ACE55BB98F9ED4F087081A9854F
Key Value
MD5FCE163A75946A60B04651CC161DA4277
PackageArchx86_64
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageReleaselp152.3.20
PackageVersion4.2_0
SHA-141432BF47B6CA61B6B82732E675F8D2A1522E688
SHA-2567392F255E6F0A112A3E34EAA3BA86ADD3E5E1B6FB55F2B521C269BB16F27E6A6
Key Value
MD5CEB8EB4F81B65E958D5928F63D48349B
PackageArchx86_64
PackageDescriptionRegression modeling, testing, estimation, validation, graphics, prediction, and typesetting by storing enhanced model design attributes in the fit. rms is a collection of functions that assist with and streamline modeling. It also contains functions for binary and ordinal logistic regression models, ordinal models for continuous Y with a variety of distribution families, and the Buckley-James multiple regression model for right-censored responses, and implements penalized maximum likelihood estimation for logistic and ordinary linear models. rms works with almost any regression model, but it was especially written to work with binary or ordinal regression models, Cox regression, accelerated failure time models, ordinary linear models, the Buckley-James model, generalized least squares for serially or spatially correlated observations, generalized linear models, and quantile regression.
PackageNameR-rms
PackageRelease3.242
PackageVersion4.2_0
SHA-14FA733A5BF74F994D1A44DB4E531317889BB4005
SHA-2565AF4D15E3040354D0DB89E46A36801D99C17B022282F973AE14781385453FA32