Result for 38DDE03B1A416BCD1D5D23CEF6F303CD3F41D967

Query result

Key Value
FileName./usr/lib64/R/library/party/libs/party.so
FileSize148408
MD5FD549872B48E25C10680D41EEAC18468
SHA-138DDE03B1A416BCD1D5D23CEF6F303CD3F41D967
SHA-25640674D78416FCBFD4E35F01685911C281D6FE0A1D3489DCE0A5FBC7DE83D6088
SSDEEP3072:YGTzruVHg/SS85RyKErjbuKytcKqZ2fBFT:1kAqlnbKccKqZ2fBF
TLSHT1FBE34A4BF0815DF9C0E5A870A5EB629736347485532CAB2F3D45CB752E26B38AF0B391
hashlookup:parent-total2
hashlookup:trust60

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Parents (Total: 2)

The searched file hash is included in 2 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD5F3B20F35BAC641ED70F3BC17DFB6E47C
PackageArchx86_64
PackageDescriptionA computational toolbox for recursive partitioning. The core of the package is ctree(), an implementation of conditional inference trees which embed tree-structured regression models into a well defined theory of conditional inference procedures. This non-parametric class of regression trees is applicable to all kinds of regression problems, including nominal, ordinal, numeric, censored as well as multivariate response variables and arbitrary measurement scales of the covariates. Based on conditional inference trees, cforest() provides an implementation of Breiman's random forests. The function mob() implements an algorithm for recursive partitioning based on parametric models (e.g. linear models, GLMs or survival regression) employing parameter instability tests for split selection. Extensible functionality for visualizing tree-structured regression models is available.
PackageNameR-party
PackageRelease2.237
PackageVersion1.0_17
SHA-18D29A600D559F39A49424E3059FEA5963C950A50
SHA-256DA7E9F7635D903C76EF2BEA790516263D0A0F3B69CC70BF56B3CD168D2CB4C35
Key Value
MD58EACAC70619C915321BFEC40EFF06F6A
PackageArchx86_64
PackageDescriptionA computational toolbox for recursive partitioning. The core of the package is ctree(), an implementation of conditional inference trees which embed tree-structured regression models into a well defined theory of conditional inference procedures. This non-parametric class of regression trees is applicable to all kinds of regression problems, including nominal, ordinal, numeric, censored as well as multivariate response variables and arbitrary measurement scales of the covariates. Based on conditional inference trees, cforest() provides an implementation of Breiman's random forests. The function mob() implements an algorithm for recursive partitioning based on parametric models (e.g. linear models, GLMs or survival regression) employing parameter instability tests for split selection. Extensible functionality for visualizing tree-structured regression models is available.
PackageNameR-party
PackageRelease2.237
PackageVersion1.0_17
SHA-1E2C5ACA09ABD6BDCB1820A15126B990762F87142
SHA-256DB9D59BFC341B057C7FE301AF841E8B1FEEAD076E0E1C2283F459AC439F8EE38