Result for 33BF11DC96743A84C8DB88C9E6097A39A35780B1

Query result

Key Value
FileName./usr/lib64/R/library/party/help/paths.rds
FileSize388
MD570A4F0EC1B988653412FF98F7D13A8DE
SHA-133BF11DC96743A84C8DB88C9E6097A39A35780B1
SHA-2567334577D03EAB05AB2E360090204A7776CF68C6EDF35EE40F0EBAE2F3652E85F
SSDEEP12:XoOzL6aClS0MMv9mYqMZiBvFd7DJ59NlfbrH:XoOv6aClSYviBvFd7DH9/DD
TLSHT1A0E0F1E90D058B69A50994B051159432438E21D36F6CDAD17E4E9940E174440ADB5B24
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
MD54BD28BD3BC92E16935B649677410CE56
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. The methods are described in Hothorn et al. (2006) <doi:10.1198/106186006X133933>, Zeileis et al. (2008) <doi:10.1198/106186008X319331> and Strobl et al. (2007) <doi:10.1186/1471-2105-8-25>.
PackageNameR-party
PackageRelease1.7
PackageVersion1.3.9
SHA-11E223784871ADC168F2A715B90D3DE0038F80038
SHA-2561207687EEDB01594E798F2878560ECDF8741D99DCD1976967422EB8D3EC01E8F
Key Value
MD5125052AE61281FD17F2AA25C6687CCF6
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. The methods are described in Hothorn et al. (2006) <doi:10.1198/106186006X133933>, Zeileis et al. (2008) <doi:10.1198/106186008X319331> and Strobl et al. (2007) <doi:10.1186/1471-2105-8-25>.
PackageNameR-party
PackageReleaselp152.1.2
PackageVersion1.3.9
SHA-1FD3E47E181F0A0D5A72B56A203C3E71746F45F90
SHA-2565CDB4F0025113146BCDE5945D2299F325288AB32365F6EFEB61D2757003C177A
Key Value
MD50A7E6BB4C7AA1FB5001D84A763675717
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. The methods are described in Hothorn et al. (2006) <doi:10.1198/106186006X133933>, Zeileis et al. (2008) <doi:10.1198/106186008X319331> and Strobl et al. (2007) <doi:10.1186/1471-2105-8-25>.
PackageNameR-party
PackageReleaselp153.1.2
PackageVersion1.3.9
SHA-138DAA0745CEBB5CDF16D67DFEBE310B8E9915D8E
SHA-25635DC8C0DA315052D1E246E39C58FE31638C283486BCBA1F88F6839E3D65080AA
Key Value
MD5D1D6722A21769A3E80A2B23A5E449E86
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. The methods are described in Hothorn et al. (2006) <doi:10.1198/106186006X133933>, Zeileis et al. (2008) <doi:10.1198/106186008X319331> and Strobl et al. (2007) <doi:10.1186/1471-2105-8-25>.
PackageNameR-party
PackageReleaselp154.1.1
PackageVersion1.3.9
SHA-143AD04630C57656B018C8ECE7CA23579B02A32FD
SHA-256A925B76A44B0FDC2D6812F6A7049C3DFB09CF0983F6CD85C4823F6A9AC3BFA77