Key | Value |
---|---|
FileName | ./usr/lib64/R/library/msm/doc/msm-manual.R |
FileSize | 10008 |
MD5 | FB1116C8AA6D51FED1FCE3928F1A716D |
SHA-1 | 3F155716F556CC0F7D5E711828EFBBDF2F39B368 |
SHA-256 | 14D5C94134614015744C97A05A1A57D1213CB8A2DAC13D1196FB75AFACC9A4E8 |
SSDEEP | 192:Cvp/4MvHhL8hMwb3LK+54YSI2E+eWdadS:CNL4MwHKHYE |
TLSH | T170229B02F5103A859797DFA4576B70440ED9E233EE73B08D792D8649BF1998AE27C703 |
hashlookup:parent-total | 19 |
hashlookup:trust | 100 |
The searched file hash is included in 19 parent files which include package known and seen by metalookup. A sample is included below:
Key | Value |
---|---|
MD5 | 922F46BBD6F3D118FD467C87939598C4 |
PackageArch | i586 |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | 2.236 |
PackageVersion | 1.4 |
SHA-1 | 04E6FF270AD98AC70572B0E0B6D007113AE2F5D6 |
SHA-256 | 0D4B96093B3E91B4E16EF02D404F5901E4D80C2414923ECCB5FFDE084853A304 |
Key | Value |
---|---|
MD5 | 9144E198D71718D63335CBEBAB05D857 |
PackageArch | x86_64 |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | lp151.2.59 |
PackageVersion | 1.4 |
SHA-1 | 0500501E30F2021928DC92EFDAC7813A3E18389C |
SHA-256 | 25297FE0EA198BA15C874A6049803B93F54EEA023A40D50238A6745730364A63 |
Key | Value |
---|---|
MD5 | 7556CB025FC19F20C01C6B9B7F9B6B43 |
PackageArch | x86_64 |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | 2.16 |
PackageVersion | 1.4 |
SHA-1 | 1B40916FDBCD510DAFC008DE933C6E6D1F4AE2E6 |
SHA-256 | AEA85EC2DB22DD4D2A0B526D8E9C8443B1B7720B3A2650E506D00893E46CAC0E |
Key | Value |
---|---|
MD5 | 39B6419F110985D4DE9880D6077937C0 |
PackageArch | x86_64 |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | 2.236 |
PackageVersion | 1.4 |
SHA-1 | 28B5EB8288A50F225E5492A6BF1100FCCECD2C22 |
SHA-256 | D278561D8FDF12F5CDD28CDEC5F16FCEE190D677F265EF30494AA29C4078F569 |
Key | Value |
---|---|
MD5 | DC344B9BFF03DD88A43D29DC3926F4C3 |
PackageArch | x86_64 |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | 2.236 |
PackageVersion | 1.4 |
SHA-1 | 2A8EBA10C4966E1A4EA137BC9E03E1926AA048E3 |
SHA-256 | 26FAF7C70A2F4463E15210F750369A43F048260037C901913979C1D3696E2B82 |
Key | Value |
---|---|
FileSize | 1002904 |
MD5 | 2CAC2CCCCBA77E966F4DEA7D26C189F9 |
PackageDescription | GNU R Multi-state Markov and hidden Markov models in continuous time Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates. A variety of observation schemes are supported, including processes observed at arbitrary times, completely-observed processes, and censored states. |
PackageMaintainer | Debian Science Team <debian-science-maintainers@lists.alioth.debian.org> |
PackageName | r-cran-msm |
PackageSection | gnu-r |
PackageVersion | 1.4-2 |
SHA-1 | 34E0C5A2550E2FCD9B58E9F3628AD2CAAB4E721B |
SHA-256 | 75A7BA4A3815C6D249D668859C69FDD5B0E739A0DCC9DA7EC93141886A959361 |
Key | Value |
---|---|
MD5 | 4FE3515A2156FF32E8EE00382D583BC7 |
PackageArch | x86_64 |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | 2.15 |
PackageVersion | 1.4 |
SHA-1 | 354D89F443AFE6543BCB215821E6E2210F3BFCB4 |
SHA-256 | CFB0B2A5BFCFDE134F6AF026C97A56275CB6F5F5F6FC6A72FDD7450281BE6E7E |
Key | Value |
---|---|
MD5 | 8DC8D7500D7E052CB058AF3DB8FB3A34 |
PackageArch | x86_64 |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | lp150.2.49 |
PackageVersion | 1.4 |
SHA-1 | 7A26E16426B8140F7D81D3503D6DEE2EA3801B8B |
SHA-256 | 2E51325C06FEF5989080C84BA2687068C910308D3C7B690542F837310FD7FE12 |
Key | Value |
---|---|
MD5 | B8991BA42431BBAEF482F5E6864B0F74 |
PackageArch | armv7hl |
PackageDescription | Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. A variety of observation schemes are supported, including processes observed at arbitrary times (panel data), continuously-observed processes, and censored states. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates, which may be constant or piecewise-constant in time. |
PackageName | R-msm |
PackageRelease | 2.138 |
PackageVersion | 1.4 |
SHA-1 | 7E441A3388A2FA3CCABC58CEE3F9B7F95D57C2ED |
SHA-256 | 569A1963907386B349B8E57A96354B011716532F6F141D966D6EC76673C37E98 |
Key | Value |
---|---|
FileSize | 1012410 |
MD5 | 1323949977436AB2AE4257109C2AFD5C |
PackageDescription | GNU R Multi-state Markov and hidden Markov models in continuous time Functions for fitting general continuous-time Markov and hidden Markov multi-state models to longitudinal data. Both Markov transition rates and the hidden Markov output process can be modelled in terms of covariates. A variety of observation schemes are supported, including processes observed at arbitrary times, completely-observed processes, and censored states. |
PackageMaintainer | Debian Science Team <debian-science-maintainers@lists.alioth.debian.org> |
PackageName | r-cran-msm |
PackageSection | gnu-r |
PackageVersion | 1.4-2 |
SHA-1 | 8455451B67212531009C0C4FC0DA38842B194C79 |
SHA-256 | B2E15804E086ECBD7B2DF70D88F6EE57F98AFBC32D39A73064B7F17A53BC1A9C |