Result for 377C0BECA6B2AC7E597472EDA84EF28EF1032B8C

Query result

Key Value
FileName./usr/lib64/R/library/Numero/Meta/links.rds
FileSize421
MD592E0B5D6BC8C79DDD0F6EB7A6A6B9A47
SHA-1377C0BECA6B2AC7E597472EDA84EF28EF1032B8C
SHA-256AEB7B9D155887D645C279E81B69479B49D0FB338EA8F4137D1A0FDDA9C1CEE94
SSDEEP12:X21FxfW9rQcQbyAJS8b06ZFfWqkgHnfyIVGSPO07gV1Y2Yij:XuSQcmTyCftkgHfxdm0MV1xj
TLSHT1DFE02342415E9AE2D29B45BB212A1728480B440890398104064D996B15B0B74A6A4CA8
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
MD5720454A6901588F59027A818CB7B6EBB
PackageArchx86_64
PackageDescriptionHigh-dimensional datasets that do not exhibit a clear intrinsic clustered structure pose a challenge to conventional clustering algorithms. For this reason, we developed an unsupervised framework that helps scientists to better subgroup their datasets based on visual cues, please see Gao S, Mutter S, Casey A, Makinen V-P (2019) Numero: a statistical framework to define multivariable subgroups in complex population-based datasets, Int J Epidemiology, 48:369-37, <doi:10.1093/ije/dyy113>. The framework includes the necessary functions to construct a self-organizing map of the data, to evaluate the statistical significance of the observed data patterns, and to visualize the results.
PackageNameR-Numero
PackageRelease1.9
PackageVersion1.8.4
SHA-1917099E68EC03F4DA6CA7D1E283B3C515B429058
SHA-256C7A8ACC52EEFED15D640C11048F748B8CC89FEC4BD36BECAF471C4F91CED1BA3
Key Value
MD54232496C2C2A6B32B2234BF9C5ECACA5
PackageArchx86_64
PackageDescriptionHigh-dimensional datasets that do not exhibit a clear intrinsic clustered structure pose a challenge to conventional clustering algorithms. For this reason, we developed an unsupervised framework that helps scientists to better subgroup their datasets based on visual cues, please see Gao S, Mutter S, Casey A, Makinen V-P (2019) Numero: a statistical framework to define multivariable subgroups in complex population-based datasets, Int J Epidemiology, 48:369-37, <doi:10.1093/ije/dyy113>. The framework includes the necessary functions to construct a self-organizing map of the data, to evaluate the statistical significance of the observed data patterns, and to visualize the results.
PackageNameR-Numero
PackageReleaselp153.1.2
PackageVersion1.8.4
SHA-1FED4080936CE403FE2E0E45E50FC048E794014D6
SHA-256F01D4BC3C031797ED1B4CD03F8E0E72BDA8AEEB97217956C87327B7D253621F6
Key Value
MD534E954324378B2C3F57CEBD3B2F829D4
PackageArchx86_64
PackageDescriptionHigh-dimensional datasets that do not exhibit a clear intrinsic clustered structure pose a challenge to conventional clustering algorithms. For this reason, we developed an unsupervised framework that helps scientists to better subgroup their datasets based on visual cues, please see Gao S, Mutter S, Casey A, Makinen V-P (2019) Numero: a statistical framework to define multivariable subgroups in complex population-based datasets, Int J Epidemiology, 48:369-37, <doi:10.1093/ije/dyy113>. The framework includes the necessary functions to construct a self-organizing map of the data, to evaluate the statistical significance of the observed data patterns, and to visualize the results.
PackageNameR-Numero
PackageReleaselp152.1.2
PackageVersion1.8.4
SHA-196BE57AE4E1C8047578E8B593441CC4B2CE846C4
SHA-2569A511B3B4AF02A143C97AE783AD0A5FD1ADEFD166BFB2FADC04BD5AFEDAC0268
Key Value
MD5392586DC3B1A58B293C010FF501C3EAE
PackageArchx86_64
PackageDescriptionHigh-dimensional datasets that do not exhibit a clear intrinsic clustered structure pose a challenge to conventional clustering algorithms. For this reason, we developed an unsupervised framework that helps scientists to better subgroup their datasets based on visual cues, please see Gao S, Mutter S, Casey A, Makinen V-P (2019) Numero: a statistical framework to define multivariable subgroups in complex population-based datasets, Int J Epidemiology, 48:369-37, <doi:10.1093/ije/dyy113>. The framework includes the necessary functions to construct a self-organizing map of the data, to evaluate the statistical significance of the observed data patterns, and to visualize the results.
PackageNameR-Numero
PackageReleaselp154.1.1
PackageVersion1.8.4
SHA-128FE30A9728D0768840AD04BB416EE36373D1926
SHA-256198C5C938E1E600E5B923DEFA204317DD33177E93E243DC07C38A1CDB72EC5BF