Result for 17B823041EAE65D58051945D172A237B3F51E5F9

Query result

Key Value
FileName./usr/lib/R/site-library/spdep/Meta/hsearch.rds
FileSize4562
MD5C8C66CFA9B309C7C8BC05543B8D60CA2
SHA-117B823041EAE65D58051945D172A237B3F51E5F9
SHA-2564742F1DCDF4BD89FFB8ECD1ACE88156E4F1ADC829A858C0DFC1B5C1C1EDDF781
SSDEEP96:JK7OpyZqe5rxIm1EXXDxHwTR94Hu43dI9DPAghlabjYeCkOJAuH1YV:JA0ehSnxoiHuCqigL7AuyV
TLSHT1AE916CCF242BE9E246D043E53CAC9247E6E9C4A86C25C1EF52D37A3B4ACC5EA0544264
hashlookup:parent-total1
hashlookup:trust55

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Parents (Total: 1)

The searched file hash is included in 1 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
FileSize2007020
MD51044EFA48C0C2F8EF69577C54534A6FA
PackageDescriptionGNU R spatial dependence: weighting schemes, statistics and models A collection of functions to create spatial weights matrix objects from polygon contiguities, from point patterns by distance and tessellations, for summarizing these objects, and for permitting their use in spatial data analysis, including regional aggregation by minimum spanning tree; a collection of tests for spatial autocorrelation, including global Moran's I, APLE, Geary's C, Hubert/Mantel general cross product statistic, Empirical Bayes estimates and Assunção/Reis Index, Getis/Ord G and multicoloured join count statistics, local Moran's I and Getis/Ord G, saddlepoint approximations and exact tests for global and local Moran's I; and functions for estimating spatial simultaneous autoregressive (SAR) lag and error models, impact measures for lag models, weighted and unweighted SAR and CAR spatial regression models, semi-parametric and Moran eigenvector spatial filtering, GM SAR error models, and generalized spatial two stage least squares models.
PackageMaintainerUbuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com>
PackageNamer-cran-spdep
PackageSectiongnu-r
PackageVersion1.1-3+dfsg-1
SHA-1FBFAD1956A8D415F6A1A76114CF173A8E07D0A9A
SHA-2566AB0CC1C108E64216C38124C4477D6D7F0978B93DE06D6F93266C8E9ACFAC4C4