Result for 6038EBF6A3689319564922DFB85DF7C934B12FCE

Query result

Key Value
FileName./usr/lib64/R/library/econet/help/econet.rdb
FileSize46019
MD5D8B1D9A1CB691667C6F77C98DA80FDAC
SHA-16038EBF6A3689319564922DFB85DF7C934B12FCE
SHA-256FD94006779A806B41FE97AAB2EC71C9B4504DB38A24D55C7A80B9F54AF2DB032
SSDEEP768:OiOmJ/b2Dv2cJwunhGBg94UN8qcSQc6Jah1rlZQRGH+/iP1h1QRbHk:HVAqYGAN86T8ah1rTQBcDgHk
TLSHT18523F232B95E085F67B1BB43319524D0EB3354212E80B959FA61EEB593E7F839D11C30
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
MD55626D3A60E38201F0276E8C2EAC52442
PackageArchx86_64
PackageDescriptionProvides methods for estimating parameter-dependent network centrality measures with linear-in-means models. Both non linear least squares and maximum likelihood estimators are implemented. The methods allow for both link and node heterogeneity in network effects, endogenous network formation and the presence of unconnected nodes. The routines also compare the explanatory power of parameter-dependent network centrality measures with those of standard measures of network centrality. Benefits and features of the 'econet' package are illustrated using data from Battaglini and Patacchini (2018) and Battaglini, Patacchini, and Leone Sciabolazza (2020). For additional details, see the vignette.
PackageNameR-econet
PackageReleaselp153.2.2
PackageVersion0.1.94
SHA-187A376379965CC56E913613670F1BC2811366E49
SHA-256D4B5486BFAB5BE1BBE8F96DE06AC67C3F4D435A2E99B7A8B43EE0039CA4ABEF4
Key Value
MD548D6F0EF1AE8E561F7F5B6540BBAC1D1
PackageArchx86_64
PackageDescriptionProvides methods for estimating parameter-dependent network centrality measures with linear-in-means models. Both non linear least squares and maximum likelihood estimators are implemented. The methods allow for both link and node heterogeneity in network effects, endogenous network formation and the presence of unconnected nodes. The routines also compare the explanatory power of parameter-dependent network centrality measures with those of standard measures of network centrality. Benefits and features of the 'econet' package are illustrated using data from Battaglini and Patacchini (2018) and Battaglini, Patacchini, and Leone Sciabolazza (2020). For additional details, see the vignette.
PackageNameR-econet
PackageReleaselp154.2.1
PackageVersion0.1.94
SHA-1000972A1F806D67429B5F164A146276B75851B14
SHA-256A5E5EC71E68CAE815B5759BD8E3B356C74736597C2E9F5DAD2DE93F9D71BAF7A
Key Value
MD55425CCD01CDD498FE0A736C44788154B
PackageArchx86_64
PackageDescriptionProvides methods for estimating parameter-dependent network centrality measures with linear-in-means models. Both non linear least squares and maximum likelihood estimators are implemented. The methods allow for both link and node heterogeneity in network effects, endogenous network formation and the presence of unconnected nodes. The routines also compare the explanatory power of parameter-dependent network centrality measures with those of standard measures of network centrality. Benefits and features of the 'econet' package are illustrated using data from Battaglini and Patacchini (2018) and Battaglini, Patacchini, and Leone Sciabolazza (2020). For additional details, see the vignette.
PackageNameR-econet
PackageReleaselp152.2.3
PackageVersion0.1.94
SHA-162D0706A2EA927B080BA992E8CBF02B1AB1B62A4
SHA-256F551D294F03192EAC2D114E70917F42583DF0A5BDC608D093A36925B3D36BCDC
Key Value
MD5F4AE731DCB699AC5F97832067473273A
PackageArchx86_64
PackageDescriptionProvides methods for estimating parameter-dependent network centrality measures with linear-in-means models. Both non linear least squares and maximum likelihood estimators are implemented. The methods allow for both link and node heterogeneity in network effects, endogenous network formation and the presence of unconnected nodes. The routines also compare the explanatory power of parameter-dependent network centrality measures with those of standard measures of network centrality. Benefits and features of the 'econet' package are illustrated using data from Battaglini and Patacchini (2018) and Battaglini, Patacchini, and Leone Sciabolazza (2020). For additional details, see the vignette.
PackageNameR-econet
PackageRelease2.16
PackageVersion0.1.94
SHA-1C6EF9AC0723B8F5153EDC9521A85F39F2CA3035D
SHA-25676935B36C1ADDDDBC3BBCFE931CAD0EE3EC5CCDCCFA3489F9CE51C9DB47B5847