control.ergm.ego {ergm.ego} | R Documentation |
Control parameters for ergm.ego
.
Description
Constructs and checks the list of control parameters for estimation by
ergm.ego
.
Usage
control.ergm.ego(
ppopsize = c("auto", "samp", "pop"),
ppopsize.mul = 1,
ppop.wt = c("round", "sample"),
stats.wt = c("data", "ppop"),
stats.est = c("survey", "asymptotic", "bootstrap", "jackknife", "naive"),
boot.R = 10000,
ignore.max.alters = TRUE,
ergm = control.ergm(),
...
)
Arguments
ppopsize , ppopsize.mul |
Parameters to determine the size
The default is to use the same pseudopopulation size as the sample size, but, particularly if there are sampling weights in the data, it should be bigger. Note that depending on |
ppop.wt |
Because each ego must be represented in the pseuodopopulation
network an integral number of times, if the sample is weighted (or the
target
|
stats.wt |
Weight assigned to each ego's contribution to the ERGM's sufficient statistic:
|
stats.est , boot.R |
Method to be used to estimate the ERGM's sufficient statistics and their variance:
|
ignore.max.alters |
if |
ergm |
Control parameters for the |
... |
Not used at this time. |
Value
A list with arguments as components.
Author(s)
Pavel N. Krivitsky
References
Pavel N. Krivitsky and Martina Morris (2017). "Inference for social network models from egocentrically sampled data, with application to understanding persistent racial disparities in HIV prevalence in the US." Annals of Applied Statistics, 11(1): 427–455. doi:10.1214/16-AOAS1010
Pavel N. Krivitsky, Martina Morris, and Michał Bojanowski (2019). "Inference for Exponential-Family Random Graph Models from Egocentrically-Sampled Data with Alter–Alter Relations." NIASRA Working Paper 08-19. https://www.uow.edu.au/niasra/publications/
Pavel N. Krivitsky, Michał Bojanowski, and Martina Morris (2020). "Impact of survey design on estimation of exponential-family random graph models from egocentrically-sampled data." Social Networks, to appear. doi:10.1016/j.socnet.2020.10.001
Pavel N. Krivitsky, Mark S. Handcock, and Martina Morris (2011). "Adjusting for Network Size and Composition Effects in Exponential-Family Random Graph Models." Statistical Methodology, 8(4): 319–339. doi:10.1016/j.stamet.2011.01.005