tnam is used to fit (temporal) network
autocorrelation models.
The function tnamdata can be used alternatively to
create a data frame containing all the data ready for estimation.
This may be useful when a non-standard model should be estimated,
like a tobit model or a model with zero inflation, for example.
Both functions accept a formula containing several model terms.
The model terms are themselves functions which can be called
separately. For example, one model term is called netlag.
This model term can be part of the formula handed over to the
tnam function, or netlag can be called directly
in order to create a single variable.
This help page describes the different model terms available in
(temporal) network autocorrelation models. See the
tnam help page for details on the model.attribsim(y, attribute, match = FALSE, lag = 0,
normalization = c("no", "row", "column"), center = FALSE,
coefname = NULL)centrality(networks, type = c("indegree", "outdegree", "freeman",
"betweenness", "flow", "closeness", "eigenvector",
"information", "load", "bonpow"), directed = TRUE, lag = 0,
rescale = FALSE, center = FALSE, coefname = NULL, ...)
cliquelag(y, networks, k.min = 2, k.max = Inf, directed = TRUE,
lag = 0, normalization = c("no", "row", "column"),
center = FALSE, coefname = NULL)
clustering(networks, directed = TRUE, lag = 0, center = FALSE,
coefname = NULL, ...)
covariate(y, lag = 0, exponent = 1, center = FALSE,
coefname = NULL)
degreedummy(networks, deg = 0, type = c("indegree", "outdegree",
"freeman"), reverse = FALSE, directed = TRUE, lag = 0,
center = FALSE, coefname = NULL, ...)
interact(x, y, lag = 0, center = FALSE, coefname = NULL)
netlag(y, networks, lag = 0, pathdist = 1, decay = pathdist^-1,
normalization = c("no", "row", "column", "complete"),
reciprocal = FALSE, center = FALSE, coefname = NULL, ...)
structsim(y, networks, lag = 0, method = c("euclidean",
"minkowski", "jaccard", "binary", "hamming"), center = FALSE,
coefname = NULL, ...)
weightlag(y, networks, lag = 0, normalization = c("no", "row",
"column"), center = FALSE, coefname = NULL)
y. Based on this attribute, the similarity between nodes i and j will be calculated, and the resulting similarity matrix is used to weight the y variable.pathdist, the decay argument specifies the relative importance. By default, a geometric decay is used, that is, the behavior of nodes at path distance 2 is counted only half as much as the behavior of adjacent ndeg = 2) or degree range (e.g., deg = 1:3).exponent = 2 creates a squared variable. This may be helpful for modeling non-linear effects or for modeling a quadratic behavior shape.match = FALSE, a similarity matrix is computed by subtracting node j's attribute value from node i's attribute value, standardizing the resulting distance between 0 and 1, and converting it into a similarity by subtracting it from 1. This "euclidean", "minkowski", "jaccard", "binary", and "hamming"."no" for switching off normalization, "row" for row normalization of the weight matrix, "column" for column normalization of the weight matrix, and "complete" for complete normalization.pathdist = 1 is used, this computes the sum of the behavior of adjacent nodes. If pathdist = 2 is specified, this computes the effect of indirect paths of length 2 ("friends of reciprocal = TRUE is specified, only the behavior of nodes to which a reciprocal relation exists is counted (that is, a link in both directions).deg = 0 and reverse = FALSE are specified, resulting values of 1 indicate that a node has no connections, whereas the combination deg = 0 and reverse = TRUE"indegree", "outdegree", "freeman", "betweenness", "flow", "closeness", "eigenvector", "information"y. Either a vector or a list of vectors or another model term (this is the preferred way).Daraganova, Galina and Garry Robins (2013): Autologistic Actor Attribute Models. In: Lusher, Dean, Johan Koskinen and Garry Robins, "Exponential Random Graph Models for Social Networks: Theory, Methods, and Applications", Cambridge University Press, chapter 9: 102--114.
Hays, Jude C., Aya Kachi and Robert J. Franzese Jr. (2010):
A Spatial Model Incorporating Dynamic, Endogenous Network
Interdependence: A Political Science Application.
Statistical Methodology 7: 406--428.