Fit a Linear Network Autocorrelation Model
lnam
is used to fit linear network autocorrelation models. These include standard OLS as a special case, although lm
is to be preferred for such analyses.
lnam(y, x = NULL, W1 = NULL, W2 = NULL, theta.seed = NULL, null.model = c("meanstd", "mean", "std", "none"), method = "BFGS", control = list(), tol=1e-10)
y |
a vector of responses. |
x |
a vector or matrix of covariates; if the latter, each column should contain a single covariate. |
W1 |
one or more (possibly valued) graphs on the elements of |
W2 |
one or more (possibly valued) graphs on the elements of |
theta.seed |
an optional seed value for the parameter vector estimation process. |
null.model |
the null model to be fit; must be one of |
method |
method to be used with |
control |
optional control parameters for |
tol |
convergence tolerance for the MLE (expressed as change in deviance). |
lnam
fits the linear network autocorrelation model given by
y = W1 %*% y + X %*% beta + e, e = W2 %*% e + nu
where y is a vector of responses, X is a covariate matrix, nu ~ Norm(0,sigma^2),
W1 = sum( rho1_i W1_i, i=1..p), W2 = sum( rho2_i W2_i, i=1..q),
and W1_i, W2_i are (possibly valued) adjacency matrices.
Intuitively, rho1 is a vector of “AR”-like parameters (parameterizing the autoregression of each y value on its neighbors in the graphs of W1) while rho2 is a vector of “MA”-like parameters (parameterizing the autocorrelation of each disturbance in y on its neighbors in the graphs of W2). In general, the two models are distinct, and either or both effects may be selected by including the appropriate matrix arguments.
Model parameters are estimated by maximum likelihood, and asymptotic standard errors are provided as well; all of the above (and more) can be obtained by means of the appropriate print
and summary
methods. A plotting method is also provided, which supplies fit basic diagnostics for the estimated model. For purposes of comparison, fits may be evaluated against one of four null models:
meanstd
: mean and standard deviation estimated (default).
mean
: mean estimated; standard deviation assumed equal to 1.
std
: standard deviation estimated; mean assumed equal to 0.
none
: no parameters estimated; data assumed to be drawn from a standard normal density.
The default setting should be appropriate for the vast majority of cases, although the others may have use when fitting “pure” autoregressive models (e.g., without covariates). Although a major use of the lnam
is in controlling for network autocorrelation within a regression context, the model is subtle and has a variety of uses. (See the references below for suggestions.)
An object of class "lnam"
containing the following elements:
y |
the response vector used. |
x |
if supplied, the coefficient matrix. |
W1 |
if supplied, the W1 array. |
W2 |
if supplied, the W2 array. |
model |
a code indicating the model terms fit. |
infomat |
the estimated Fisher information matrix for the fitted model. |
acvm |
the estimated asymptotic covariance matrix for the model parameters. |
null.model |
a string indicating the null model fit. |
lnlik.null |
the log-likelihood of y under the null model. |
df.null.resid |
the residual degrees of freedom under the null model. |
df.null |
the model degrees of freedom under the null model. |
null.param |
parameter estimates for the null model. |
lnlik.model |
the log-likelihood of y under the fitted model. |
df.model |
the model degrees of freedom. |
df.residual |
the residual degrees of freedom. |
df.total |
the total degrees of freedom. |
rho1 |
if applicable, the MLE for rho1. |
rho1.se |
if applicable, the asymptotic standard error for rho1. |
rho2 |
if applicable, the MLE for rho2. |
rho2.se |
if applicable, the asymptotic standard error for rho2. |
sigma |
the MLE for sigma. |
sigma.se |
the standard error for sigma |
beta |
if applicable, the MLE for beta. |
beta.se |
if applicable, the asymptotic standard errors for beta. |
fitted.values |
the fitted mean values. |
residuals |
the residuals (response minus fitted); note that these correspond to e-hat in the model equation, not nu-hat. |
disturbances |
the estimated disturbances, i.e., nu-hat. |
call |
the matched call. |
Actual optimization is performed by calls to optim
. Information on algorithms and control parameters can be found via the appropriate man pages.
Carter T. Butts buttsc@uci.edu
Leenders, T.Th.A.J. (2002) “Modeling Social Influence Through Network Autocorrelation: Constructing the Weight Matrix” Social Networks, 24(1), 21-47.
Anselin, L. (1988) Spatial Econometrics: Methods and Models. Norwell, MA: Kluwer.
## Not run: #Construct a simple, random example: w1<-rgraph(100) #Draw the AR matrix w2<-rgraph(100) #Draw the MA matrix x<-matrix(rnorm(100*5),100,5) #Draw some covariates r1<-0.2 #Set the model parameters r2<-0.1 sigma<-0.1 beta<-rnorm(5) #Assemble y from its components: nu<-rnorm(100,0,sigma) #Draw the disturbances e<-qr.solve(diag(100)-r2*w2,nu) #Draw the effective errors y<-qr.solve(diag(100)-r1*w1,x%*%beta+e) #Compute y #Now, fit the autocorrelation model: fit<-lnam(y,x,w1,w2) summary(fit) plot(fit) ## End(Not run)
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