# VAR(1) with DLM package Maximum Likelihood estimation

I'm trying to write a VAR(1) in DLM form, and I'm using this code:

y is a 200x3 matrix

``````build <- function(u) {dlm(m0=c(y[1,]),
C0=1*diag(3),
FF=diag(3),V=diag(c(1e-3,1e-3,1e-3)),
GG= matrix(c(u[1:9]), ncol=3),
W=matrix(c (exp(u[10]),u[11],u[12],u[11], exp(u[13]),u[14],u[12],u[14], exp(u[15]) ),ncol=3))}

init <- rep(0,15)
outMLE <- dlmMLE(y,init, build)
``````

R can't calculate the dlmMLE and reports: "W is not a valid variance matrix".

I would appreciate any suggestions, thanks.

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Would you please show the value of p, the dimension of y, and the values in init? It might be that W fails to be positive definite. –  F. Tusell Jan 13 '12 at 9:00
p=3 and y is a 200x3 matrix. The initial values are all zeros. –  Frank Jan 13 '12 at 9:23

I stumbled upon your question, and haven't parsed the code too carfully... so forgive me if I missed the point...

but just looking at your construction of the variance matrix, it may not be suitably constrained. For example, the following respects your W construction, but doesn't work as a cov matrix: matrix(c(1,2,2,2,1,2,2,2,1),3,3). (Try to compute the correlation matrix!) A more standard approach is to parameterize the covariance matrix via a Cholesky decomposition. For any 6 parameters, say a1-a6, let

W_ = matrix(c(a1,a2,a3,0,a4,a5,0,0,a6),3,3) # arbitrary lower triangular matrix, then... W = W_ %*% t(W_)

perhaps that helps.

drew

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I cannot reproduce your problem. Here is what I get. Best, ft.

``````> library(dlm)
> set.seed(12345)
> p <- 3
> y <- matrix(rnorm(600),ncol=3)
> build <- function(u) {dlm(m0=c(y[1,]),
+ C0=1*diag(3),
+ FF=diag(3),V=diag(c(1e-3,1e-3,1e-3)),
+ GG= matrix(c(u[1:9]), ncol=3),
+ W=matrix(c (exp(u[10]),u[11],u[12],u[11], exp(u[13]),u[14],u[12],u[14], exp(u[15]) ),ncol=3))}
> init <- rep(0,15)
> outMLE <- dlmMLE(y,init, build)
> outMLE
\$par
[1]  0.009390099  0.012975013  0.016513477 -0.086087006 -0.034091979
[6]  0.005505462  0.022439820 -0.042064248  0.111033064  0.134691617
[11]  0.048333708  0.055505701 -0.086836031  0.069454628 -0.035391634

\$value
[1] 300.5475

\$counts