| markov {timsac} | R Documentation |
Compute maximum likelihood estimates of Markovian model.
markov(y)
y |
a multivariate time series. |
This function is usually used with simcon.
id |
|
ir |
|
ij |
|
ik |
|
grad |
gradient vector. |
matFi |
initial estimate of the transition matrix F. |
matF |
transition matrix F. |
matG |
input matrix G. |
davvar |
DAVIDON variance. |
arcoef |
AR coefficient matrices. |
impulse |
impulse response matrices. |
macoef |
MA coefficient matrices. |
v |
innovation variance. |
aic |
AIC. |
H.Akaike, E.Arahata and T.Ozaki (1975) Computer Science Monograph, No.5, Timsac74, A Time Series Analysis and Control Program Package (1). The Institute of Statistical Mathematics.
x <- matrix(rnorm(1000*2),1000,2)
ma <- array(0,dim=c(2,2,2))
ma[,,1] <- matrix(c( -1.0, 0.0,
0.0, -1.0), 2,2,byrow=TRUE)
ma[,,2] <- matrix(c( -0.2, 0.0,
-0.1, -0.3), 2,2,byrow=TRUE)
y <- mfilter(x,ma,"convolution")
ar <- array(0,dim=c(2,2,3))
ar[,,1] <- matrix(c( -1.0, 0.0,
0.0, -1.0), 2,2,byrow=TRUE)
ar[,,2] <- matrix(c( -0.5, -0.2,
-0.2, -0.5), 2,2,byrow=TRUE)
ar[,,3] <- matrix(c( -0.3, -0.05,
-0.1, -0.30), 2,2,byrow=TRUE)
z <- mfilter(y,ar,"recursive")
markov(z)