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Vmiss

VARMA Model with Missing Value


Description

Assuming that the model is known, this program estimates the value of a missing data point. The whole data point is missing.

Usage

Vmiss(zt, piwgt, sigma, tmiss, cnst = NULL, output = T)

Arguments

zt

A T-by-k data matrix of a k-dimensional time series

piwgt

The pi-weights of a VARMA model defined as piwgt=[pi0, pi1, pi2, ....]

sigma

Positive definite covariance matrix of the innovations

tmiss

Time index of the missing data point

cnst

Constant term of the model

output

A logical switch to control output

Details

Use the least squares method to estimate a missing data point. The missing is random.

Value

Estimates of the missing values

Author(s)

Ruey S. Tsay

References

Tsay (2014, Chapter 6). Multivariate Time Series Analysis with R and Financial Applications. John Wiley. Hoboken, NJ.

See Also

Vpmiss

Examples

data("mts-examples",package="MTS")
	gdp=log(qgdp[,3:5])
	m1=VAR(gdp,3)
	piwgt=m1$Phi; Sig=m1$Sigma; cnst=m1$Ph0
	m2=Vmiss(gdp,piwgt,Sig,50,cnst)

MTS

All-Purpose Toolkit for Analyzing Multivariate Time Series (MTS) and Estimating Multivariate Volatility Models

v1.0
Artistic License 2.0
Authors
Ruey S. Tsay and David Wood
Initial release
2018-10-8

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