Modelling multiple time series with missing observations
Date
1993
Authors
Cheung, King Chau
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Canberra, ACT : The Australian National University
Abstract
This thesis introduces an approach to the state space
modelling of time series that may possess missing observations.
The procedure starts by estimating the autocovariance sequence
using an idea proposed by Parzen(1963) and Stoffer(1986).
Successive Hankel matrices are obtained via Autoregressive
approximations. The rank of the Hankel matrix is determined by a
singular value decomposition in conjunction with an appropriate
model selection criterion . An in tern ally balanced state space
realisation of the selected Hankel matrix provides initial
estimate for maximum likelihood estimation. Finally, theoretical
evaluation of the Fisher information matrix with missing
observations is considered.
The methodology is illustrated by applying the implied
algorithm to real data. We consider modelling the white blood cell
counts of a patient who has Leukaemia. Our modelling objective is
to be able to describe the dynamic behaviour of the white blood
cell counts.
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Thesis (Masters sub-thesis)
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Open Access
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