Lattice-ordered conditional independence models for missing data
Statistical inference for the parameters of a multivariate normal distribution Np([mu], [Sigma]) based on a sample with missing observations is straightforward when the missing data pattern is monotone (= nested), reducing to the analysis of several normal linear regression models by step-wise conditioning. When the missing data pattern is non-monotone, however, such analysis is impossible. It is shown here that every missing data pattern naturally determines a set of lattice-ordered conditional independence restrictions which, when imposed upon the unknown covariance matrix [Sigma], yields a factorization of the joint likelihood function as a product of (conditional) likelihood functions of normal linear regression models just as in the monotone case. From this factorization the maximum likelihood estimators of [mu] and [Sigma] (under the conditional independence restrictions) can be explicitly derived.
Year of publication: |
1991
|
---|---|
Authors: | Andersson, Steen A. ; Perlman, Michael D. |
Published in: |
Statistics & Probability Letters. - Elsevier, ISSN 0167-7152. - Vol. 12.1991, 6, p. 465-486
|
Publisher: |
Elsevier |
Saved in:
Saved in favorites
Similar items by person
-
Conditional independence models for seemingly unrelated regressions with incomplete data
Drton, Mathias, (2006)
-
Two testing problems relating the real and complex multivariate normal distributions
Andersson, Steen A., (1984)
-
Normal Linear Regression Models With Recursive Graphical Markov Structure,
Andersson, Steen A., (1998)
- More ...