Some results on constrained maximum likelihood estimation
1986
This paper considers, for a multivariate Gaussian random process, the maximum likelihood estimation (MLE) of a covariance matrix whose structure satisfies some particular constraints. First, one examines the case where the random process is required to satisfy a time varying auto-regressive (AR) model of fixed order p. In particular, one shows that the resulting optimal covariance matrix is a partial reconstruction of the given sample covariance matrix. Next, a linear feature extraction is considered with a slightly unusual criterion which requires that the likelihood of the extracted features should be as large as possible.
Keywords:
- Scatter matrix
- Mathematical optimization
- Covariance matrix
- Estimation of covariance matrices
- Covariance function
- Covariance mapping
- Maximum likelihood sequence estimation
- Law of total covariance
- Artificial intelligence
- Statistics
- Pattern recognition
- Mathematics
- Covariance
- Multivariate random variable
- Gaussian process
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