Reduced-dimensional Monte Carlo Maximum Likelihood for Latent Gaussian Random Field Models
Jaewoo Park, Murali Haran

TL;DR
This paper introduces a dimension-reduction technique for Monte Carlo maximum likelihood estimation in high-dimensional latent Gaussian models, making the process more computationally feasible and reliable.
Contribution
It proposes a projection-based MCML algorithm with an iterative importance function development, applicable to both continuous and discrete latent Gaussian models.
Findings
Method reduces computational cost significantly.
Applicable to spatial and count data models.
Provides insights into standard error calculation and confidence interval coverage.
Abstract
Monte Carlo maximum likelihood (MCML) provides an elegant approach to find maximum likelihood estimators (MLEs) for latent variable models. However, MCML algorithms are computationally expensive when the latent variables are high-dimensional and correlated, as is the case for latent Gaussian random field models. Latent Gaussian random field models are widely used, for example in building flexible regression models and in the interpolation of spatially dependent data in many research areas such as analyzing count data in disease modeling and presence-absence satellite images of ice sheets. We propose a computationally efficient MCML algorithm by using a projection-based approach to reduce the dimensions of the random effects. We develop an iterative method for finding an effective importance function; this is generally a challenging problem and is crucial for the MCML algorithm to be…
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Taxonomy
TopicsStatistical Methods and Inference · Statistical Methods and Bayesian Inference · Soil Geostatistics and Mapping
