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ngme2

Linear Latent Non-Gaussian Models with Flexible Distributions

Fits and analyzes linear latent non-Gaussian models for temporal, spatial, and space-time data. The package provides model components for autoregressive and Ornstein-Uhlenbeck processes, random walks, Matern fields based on stochastic partial differential equations, separable and non-separable space-time models, graph-based Matern models, bivariate type-G fields, and user-defined sparse operators. Latent fields and observation models can use Gaussian and non-Gaussian noise distributions, including normal inverse Gaussian, generalized asymmetric Laplace, and skew-t distributions. Functions are included for simulation, likelihood-based estimation, prediction, cross-validation, convergence diagnostics, stochastic gradient optimization, batch-means confidence intervals, and posterior-like sampling. The modeling framework is described in Bolin, Jin, Simas and Wallin (2026) "A Unified and Computationally Efficient Non-Gaussian Statistical Modeling Framework" <doi:10.48550/arXiv.2602.23987>.

Versions across snapshots

VersionRepositoryFileSize
0.9.7 rolling linux/jammy R-4.5 ngme2_0.9.7.tar.gz 1.7 MiB
0.9.7 rolling linux/noble R-4.5 ngme2_0.9.7.tar.gz 1.7 MiB
0.9.7 rolling source/ R- ngme2_0.9.7.tar.gz 1.9 MiB
0.9.7 latest linux/jammy R-4.5 ngme2_0.9.7.tar.gz 1.7 MiB
0.9.7 latest linux/noble R-4.5 ngme2_0.9.7.tar.gz 1.7 MiB
0.9.7 latest source/ R- ngme2_0.9.7.tar.gz 1.9 MiB
0.9.7 2026-04-23 source/ R- ngme2_0.9.7.tar.gz 0 B

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