| cgeneric | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| cgeneric.character | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| cgeneric.default | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| cgeneric.graphpcor | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| cgeneric.treepcor | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| cgeneric_generic0 | Build an 'inla.cgeneric' to implement a model whose precision has a conditional precision parameter. See details. This uses the cgeneric interface that can be used as a model in a 'INLA' 'f()' model component. |
| cgeneric_get | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| cgeneric_graphpcor | Build an 'inla.cgeneric' for a graph, see 'graphpcor()' |
| cgeneric_iid | Build an 'inla.cgeneric' to implement a model whose precision has a conditional precision parameter. See details. This uses the cgeneric interface that can be used as a model in a 'INLA' 'f()' model component. |
| cgeneric_LKJ | Build an 'inla.cgeneric' object to implement the LKG prior for the correlation matrix. |
| cgeneric_pc_correl | Build an 'inla.cgeneric' to implement the PC prior, proposed on Simpson et. al. (2007), for the correlation matrix parametrized from the hypershere decomposition, see details. |
| cgeneric_pc_prec_correl | Build an 'inla.cgeneric' to implement the PC-prior of a precision matrix as inverse of a correlation matrix. |
| cgeneric_treepcor | Build an 'cgeneric' for 'treepcor()') |
| cgeneric_Wishart | Build an 'inla.cgeneric' to implement the Wishart prior for a precision matrix. |
| chol-method | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| dim.graphpcor | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| dim.treepcor | Set a tree whose nodes represent the two kind of variables: children and parent. |
| dLKJ | The LKJ density for a correlation matrix |
| drop1-method | Set a tree whose nodes represent the two kind of variables: children and parent. |
| dtheta | Functions for the mapping between spherical and Euclidean coordinates. |
| edges-method | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| edges-method | Set a tree whose nodes represent the two kind of variables: children and parent. |
| etreepcor2precision | Set a tree whose nodes represent the two kind of variables: children and parent. |
| etreepcor2variance | Set a tree whose nodes represent the two kind of variables: children and parent. |
| fillLprec | Precision matrix parametrization helper functions. |
| graph | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| graph.inla.cgeneric | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| graph.inla.rgeneric | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| graphpcor | The 'graphpcor' generic method for graphpcor |
| graphpcor-class | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| graphpcor.formula | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| graphpcor.matrix | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| hessian.graphpcor | Evaluate the hessian of the KLD for a 'graphpcor' correlation model around a base model. |
| initial | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| initial.inla.cgeneric | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| initial.inla.rgeneric | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| inla.cgeneric-class | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| inla.rgeneric-class | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| is.zero | Define the is.zero method |
| is.zero.default | Define the is.zero method |
| is.zero.matrix | Define the is.zero method |
| KLD10 | Functions for the mapping between spherical and Euclidean coordinates. |
| kronecker-method | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| kronecker-method | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| Laplacian | The Laplacian of a graph |
| Laplacian.default | The Laplacian of a graph |
| Laplacian.graphpcor | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| Laplacian.matrix | The Laplacian of a graph |
| Lprec | Precision matrix parametrization helper functions. |
| mu | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| mu.inla.cgeneric | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| mu.inla.rgeneric | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| plot-method | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| plot-method | Set a tree whose nodes represent the two kind of variables: children and parent. |
| prec | The 'prec' method |
| prec.default | The 'prec' method |
| prec.graphpcor | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| prec.inla | The 'prec' method |
| prec.inla.cgeneric | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| prec.inla.rgeneric | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| prec.treepcor | Set a tree whose nodes represent the two kind of variables: children and parent. |
| print.graphpcor | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| print.treepcor | Set a tree whose nodes represent the two kind of variables: children and parent. |
| prior | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| prior.inla.cgeneric | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| prior.inla.rgeneric | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| Q | 'inla.cgeneric' class, short 'cgeneric', to define a 'INLA::cgeneric()' latent model |
| rcorrel | Build the correlation matrix parametrized from the hypershere decomposition, see details. |
| rgeneric | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| rgeneric.default | 'inla.rgeneric' class, short 'rgeneric', to define a 'INLA::rgeneric()' latent model |
| rphi2x | Functions for the mapping between spherical and Euclidean coordinates. |
| rtheta | Functions for the mapping between spherical and Euclidean coordinates. |
| summary.graphpcor | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| summary.treepcor | Set a tree whose nodes represent the two kind of variables: children and parent. |
| theta2correl | Build the correlation matrix parametrized from the hypershere decomposition, see details. |
| theta2gamma2L | Build the correlation matrix parametrized from the hypershere decomposition, see details. |
| theta2H | Functions for the mapping between spherical and Euclidean coordinates. |
| theta2Lprec2C | Precision matrix parametrization helper functions. |
| treepcor | Define a tree used to model correlation matrices using a shared latent variables method represented by a tree, whose nodes represent the two kind of variables: children and parent. See treepcor. |
| treepcor-class | Set a tree whose nodes represent the two kind of variables: children and parent. |
| vcov-method | Set a graph whose nodes and edges represent variables and conditional distributions, respectively. |
| vcov-method | Set a tree whose nodes represent the two kind of variables: children and parent. |
| x2rphi | Functions for the mapping between spherical and Euclidean coordinates. |