| equSA-package | Graphical model has been widely used in may scientific fileds to describe the conditional independent relationships for a large set of random variables. Through this package, we provide tools to learn both undirected graph (Markov Random Field) and directed acyclic graph (Bayesian Network). p |
| combineR | Combine two networks. |
| Cont2Gaus | A transfomation from count data into Gaussian data |
| ContSim | A simulation method for generating count data from multivariate Zero-Inflated Negative Binomial distributions |
| ContTran | A data continuized transformation |
| count | An example of count dataset for constructing networks |
| DAGsim | Simulate a directed acyclic graph with mixed data (continuous and binary) |
| diffR | Detect difference between two networks. |
| equSAR | An equvalent mearsure of partial correlation coeffients |
| JGGM | Joint estimation of Multiple Gaussian Graphical Models |
| mixed3000 | One example dataset for p_learning |
| pcorselR | Multiple hypothesis test |
| plotGraph | Plot Single Network |
| plotJGraph | Plot Networks |
| psical | An calculation of psi scores. |
| p_learning | Construct Bayesian Network based on p-learning algorithm. |
| simtoequiv | Transform a directed acyclic graph into an equivalent correct graph. |
| solcov | Calculate covariance matrix and precision matrix |
| SR0 | One example dataset for equSA |
| SR0_mat | The adjacency matrix for SR0 dataset. |
| TR0 | One example dataset for equSA |
| TR0_mat | The adjacency matrix for TR0 dataset. |