| binom.nettest | Performes a binomial test with FDR correction for network edge occurrence. |
| center | Mean centers timeseries in a 2D array timeseries x nodes, i.e. each timeseries of each node has mean of zero. |
| cor2adj | Threshold correlation matrix to match a given number of edges. |
| corTs | Mean correlation of time series across subjects. |
| dgm.group | A group is a list containing restructured data from subejcts for easier group analysis. |
| diag.delta | Quick diagnostics on delta. |
| dlm.lpl | Calculate the log predictive likelihood for a specified set of parents and a fixed delta. |
| dlm.retro | Calculate the location and scale parameters for the time-varying coefficients given all the observations. West, M. & Harrison, J., 1997. Bayesian Forecasting and Dynamic Models. Springer New York. |
| dlmLplCpp | C++ implementation of the dlm.lpl |
| exhaustive.search | A function for an exhaustive search, calculates the optimum value of the discount factor. |
| getAdjacency | Get adjacency and associated likelihoods (LPL) and disount factros (df) of winning models. |
| getIncompleteNodes | Checks results and returns job number for incomplete nodes. |
| getModel | Extract specific parent model with assocated df and ME from complete model space. |
| getModelNr | Get model number from a set of parents. |
| getWinner | Get winner network by maximazing log predictive likelihood (LPL) from a set of models. |
| gplotMat | Plots network as adjacency matrix. |
| mergeModels | Merges forward and backward model store. |
| model.generator | A function to generate all the possible models. |
| myts | Network simulation data. |
| node | Runs exhaustive search on a single node and saves results in txt file. |
| patel | Patel. |
| patel.group | A group is a list containing restructured data from subejcts for easier group analysis. |
| perf | Performance of estimates, such as sensitivity, specificity, and more. |
| priors.spec | Specify the priors. Without inputs, defaults will be used. |
| prop.nettest | Comparing two population proportions on the network with FDR correction. |
| pruning | Get pruned adjacency network. |
| rand.test | Randomization test for Patel's kappa. Creates a distribution of values kappa under the null hypothesis. |
| read.subject | Reads single subject's network from txt files. |
| reshapeTs | Reshapes a 2D concatenated time series into 3D according to no. of subjects and volumes. |
| rmdiag | Removes diagonal of NA's from matrix. |
| rmna | Removes NAs from matrix. |
| rmRecipLow | Removes reciprocal connections in the lower diagnoal of the network matrix. |
| scaleTs | Scaling data. Zero centers and scales the nodes (SD=1). |
| stepwise.backward | Stepise backward non-exhaustive greedy search, calculates the optimum value of the discount factor. |
| stepwise.combine | Stepise combine |
| stepwise.forward | Stepise forward non-exhaustive greedy search, calculates the optimum value of the discount factor. |
| subject | Estimate subject's full network: runs exhaustive search on very node. |
| symmetric | Turns asymetric network into an symmetric network. Helper function to determine the detection of a connection while ignoring directionality. |
| ttest.nettest | Comparing connectivity strenght of two groups with FDR correction. |
| utestdata | Results from v.1.0 for unit tests. |