Description Usage Arguments Value
Cross validation (no folds) function for ADMMsigma. This function is to be used with CVP_ADMM.
| 1 2 3 4 | 
| n | sample size for X_valid (used to calculate crit_cv) | 
| S_train | pxp sample covariance matrix for training data (denominator n). | 
| S_valid | pxp sample covariance matrix for validation data (denominator n). | 
| lam | positive tuning parameters for elastic net penalty. If a vector of parameters is provided, they should be in increasing order. | 
| alpha | elastic net mixing parameter contained in [0, 1].  | 
| diagonal | option to penalize the diagonal elements of the estimated precision matrix (Ω). Defaults to  | 
| rho | initial step size for ADMM algorithm. | 
| mu | factor for primal and residual norms in the ADMM algorithm. This will be used to adjust the step size  | 
| tau_inc | factor in which to increase step size  | 
| tau_dec | factor in which to decrease step size  | 
| crit | criterion for convergence ( | 
| tol_abs | absolute convergence tolerance. Defaults to 1e-4. | 
| tol_rel | relative convergence tolerance. Defaults to 1e-4. | 
| maxit | maximum number of iterations. Defaults to 1e4. | 
| adjmaxit | adjusted maximum number of iterations. During cross validation this option allows the user to adjust the maximum number of iterations after the first  | 
| crit_cv | cross validation criterion ( | 
| start | specify  | 
| trace | option to display progress of CV. Choose one of  | 
cross validation errors (cv_crit)
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