| nclreg_fit | R Documentation | 
Fit a linear model via penalized nonconvex loss function. The regularization path is computed for the lasso (or elastic net penalty), scad (or snet) and mcp (or mnet penalty), at a grid of values for the regularization parameter lambda.
nclreg_fit(x, y, weights, offset, rfamily=c("clossR", "closs", "gloss", "qloss"), 
           s=NULL, fk=NULL, iter=10, reltol=1e-5, 
           penalty=c("enet","mnet","snet"), nlambda=100,lambda=NULL, 
           type.path=c("active", "nonactive", "onestep"), decreasing=FALSE, 
           lambda.min.ratio=ifelse(nobs<nvars,.05, .001), alpha=1, gamma=3, 
           standardize=TRUE, intercept=TRUE, penalty.factor=NULL, maxit=1000, 
           type.init=c("bst", "ncl", "heu"), mstop.init=10, nu.init=0.1, 
           eps=.Machine$double.eps, epscycle=10, thresh=1e-6, trace=FALSE)
| x | input matrix, of dimension nobs x nvars; each row is an observation vector. | 
| y | response variable. Quantitative for  | 
| weights | observation weights. Can be total counts if responses are proportion matrices. Default is 1 for each observation | 
| offset | this can be used to specify an a priori known component to be included in the linear predictor during fitting. This should be NULL or a numeric vector of length equal to the number of cases. Currently only one offset term can be included in the formula. | 
| rfamily | Response type and relevant loss functions (see above) | 
| s |  nonconvex loss tuning parameter for robust regression and classification. The  | 
| fk | predicted values at an iteration in the MM algorithm | 
| nlambda | The number of  | 
| lambda |  by default, the algorithm provides a sequence of regularization values, or a user supplied  | 
| type.path | solution path. If  | 
| lambda.min.ratio | Smallest value for  | 
| alpha | The  | 
| gamma | The tuning parameter of the  | 
| standardize | logical value for x variable standardization, prior to
fitting the model sequence. The coefficients are always returned on
the original scale. Default is  | 
| intercept | logical value: if TRUE (default), intercept(s) are fitted; otherwise, intercept(s) are set to zero | 
| penalty.factor | This is a number that multiplies  | 
| type.init | a method to determine the initial values. If  | 
| mstop.init |  an integer giving the number of boosting iterations when  | 
| nu.init |  a small number (between 0 and 1) defining the step size or shrinkage parameter when  | 
| decreasing |  only used if  | 
| iter | number of iteration in the MM algorithm | 
| maxit | Within each MM algorithm iteration, maximum number of coordinate  descent iterations for each  | 
| reltol | convergency criteria | 
| eps | If a coefficient is less than  | 
| epscycle |  If  | 
| thresh | Convergence threshold for coordinate descent. Defaults value is  | 
| penalty | Type of regularization | 
| trace | If  | 
The sequence of robust models implied by lambda is fit by majorization-minimization along with coordinate
descent. Note that the objective function is 
weights*loss + \lambda*penalty,
 if standardize=FALSE and 
\frac{weights}{\sum(weights)}*loss + \lambda*penalty,
 if standardize=TRUE.
An object with S3 class "nclreg" for the various types of models.
| call | the call that produced the model fit | 
| b0 | Intercept sequence of length  | 
| beta | A  | 
| lambda | The actual sequence of  | 
| decreasing |  if  | 
Zhu Wang <zwang145@uthsc.edu>
Zhu Wang (2021), MM for Penalized Estimation, TEST, \Sexpr[results=rd]{tools:::Rd_expr_doi("10.1007/s11749-021-00770-2")}
nclreg
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