
https://doi.org/10.32614/CRAN.package.c060
The goal of the c060 package is to provide additional
functions to perform stability selection, model validation and parameter
tuning for glmnet models.
You can install the released version of c060 from CRAN with:
install.packages("c060")And the development version from GitHub with:
install.packages("devtools")
devtools::install_github("fbertran/c060")set.seed(1234)
x=matrix(rnorm(100*1000,0,1),100,1000)
y <- x[1:100,1:1000] %*% c(rep(2,5),rep(-2,5),rep(.1,990))
res <- stabpath(y,x,weakness=1,mc.cores=2)
#> Error in `stabpath()`:
#> ! could not find function "stabpath"
stabsel(res,error=0.05,type="pfer")
#> Error in `stabsel()`:
#> ! could not find function "stabsel"set.seed(1234)
x <- matrix(rnorm(100*1000,0,1),100,1000)
y <- x[1:100,1:1000] %*% c(rep(2,5),rep(-2,5),rep(.1,990))
res <- stabpath(y,x,weakness=1,mc.cores=2)
#> Error in `stabpath()`:
#> ! could not find function "stabpath"
plot(res)
#> Error:
#> ! object 'res' not foundy=sample(1:2,100,replace=TRUE)
res <- stabpath(y,x,weakness=1,mc.cores=2,family="binomial")
#> Error in `stabpath()`:
#> ! could not find function "stabpath"
plot(res)
#> Error:
#> ! object 'res' not foundy=sample(1:4,100,replace=TRUE)
res <- stabpath(y,x,weakness=1,mc.cores=2,family="multinomial")
#> Error in `stabpath()`:
#> ! could not find function "stabpath"
plot(res)
#> Error:
#> ! object 'res' not foundN=100; p=1000
nzc=5
x=matrix(rnorm(N*p),N,p)
beta=rnorm(nzc)
f = x[,seq(nzc)] %*% beta
mu=exp(f)
y=rpois(N,mu)
res <- stabpath(y,x,weakness=1,mc.cores=2,family="poisson")
#> Error in `stabpath()`:
#> ! could not find function "stabpath"
plot(res)
#> Error:
#> ! object 'res' not foundlibrary(survival)
set.seed(10101)
N=100;p=1000
nzc=p/3
x=matrix(rnorm(N*p),N,p)
beta=rnorm(nzc)
fx=x[,seq(nzc)] %*% beta/3
hx=exp(fx)
ty=rexp(N,hx)
tcens=rbinom(n=N,prob=.3,size=1)
y=cbind(time=ty,status=1-tcens)
res <- stabpath(y,x,weakness=1,mc.cores=2,family="cox")
#> Error in `stabpath()`:
#> ! could not find function "stabpath"
plot(res)
#> Error:
#> ! object 'res' not foundset.seed(10101)
library(glmnet)
library(survival)
library(peperr)N=1000;p=30
nzc=p/3
x=matrix(rnorm(N*p),N,p)
beta=rnorm(nzc)
fx=x[,seq(nzc)] %*% beta/3
hx=exp(fx)
ty=rexp(N,hx)
tcens=rbinom(n=N,prob=.3,size=1)# censoring indicator
y=Surv(ty,1-tcens)set.seed(1010)
n=1000;p=100
nzc=trunc(p/10)
x=matrix(rnorm(n*p),n,p)
beta=rnorm(nzc)
fx= x[,seq(nzc)] %*% beta
eps=rnorm(n)*5
y=drop(fx+eps)
px=exp(fx)
px=px/(1+px)
ly=rbinom(n=length(px),prob=px,size=1)
set.seed(1011)y.classes<-ifelse(y>= median(y),1, 0)
set.seed(1234)
nfolds = 10
foldid <- balancedFolds(class.column.factor=y.classes, cross.outer=nfolds)
#> Error in `balancedFolds()`:
#> ! could not find function "balancedFolds"
bounds <- t(data.frame(alpha=c(0, 1)))
colnames(bounds)<-c("lower","upper")
fit <- EPSGO(Q.func="tune.glmnet.interval",
bounds=bounds,
parms.coding="none",
seed = 1234,
show="final",
fminlower = -100,
x = x, y = y.classes, family = "binomial",
foldid = foldid,
my.mfrow = c(4, 4),
type.min = "lambda.1se",
type.measure = "mse",
verbose = FALSE)
#> Error in `EPSGO()`:
#> ! could not find function "EPSGO"
summary(fit)
#> Error in `h()`:
#> ! error in evaluating the argument 'object' in selecting a method for function 'summary': object 'fit' not foundy.classes<-ifelse(y <= quantile(y,0.25),1, ifelse(y >= quantile(y,0.75),3, 2))
set.seed(1234)
nfolds = 10
foldid <- balancedFolds(class.column.factor=y.classes, cross.outer=nfolds)
#> Error in `balancedFolds()`:
#> ! could not find function "balancedFolds"
bounds <- t(data.frame(alpha=c(0, 1)))
colnames(bounds)<-c("lower","upper")
fit <- EPSGO(Q.func="tune.glmnet.interval",
bounds=bounds,
parms.coding="none",
seed = 1234,
show="none",
fminlower = -100,
x = x, y = y.classes, family = "multinomial",
foldid = foldid,
type.min = "lambda.1se",
type.measure = "mse",
verbose = FALSE)
#> Error in `EPSGO()`:
#> ! could not find function "EPSGO"
summary(fit)
#> Error in `h()`:
#> ! error in evaluating the argument 'object' in selecting a method for function 'summary': object 'fit' not foundset.seed(1234)
x=matrix(rnorm(100*1000,0,1),100,1000)
y <- x[1:100,1:1000]%*%c(rep(2,5),rep(-2,5),rep(.1,990))
foldid <- rep(1:10,each=10)
fit <- EPSGO(Q.func="tune.glmnet.interval",
bounds=bounds,
parms.coding="none",
seed = 1234,
show="none",
fminlower = -100,
x = x, y = y, family = "gaussian",
foldid = foldid,
type.min = "lambda.1se",
type.measure = "mse",
verbose = FALSE)
#> Error in `EPSGO()`:
#> ! could not find function "EPSGO"
summary(fit)
#> Error in `h()`:
#> ! error in evaluating the argument 'object' in selecting a method for function 'summary': object 'fit' not found