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library(rqPen)
LASSO.fit(Y,X, tau=0.5, lambda=0.1, intercept=FALSE, coef.cutoff=1e-5)

How can i simulate this N times to get 100 sets of results? I have the below code however the computation time is too long and my PC crashes. Is this correct?

for (i in 1:100){
beta[i] = LASSO.fit(Y,X, tau=0.5, lambda=0.1, intercept=FALSE, coef.cutoff=1e-5)
}

I have also tried the following, however, the values of each beta are exactly the same for each simulation when i use lapply... I want to have different coefficients for each row of beta.

do.call(cbind, lapply(1:100, function(i) {
beta = LASSO.fit(Y,X, tau=0.5, lambda=0.1, intercept=FALSE, coef.cutoff=1e-5)
  return(beta)}))

  • there are some errors with assigning the betas, the answer below should fix that – StupidWolf May 27 at 20:55
  • even then you will always get the same result because you are regressing with the same lambda, tau and dataset. what do you actually intend to do? – StupidWolf May 27 at 20:55
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Before the for loop, how is beta defined? Likely, the crash is related with storing the output of LASSO.fit in beta. Since LASSO.fit returns an array, beta should be defined as a list:

beta <- vector("list", length = ncol(X))
for (i in 1:100){
beta[[i]] = LASSO.fit(Y,X, tau=0.5, lambda=0.1, intercept=FALSE, coef.cutoff=1e-5)
}

Using lapply:

beta <- vector("list", length = ncol(X))
beta <- lapply(1:100 , function(z) LASSO.fit(Y,X, tau=0.5, lambda=0.1, intercept=FALSE, coef.cutoff=1e-5))
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