## ----setup, include=FALSE----------------------------------------------------- knitr::opts_chunk$set(echo = TRUE, cache = FALSE, tidy = TRUE) ## ----message = FALSE---------------------------------------------------------- library(CVglasso) # generate data from tri-diagonal (sparse) matrix # compute covariance matrix (can confirm inverse is tri-diagonal) S = matrix(0, nrow = 100, ncol = 100) for (i in 1:100){ for (j in 1:100){ S[i, j] = 0.7^(abs(i - j)) } } # generate 1000 x 100 matrix with rows drawn from iid N_p(0, S) set.seed(123) Z = matrix(rnorm(1000*100), nrow = 1000, ncol = 100) out = eigen(S, symmetric = TRUE) S.sqrt = out$vectors %*% diag(out$values^0.5) %*% t(out$vectors) X = Z %*% S.sqrt # calculate sample covariance matrix sample = (nrow(X) - 1)/nrow(X)*cov(X) ## ----message = FALSE, eval = FALSE-------------------------------------------- # # # benchmark CVglasso - defaults # library(microbenchmark) # microbenchmark(CVglasso(S = sample, lam = 0.1, trace = "none")) # ## ----message = FALSE, eval = FALSE-------------------------------------------- # # # benchmark CVglasso - tolerance 1e-6 # microbenchmark(CVglasso(S = sample, lam = 0.1, tol = 1e-6, trace = "none")) # ## ----message = FALSE, eval = FALSE-------------------------------------------- # # # benchmark CVglasso CV - default parameter grid # microbenchmark(CVglasso(X, trace = "none"), times = 5) # ## ----message = FALSE, eval = FALSE-------------------------------------------- # # # benchmark CVglasso parallel CV # microbenchmark(CVglasso(X, cores = 2, trace = "none"), times = 5) #