CRAN Package Check Results for Package glmmrBase

Last updated on 2026-05-14 09:51:53 CEST.

Flavor Version Tinstall Tcheck Ttotal Status Flags
r-devel-linux-x86_64-debian-clang 1.4.0 383.46 81.45 464.91 OK
r-devel-linux-x86_64-debian-gcc 1.4.0 594.79 72.45 667.24 OK
r-devel-linux-x86_64-fedora-clang 1.4.0 360.00 151.14 511.14 OK
r-devel-linux-x86_64-fedora-gcc 1.4.0 660.00 131.96 791.96 OK
r-devel-windows-x86_64 1.4.0 293.00 132.00 425.00 ERROR
r-patched-linux-x86_64 1.4.0 359.78 94.82 454.60 OK
r-release-linux-x86_64 1.4.0 359.36 94.51 453.87 OK
r-release-macos-arm64 1.4.0 74.00 21.00 95.00 ERROR
r-release-macos-x86_64 1.4.0 254.00 208.00 462.00 ERROR
r-release-windows-x86_64 1.4.0 271.00 144.00 415.00 OK
r-oldrel-macos-arm64 1.4.0 79.00 27.00 106.00 ERROR
r-oldrel-macos-x86_64 1.4.0 244.00 142.00 386.00 ERROR
r-oldrel-windows-x86_64 1.4.0 380.00 165.00 545.00 ERROR

Additional issues

clang-ASAN gcc-ASAN valgrind

Check Details

Version: 1.4.0
Check: examples
Result: ERROR Running examples in 'glmmrBase-Ex.R' failed The error most likely occurred in: > ### Name: Model > ### Title: A GLMM Model > ### Aliases: Model > > ### ** Examples > > > ## ------------------------------------------------ > ## Method `Model$new` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) > ## End(Don't show) > # For more examples, see the examples for MCML. > > #create a data frame describing a cross-sectional parallel cluster > #randomised trial > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > mod <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # We can also include the outcome data in the model initialisation. > # For example, simulating data and creating a new object: > df$y <- mod$sim_data() > > mod <- Model$new( + formula = y ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # Here we will specify a cohort study > df <- nelder(~ind(20) * t(6)) > df$int <- 0 > df[df$t > 3, 'int'] <- 1 > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + data = df, + family = stats::poisson() + ) > > # or with parameter values specified > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + covariance = c(0.05), + mean = c(1,0.5), + data = df, + family = stats::poisson() + ) > > #an example of a spatial grid with two time points > > df <- nelder(~ (x(10)*y(10))*t(2)) > spt_design <- Model$new(formula = ~ 1 + (1|ar0(t)*fexp(x,y)), + data = df, + family = stats::gaussian()) > > ## ------------------------------------------------ > ## Method `Model$sim_data` > ## ------------------------------------------------ > > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + covariance = c(0.05,0.8), + mean = c(rep(0,5),0.6), + data = df, + family = stats::binomial() + ) > ysim <- des$sim_data() > > ## ------------------------------------------------ > ## Method `Model$update_parameters` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + data = df, + family = stats::binomial() + ) > des$update_parameters(cov.pars = c(0.1,0.9)) > > ## ------------------------------------------------ > ## Method `Model$power` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + covariance = c(0.05,0.1), + mean = c(rep(0,5),0.6), + data = df, + family = stats::gaussian(), + var_par = 1 + ) > des$power() #power of 0.90 for the int parameter Flavor: r-devel-windows-x86_64

Version: 1.4.0
Check: examples
Result: ERROR Running examples in ‘glmmrBase-Ex.R’ failed The error most likely occurred in: > ### Name: Model > ### Title: A GLMM Model > ### Aliases: Model > > ### ** Examples > > > ## ------------------------------------------------ > ## Method `Model$new` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) > ## End(Don't show) > # For more examples, see the examples for MCML. > > #create a data frame describing a cross-sectional parallel cluster > #randomised trial > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > mod <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # We can also include the outcome data in the model initialisation. > # For example, simulating data and creating a new object: > df$y <- mod$sim_data() > > mod <- Model$new( + formula = y ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # Here we will specify a cohort study > df <- nelder(~ind(20) * t(6)) > df$int <- 0 > df[df$t > 3, 'int'] <- 1 > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + data = df, + family = stats::poisson() + ) > > # or with parameter values specified > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + covariance = c(0.05), + mean = c(1,0.5), + data = df, + family = stats::poisson() + ) > > #an example of a spatial grid with two time points > > df <- nelder(~ (x(10)*y(10))*t(2)) > spt_design <- Model$new(formula = ~ 1 + (1|ar0(t)*fexp(x,y)), + data = df, + family = stats::gaussian()) > > ## ------------------------------------------------ > ## Method `Model$sim_data` > ## ------------------------------------------------ > > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + covariance = c(0.05,0.8), + mean = c(rep(0,5),0.6), + data = df, + family = stats::binomial() + ) > ysim <- des$sim_data() > > ## ------------------------------------------------ > ## Method `Model$update_parameters` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + data = df, + family = stats::binomial() + ) > des$update_parameters(cov.pars = c(0.1,0.9)) > > ## ------------------------------------------------ > ## Method `Model$power` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + covariance = c(0.05,0.1), + mean = c(rep(0,5),0.6), + data = df, + family = stats::gaussian(), + var_par = 1 + ) > des$power() #power of 0.90 for the int parameter Value SE Power b_t1 0.0 0.08351652 0.0250000 b_t2 0.0 0.06840727 0.0250000 b_t3 0.0 0.07021079 0.0250000 b_t4 0.0 0.07196912 0.0250000 b_t5 0.0 0.07368551 0.0250000 b_int 0.6 0.08628726 0.9999997 > > ## ------------------------------------------------ > ## Method `Model$fit` > ## ------------------------------------------------ > > # Simulated trial data example using REML > set.seed(123) > data(SimTrial,package = "glmmrBase") > fit1 <- Model$new( + formula = y ~ int + factor(t) - 1 + (1|grlog(cl)*ar0log(t)), + data = SimTrial, + family = gaussian() + )$fit(reml = TRUE) Error in solve.default(M) : system is computationally singular: reciprocal condition number = 8.43056e-46 Calls: <Anonymous> -> solve -> solve -> solve.default Execution halted Flavor: r-release-macos-arm64

Version: 1.4.0
Check: examples
Result: ERROR Running examples in ‘glmmrBase-Ex.R’ failed The error most likely occurred in: > ### Name: Model > ### Title: A GLMM Model > ### Aliases: Model > > ### ** Examples > > > ## ------------------------------------------------ > ## Method `Model$new` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) > ## End(Don't show) > # For more examples, see the examples for MCML. > > #create a data frame describing a cross-sectional parallel cluster > #randomised trial > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > mod <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # We can also include the outcome data in the model initialisation. > # For example, simulating data and creating a new object: > df$y <- mod$sim_data() > > mod <- Model$new( + formula = y ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # Here we will specify a cohort study > df <- nelder(~ind(20) * t(6)) > df$int <- 0 > df[df$t > 3, 'int'] <- 1 > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + data = df, + family = stats::poisson() + ) > > # or with parameter values specified > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + covariance = c(0.05), + mean = c(1,0.5), + data = df, + family = stats::poisson() + ) > > #an example of a spatial grid with two time points > > df <- nelder(~ (x(10)*y(10))*t(2)) > spt_design <- Model$new(formula = ~ 1 + (1|ar0(t)*fexp(x,y)), + data = df, + family = stats::gaussian()) > > ## ------------------------------------------------ > ## Method `Model$sim_data` > ## ------------------------------------------------ > > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + covariance = c(0.05,0.8), + mean = c(rep(0,5),0.6), + data = df, + family = stats::binomial() + ) > ysim <- des$sim_data() > > ## ------------------------------------------------ > ## Method `Model$update_parameters` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + data = df, + family = stats::binomial() + ) > des$update_parameters(cov.pars = c(0.1,0.9)) > > ## ------------------------------------------------ > ## Method `Model$power` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + covariance = c(0.05,0.1), + mean = c(rep(0,5),0.6), + data = df, + family = stats::gaussian(), + var_par = 1 + ) > des$power() #power of 0.90 for the int parameter Value SE Power b_t1 0.0 0.08933522 0.025000 b_t2 0.0 0.08182328 0.025000 b_t3 0.0 0.08071050 0.025000 b_t4 0.0 0.08221944 0.025000 b_t5 0.0 0.08381763 0.025000 b_int 0.6 0.09466569 0.999994 > > ## ------------------------------------------------ > ## Method `Model$fit` > ## ------------------------------------------------ > > # Simulated trial data example using REML > set.seed(123) > data(SimTrial,package = "glmmrBase") > fit1 <- Model$new( + formula = y ~ int + factor(t) - 1 + (1|grlog(cl)*ar0log(t)), + data = SimTrial, + family = gaussian() + )$fit(reml = TRUE) Error: Exponent fail: nan^1.000000 Execution halted Flavor: r-release-macos-x86_64

Version: 1.4.0
Check: examples
Result: ERROR Running examples in ‘glmmrBase-Ex.R’ failed The error most likely occurred in: > ### Name: Model > ### Title: A GLMM Model > ### Aliases: Model > > ### ** Examples > > > ## ------------------------------------------------ > ## Method `Model$new` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) > ## End(Don't show) > # For more examples, see the examples for MCML. > > #create a data frame describing a cross-sectional parallel cluster > #randomised trial > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > mod <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # We can also include the outcome data in the model initialisation. > # For example, simulating data and creating a new object: > df$y <- mod$sim_data() > > mod <- Model$new( + formula = y ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # Here we will specify a cohort study > df <- nelder(~ind(20) * t(6)) > df$int <- 0 > df[df$t > 3, 'int'] <- 1 > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + data = df, + family = stats::poisson() + ) > > # or with parameter values specified > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + covariance = c(0.05), + mean = c(1,0.5), + data = df, + family = stats::poisson() + ) > > #an example of a spatial grid with two time points > > df <- nelder(~ (x(10)*y(10))*t(2)) > spt_design <- Model$new(formula = ~ 1 + (1|ar0(t)*fexp(x,y)), + data = df, + family = stats::gaussian()) > > ## ------------------------------------------------ > ## Method `Model$sim_data` > ## ------------------------------------------------ > > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + covariance = c(0.05,0.8), + mean = c(rep(0,5),0.6), + data = df, + family = stats::binomial() + ) > ysim <- des$sim_data() > > ## ------------------------------------------------ > ## Method `Model$update_parameters` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + data = df, + family = stats::binomial() + ) > des$update_parameters(cov.pars = c(0.1,0.9)) > > ## ------------------------------------------------ > ## Method `Model$power` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + covariance = c(0.05,0.1), + mean = c(rep(0,5),0.6), + data = df, + family = stats::gaussian(), + var_par = 1 + ) > des$power() #power of 0.90 for the int parameter Value SE Power b_t1 0.0 0.09242313 0.0250000 b_t2 0.0 0.07614742 0.0250000 b_t3 0.0 0.07570561 0.0250000 b_t4 0.0 0.07727120 0.0250000 b_t5 0.0 0.07887363 0.0250000 b_int 0.6 0.09079002 0.9999983 > > ## ------------------------------------------------ > ## Method `Model$fit` > ## ------------------------------------------------ > > # Simulated trial data example using REML > set.seed(123) > data(SimTrial,package = "glmmrBase") > fit1 <- Model$new( + formula = y ~ int + factor(t) - 1 + (1|grlog(cl)*ar0log(t)), + data = SimTrial, + family = gaussian() + )$fit(reml = TRUE) Error in solve.default(M) : system is computationally singular: reciprocal condition number = 8.43056e-46 Calls: <Anonymous> -> solve -> solve -> solve.default Execution halted Flavor: r-oldrel-macos-arm64

Version: 1.4.0
Check: examples
Result: ERROR Running examples in ‘glmmrBase-Ex.R’ failed The error most likely occurred in: > ### Name: Model > ### Title: A GLMM Model > ### Aliases: Model > > ### ** Examples > > > ## ------------------------------------------------ > ## Method `Model$new` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) > ## End(Don't show) > # For more examples, see the examples for MCML. > > #create a data frame describing a cross-sectional parallel cluster > #randomised trial > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > mod <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # We can also include the outcome data in the model initialisation. > # For example, simulating data and creating a new object: > df$y <- mod$sim_data() > > mod <- Model$new( + formula = y ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # Here we will specify a cohort study > df <- nelder(~ind(20) * t(6)) > df$int <- 0 > df[df$t > 3, 'int'] <- 1 > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + data = df, + family = stats::poisson() + ) > > # or with parameter values specified > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + covariance = c(0.05), + mean = c(1,0.5), + data = df, + family = stats::poisson() + ) > > #an example of a spatial grid with two time points > > df <- nelder(~ (x(10)*y(10))*t(2)) > spt_design <- Model$new(formula = ~ 1 + (1|ar0(t)*fexp(x,y)), + data = df, + family = stats::gaussian()) > > ## ------------------------------------------------ > ## Method `Model$sim_data` > ## ------------------------------------------------ > > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + covariance = c(0.05,0.8), + mean = c(rep(0,5),0.6), + data = df, + family = stats::binomial() + ) > ysim <- des$sim_data() > > ## ------------------------------------------------ > ## Method `Model$update_parameters` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + data = df, + family = stats::binomial() + ) > des$update_parameters(cov.pars = c(0.1,0.9)) > > ## ------------------------------------------------ > ## Method `Model$power` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + covariance = c(0.05,0.1), + mean = c(rep(0,5),0.6), + data = df, + family = stats::gaussian(), + var_par = 1 + ) > des$power() #power of 0.90 for the int parameter Value SE Power b_t1 0.0 0.08903960 0.0250000 b_t2 0.0 0.07751994 0.0250000 b_t3 0.0 0.07898756 0.0250000 b_t4 0.0 0.08053721 0.0250000 b_t5 0.0 0.08217212 0.0250000 b_int 0.6 0.09183578 0.9999976 > > ## ------------------------------------------------ > ## Method `Model$fit` > ## ------------------------------------------------ > > # Simulated trial data example using REML > set.seed(123) > data(SimTrial,package = "glmmrBase") > fit1 <- Model$new( + formula = y ~ int + factor(t) - 1 + (1|grlog(cl)*ar0log(t)), + data = SimTrial, + family = gaussian() + )$fit(reml = TRUE) Error: Exponent fail: nan^1.000000 Execution halted Flavor: r-oldrel-macos-x86_64

Version: 1.4.0
Check: examples
Result: ERROR Running examples in 'glmmrBase-Ex.R' failed The error most likely occurred in: > ### Name: Model > ### Title: A GLMM Model > ### Aliases: Model > > ### ** Examples > > > ## ------------------------------------------------ > ## Method `Model$new` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) > ## End(Don't show) > # For more examples, see the examples for MCML. > > #create a data frame describing a cross-sectional parallel cluster > #randomised trial > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > mod <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # We can also include the outcome data in the model initialisation. > # For example, simulating data and creating a new object: > df$y <- mod$sim_data() > > mod <- Model$new( + formula = y ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + data = df, + family = stats::gaussian() + ) > > # Here we will specify a cohort study > df <- nelder(~ind(20) * t(6)) > df$int <- 0 > df[df$t > 3, 'int'] <- 1 > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + data = df, + family = stats::poisson() + ) > > # or with parameter values specified > > des <- Model$new( + formula = ~ int + (1|gr(ind)), + covariance = c(0.05), + mean = c(1,0.5), + data = df, + family = stats::poisson() + ) > > #an example of a spatial grid with two time points > > df <- nelder(~ (x(10)*y(10))*t(2)) > spt_design <- Model$new(formula = ~ 1 + (1|ar0(t)*fexp(x,y)), + data = df, + family = stats::gaussian()) > > ## ------------------------------------------------ > ## Method `Model$sim_data` > ## ------------------------------------------------ > > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + covariance = c(0.05,0.8), + mean = c(rep(0,5),0.6), + data = df, + family = stats::binomial() + ) > ysim <- des$sim_data() > > ## ------------------------------------------------ > ## Method `Model$update_parameters` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)*ar0(t)), + data = df, + family = stats::binomial() + ) > des$update_parameters(cov.pars = c(0.1,0.9)) > > ## ------------------------------------------------ > ## Method `Model$power` > ## ------------------------------------------------ > > ## Don't show: > setParallel(FALSE) # for the CRAN check > ## End(Don't show) > df <- nelder(~(cl(10)*t(5)) > ind(10)) > df$int <- 0 > df[df$cl > 5, 'int'] <- 1 > des <- Model$new( + formula = ~ factor(t) + int - 1 + (1|gr(cl)) + (1|gr(cl,t)), + covariance = c(0.05,0.1), + mean = c(rep(0,5),0.6), + data = df, + family = stats::gaussian(), + var_par = 1 + ) > des$power() #power of 0.90 for the int parameter Value SE Power b_t1 0.0 0.08145942 0.0250000 b_t2 0.0 0.07361065 0.0250000 b_t3 0.0 0.07318886 0.0250000 b_t4 0.0 0.07481512 0.0250000 b_t5 0.0 0.07647283 0.0250000 b_int 0.6 0.08806154 0.9999994 > > ## ------------------------------------------------ > ## Method `Model$fit` > ## ------------------------------------------------ > > # Simulated trial data example using REML > set.seed(123) > data(SimTrial,package = "glmmrBase") > fit1 <- Model$new( + formula = y ~ int + factor(t) - 1 + (1|grlog(cl)*ar0log(t)), + data = SimTrial, + family = gaussian() + )$fit(reml = TRUE) Flavor: r-oldrel-windows-x86_64