## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----------------------------------------------------------------------------- library(insurancerating) library(dplyr) df <- MTPL2 |> mutate(across(c(area), as.factor)) |> mutate(across(c(area), ~ set_reference_level(., exposure))) mod1 <- glm( nclaims ~ area, offset = log(exposure), family = poisson(), data = df ) mod2 <- glm( nclaims ~ area + premium, offset = log(exposure), family = poisson(), data = df ) ## ----------------------------------------------------------------------------- model_performance(mod1, mod2) ## ----------------------------------------------------------------------------- rating_table(mod1, mod2, model_data = df, exposure = "exposure") |> autoplot() ## ----------------------------------------------------------------------------- bootstrap_performance(mod1, df, n_resamples = 100, show_progress = FALSE) |> autoplot() ## ----------------------------------------------------------------------------- check_overdispersion(mod1) ## ----------------------------------------------------------------------------- check_residuals(mod1, n_simulations = 600) |> autoplot() ## ----------------------------------------------------------------------------- grid <- rating_grid(mod1) head(grid) ## ----eval = FALSE------------------------------------------------------------- # # model_performance(...) # compare fitted models # rating_table(...) |> autoplot() # inspect coefficient structure # bootstrap_performance(...) # assess predictive stability # check_overdispersion(...) # assess dispersion # check_residuals(...) # inspect residual behaviour # rating_grid(...) # review model-point structure #