knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.path = "man/figures/README-", out.width = "100%" )
Initial prototyping for a tidy approach for loss reserving
library(tidyverse) library(rsvr) data <- ChainLadder::ABC %>% as.data.frame() %>% as_tibble() %>% mutate( origin = as.integer(origin), dev = as.integer(dev), type = "paid_loss", segment = "west-auto", currency = "USD", origin_interval = 1, dev_interval = 1 ) mack_spec <- mack_chain_ladder() mack_spec result <- mack_spec %>% fit(data) result
Here is a rough outline of what an actuary would go through in a typical reserving analysis on a periodical base.
loss payments
, lae payments
, case reserves
, transaction date
, accident date
at a minimumpaid triangle
, incurred triangle
, reported counts triangle
, closed counts triangle
, etcCalifornia triangle
vs New York triangle
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