A package for R to estimate private-value auction models while allowing for unobservable auction-specific heterogeneity.
# Install auctionr from CRAN
install.packages("auctionr")
# Or the development version from GitHub:
# install.packages("remotes")
# library(remotes)
install_github("ajmack/auctionr", build_vignettes = T)
There are two functions available in the package:
auction_generate_data()
allows the user to generate
sample data from the principal model used in the package.
auction_model()
calculates maximum likelihood
estimates of parameters of the principal model for the data provided by
the user.
library(auctionr)
set.seed(100)
<- auction_generate_data(obs = 100, mu = 10, alpha = 2, sigma = 0.2,
dat beta = c(-1,1), new_x_mean= c(-1,1), new_x_sd = c(0.5,0.8))
<- auction_model(dat,
res init_param = c(8, 2, .5, .4, .6),
num_cores = 1,
method = "BFGS",
control = list(trace=1, parscale = c(1,0.1,0.1,1,1)),
std_err = TRUE)
## initial value 1339.327262
## iter 10 value 434.301377
## iter 20 value 410.711195
## final value 410.710822
## converged
##
res
##
## Estimated parameters (SE):
## mu 11.012673 (1.152635)
## alpha 1.752769 (0.185499)
## sigma 0.204230 (0.035286)
## beta[1] -0.920617 (0.057040)
## beta[2] 1.068096 (0.040026)
##
## Maximum log-likelihood = -410.711
Background and details about the model implemented here are available in Mackay, Alexander. 2020. Contract Duration and the Costs of Market Transactions..