The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.
The goal of braggR
is to provide easy access to the
revealed aggregator proposed in Satopää
(2021).
You can install the released version of braggR
from CRAN with:
install.packages("braggR")
This section illustrates braggR
on Scenario B in Satopää
(2021).
library(braggR)
# Forecasters' probability predictions:
= c(1/2, 5/16, 1/8, 1/4, 1/2)
p
## Aggregate with a fixed common prior of 0.5.
# Sample the posterior distribution:
= sample_aggregator(p, p0 = 0.5, num_sample = 10^6, seed = 1)
post_sample # The posterior means of the model parameters:
colMeans(post_sample[,-1])
#> rho gamma delta p0
#> 0.3821977 0.4742795 0.6561926 0.5000000
# The posterior mean of the level of rational disagreement:
mean(post_sample[,3]-post_sample[,2])
#> [1] 0.09208173
# The posterior mean of the level of irrational disagreement:
mean(post_sample[,4]-post_sample[,3])
#> [1] 0.1819131
# The revealed aggregator (a.k.a., the posterior mean of the oracle aggregator):
mean(post_sample[,1])
#> [1] 0.1405172
# The 95% credible interval of the oracle aggregator:
quantile(post_sample[,1], c(0.025, 0.975))
#> 2.5% 97.5%
#> 0.001800206 0.284216903
This illustration aggregates the predictions in p
by
sampling the posterior distribution 1,000,000
times. The
common prior is fixed to p0 = 0.5
. By default, the level of
burnin and thinning have been set to num_sample/2
and
1
, respectively. Therefore, in this case, out of the
1,000,000
initially sampled values, the first
500,000
are discarded for burnin. Given that thinning is
equal to 1
, no more draws are discarded. The final output
post_sample
then holds 500,000
draws for the
aggregate
and the model parameters, rho
,
gamma
, delta
, and p0
. Given that
p0
was fixed to 0.5
, it is not sampled in this
case. Therefore all values in the final column of
post_sample
are equal to 0.5.
The other
quantities, however, show posterior variability and can be summarized
with the posterior mean. The first column of post_sample
represents the posterior sample of the oracle aggregator. The average of
these values is called the revealed aggregator in Satopää
(2021). The final line shows the 95%
credible interval
of the oracle aggregator.
# Aggregate based on a prior beta(2,1) distribution on the common prior.
# Recall that Beta(1,1) corresponds to the uniform distribution.
# Beta(2,1) has mean alpha / (alpha + beta) = 2/3 and
# variance alpha * beta / ((alpha+beta)^2*(alpha+beta+1)) = 1/18
# Sample the posterior distribution:
= sample_aggregator(p, alpha = 2, beta = 1, num_sample = 10^6, seed = 1)
post_sample # The posterior means of the oracle aggregator and the model parameters:
colMeans(post_sample)
#> aggregate rho gamma delta p0
#> 0.1724935 0.5636953 0.6376554 0.9892552 0.6662238
This repeats the first illustration but, instead of fixing
p0
to 0.5
, the common prior is now sampled
from a beta(2,1)
distribution. As a result, the final
column of post_sample
shows posterior variability and
averages to a value close to the prior mean 2/3
.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.