| get_bootstrap_sims {poweRlaw} | R Documentation |
Estimating the lower bound (xmin)
Description
When fitting heavy tailed distributions, sometimes it is necessary to estimate the lower threshold, xmin. The lower bound is estimated by minimising the Kolmogorov-Smirnoff statistic (as described in Clauset, Shalizi, Newman (2009)).
get_KS_statisticCalculates the KS statistic for a particular value of xmin.
estimate_xminEstimates the optimal lower cutoff using a goodness-of-fit based approach. This function may issue
warningswhen fitting lognormal, Poisson or Exponential distributions. The warnings occur for large values ofxmin. Essentially, we are discarding the bulk of the distribution and cannot calculate the tails to enough accuracy.bootstrapEstimates the unncertainty in the xmin and parameter values via bootstrapping.
bootstrap_pPerforms a bootstrapping hypothesis test to determine whether a suggested (typically power law) distribution is plausible. This is only available for distributions that have
dist_randmethods available.
Usage
get_bootstrap_sims(m, no_of_sims, seed, threads = 1)
bootstrap(
m,
xmins = NULL,
pars = NULL,
xmax = 1e+05,
no_of_sims = 100,
threads = 1,
seed = NULL,
distance = "ks"
)
get_bootstrap_p_sims(m, no_of_sims, seed, threads = 1)
bootstrap_p(
m,
xmins = NULL,
pars = NULL,
xmax = 1e+05,
no_of_sims = 100,
threads = 1,
seed = NULL,
distance = "ks"
)
get_distance_statistic(m, xmax = 1e+05, distance = "ks")
estimate_xmin(m, xmins = NULL, pars = NULL, xmax = 1e+05, distance = "ks")
Arguments
m |
A reference class object that contains the data. |
no_of_sims |
number of bootstrap simulations. When |
seed |
default |
threads |
number of concurrent threads used during the bootstrap. |
xmins |
default |
pars |
default |
xmax |
default |
distance |
A string containing the distance measure (or measures) to calculate.
Possible values are |
Details
When estimating xmin for discrete distributions, the search space when
comparing the data-cdf (empirical cdf)
and the distribution_cdf runs from xmin to max(x)
where x is the data set. This can often be
computationally brutal. In particular, when bootstrapping
we generate random numbers from the power law distribution,
which has a long tail.
To speed up computations for discrete distributions it is sensible to put an
upper bound, i.e. xmax and/or explicitly give values of where to search, i.e. xmin.
Occassionally bootstrapping can generate strange situations. For example,
all values in the simulated data set are less then xmin. In this case,
the estimated distance measure will be Inf and the parameter values, NA.
There are other possible distance measures that can be calculated. The default is the
Kolomogorov Smirnoff statistic (KS). This is equation 3.9 in the CSN paper. The
other measure currently available is reweight, which is equation 3.11.
Note
Adapted from Laurent Dubroca's code
Examples
###################################################
# Load the data set and create distribution object#
###################################################
x = 1:10
m = displ$new(x)
###################################################
# Estimate xmin and pars #
###################################################
est = estimate_xmin(m)
m$setXmin(est)
###################################################
# Bootstrap examples #
###################################################
## Not run:
bootstrap(m, no_of_sims=1, threads=1)
bootstrap_p(m, no_of_sims=1, threads=1)
## End(Not run)