Density, distribution function, quantile function and random generation for truncated distributions.
dtrunc(x, spec, a=-Inf, b=Inf, log=FALSE, ...)
extrunc(spec, a=-Inf, b=Inf, ...)
ptrunc(x, spec, a=-Inf, b=Inf, ...)
qtrunc(p, spec, a=-Inf, b=Inf, ...)
rtrunc(n, spec, a=-Inf, b=Inf, ...)
vartrunc(spec, a=-Inf, b=Inf, ...)This is a the number of random draws for rtrunc.
This is a vector of probabilities.
This is a vector to be evaluated.
The base name of a probability distribution is
    specified here. For example, to estimate the density of a
    truncated normal distribution, enter norm.
This is the lower bound of truncation, which defaults to negative infinity.
This is the upper bound of truncation, which defaults to infinity.
Logical. If log=TRUE, then the logarithm of the
    density is returned.
Additional arguments pertain to the probability
    distribution specified in the spec argument.
dtrunc gives the density,
  extrunc gives the expectation,
  ptrunc gives the distribution function,
  qtrunc gives the quantile function,
  rtrunc generates random deviates, and
  vartrunc gives the variance of the truncated distribution.
A truncated distribution is a conditional distribution that results
  from a priori restricting the domain of some other probability
  distribution. More than merely preventing values outside of truncated
  bounds, a proper truncated distribution integrates to one within the
  truncated bounds. For more information on propriety, see
  is.proper. In contrast to a truncated distribution, a
  censored distribution occurs when the probability distribution is
  still allowed outside of a pre-specified range. Here, distributions
  are truncated to the interval \([a,b]\), such as \(p(\theta) \in
  [a,b]\).
The dtrunc function is often used in conjunction with the
  interval function to truncate prior probability
  distributions in the model specification function for use with these
  numerical approximation functions: LaplaceApproximation,
  LaplacesDemon, and PMC.
The R code of Nadarajah and Kotz (2006) has been modified to work with log-densities.
Nadarajah, S. and Kotz, S. (2006). "R Programs for Computing Truncated Distributions". Journal of Statistical Software, 16, Code Snippet 2, p. 1--8.
interval,
  is.proper,
  LaplaceApproximation,
  LaplacesDemon, and
  PMC.
# NOT RUN {
library(LaplacesDemon)
x <- seq(-0.5, 0.5, by = 0.1)
y <- dtrunc(x, "norm", a=-0.5, b=0.5, mean=0, sd=2)
# }
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