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The convdistr package

The convdistr package provide tools to define distribution objects and make mathematical operations with them. It keep track of the results as if they where scalar numbers but maintaining the ability to obtain randoms samples of the convoluted distributions.

To install this package from github

devtools::install_github("johnaponte/convdistr", build_manual = T, build_vignettes = T)

Practical example

What would be the resulting distribution of a + b * c if a is a normal distribution with mean 1 and standard deviation 0.5, b is a poisson distribution with lambda 5 and c is a beta distribution with shape parameters 10 and 20?

library(convdistr)
library(ggplot2)

a <- new_NORMAL(1,0.5)
b <- new_POISSON(5)
c <- new_BETA(10,20)
res <- a + b * c

metadata(res) 
#>   distribution     rvar
#> 1  CONVOLUTION 2.666667
summary(res)
ggDISTRIBUTION(res) + ggtitle("a + b * c")

The result is a distribution with expected value 2.67. A sample from 10000 drawns of the distribution shows a mean value of 2.66, a median of 2.56 and 95% quantiles of 0.94, 4.95

The following sections describe the DISTRIBUTION object, how to create new DISTRIBUTION objects and how to make operations and mixtures with them.

Please note that when convoluting distributions, this package assumes the distributions are independent between them, i.e. their correlation is 0. If not, you need to implement specific distributions to handle the correlation, like the MULTIVARIATE object.

Description of the DISTRIBUTION object

The DISTRIBUTION is kind of abstract class (or interface) that specific constructors should implement.

It contains 4 fields:

distribution : A character with the name of the distribution implemented

seed : A numerical seed that is use to get a repeatable sample in the summary function

oval : The observed value. It is the value expected. It is used as a number for the mathematical operations of the distributions as if they were a simple scalar

rfunc(n) : A function that generate random numbers from the distribution. Its only parameter n is the number of drawns of the distribution. It returns a matrix with as many rows as n, and as many columns as the dimensions of the distributions

The DISTRIBUTION object can support multidimensional distributions for example a dirichlet distribution. The names of the dimensions should coincides with the names of the oval vector. If it has only one dimension, the default name is rvar.

It is expected that the rfunc could be included in the creation of new distributions by convolution or mixture, so the environment should be carefully controlled to avoid reference leaking that is possible within the R language. For that reason, the rfunc should be created within a restrict_environment function that controls that only the variables that are required within the function are saved in the environment of the function.

Once the new objects are instanced, the fields are immutable and should not be changed.

Factory of DISTRIBUTION objects

The following functions create new objects of class DISTRIBUTION

Methods

The following are methods for all objects of class DISTRIBUTION

  • metadata(x) Print the metadata for the distribution
  • summary(object, n=10000) Produce a summary of the distribution
  • rfunc(x, n) Generate n random drawns of the distribution
  • plot(x, n= 10000) Produce a density plot of the distribution
  • ggDISTRIBUTION(x, n= 10000) produce a density plot of the distribution using ggplot2
myDistr <- new_NORMAL(0,1)
metadata(myDistr)
#>   distribution rvar
#> 1       NORMAL    0
rfunc(myDistr, 10)
#>            rvar
#> 1  -0.202292246
#> 2   2.359176819
#> 3  -0.378977974
#> 4  -1.108465547
#> 5   0.080081266
#> 6  -0.001522165
#> 7   1.140359435
#> 8   0.220586273
#> 9   0.533860090
#> 10  1.450453816
summary(myDistr)
plot(myDistr)

ggDISTRIBUTION(myDistr)

Convolution for Distribution with the same dimensions

Mathematical operations like +, -, *, / between DISTRIBUTION with the same dimensions can be perform with the new_CONVOLUTION(listdistr, op, omit_NA = FALSE) function. The listdistr parameter is a list of DISTRIBUTION objects on which the operation is made. A shorter version exists for each one of the operations as follow

  • new_SUM(listdistr, omit_NA = FALSE)
  • new_SUBTRACTION(listdistr, omit_NA = FALSE)
  • new_MULTIPLICATION(listdistr, omit_NA = FALSE)
  • new_DIVISION(listdistr, omit_NA = FALSE)

but Mathematical operator can also be used.

d1 <- new_NORMAL(1,1)
d2 <- new_UNIFORM(2,8)
d3 <- new_POISSON(5)
dsum <- new_SUM(list(d1,d2,d3))
dsum
#>   distribution rvar
#> 1  CONVOLUTION   11
d1 + d2 + d3
#>   distribution rvar
#> 1  CONVOLUTION   11
summary(dsum)
ggDISTRIBUTION(dsum)

Mixture

A DISTRIBUTION, consisting on the mixture of several distribution can be obtained with the new_MIXTURE(listdistr, mixture) function where listdistr is a list of DISTRIBUTION objects and mixture the vector of probabilities for each distribution. If missing the mixture, the probability will be the same for each distribution.

d1 <- new_NORMAL(1,0.5)
d2 <- new_NORMAL(5,0.5)
d3 <- new_NORMAL(10,0.5)
dmix <- new_MIXTURE(list(d1,d2,d3))
summary(dmix)
ggDISTRIBUTION(dmix)

Convolution of distributions with different dimensions

When convoluting distribution with different dimensions, there are two possibilities. The new_CONVOLUTION_assoc family of functions perform the operation only on the common dimensions and left the others dimensions as they are, or the new_CONVOLUTION_comb family of functions which perform the operation in the combination of all dimensions.

d1 <- new_MULTINORMAL(c(0,1), matrix(c(1,0.3,0.3,1), ncol = 2), p_dimnames = c("A","B"))
d2 <- new_MULTINORMAL(c(3,4), matrix(c(1,0.3,0.3,1), ncol = 2), p_dimnames = c("B","C"))
summary(d1)
summary(d2)
summary(new_SUM_assoc(d1,d2))
summary(new_SUM_comb(d1,d2))

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Version

Install

install.packages('convdistr')

Monthly Downloads

718

Version

1.6.1

License

GPL (>= 3)

Issues

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Stars

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Maintainer

Aponte John

Last Published

January 24th, 2024

Functions in convdistr (1.6.1)

fitbeta

Fits a beta distribution based on quantiles
fitdirichlet

Fits a Dirichlet distribution,
ggDISTRIBUTION

rfunc

Generate random numbers from a DISTRIBUTION object
same_dimensions

Check the dimensions of a list of distributions
set_seed

Modify a the seed of a Distribution object
rfunc.default

Default function
new_MULTINORMAL

Multivariate Normal Distribution
new_MIXTURE

Mixture of DISTRIBUTION objects
metadata

Metadata for a DISTRIBUTION
summary.DISTRIBUTION

Summary of Distributions
plot.DISTRIBUTION

plot of DISTRIBUTION objects
omit_NA

Omit NA distributions from a list of distributions
restrict_environment

Build a new function with a smaller environment
rfunc.DISTRIBUTION

Generic function for a DISTRIBUTION object
DISTRIBUTION

DISTRIBUTION class
BETABINOMIAL

Factory for a BETABINOMIAL distribution object
DIRAC

Factory for a DIRAC distribution object
DISCRETE

Factory for a DISCRETE distribution object
CONVOLUTION_comb

Convolution with combination of dimensions
CONVOLUTION_assoc

Convolution with association of dimensions
DIRICHLET

Factory for a DIRICHLET distribution object
BINOMIAL

Factory for a BINOMIAL distribution object
CONVOLUTION

Make the convolution of two or more DISTRIBUTION objects
UNIFORM

Factory for a UNIFORM distribution object
add_total

Adds a total dimension
BETA

Factory for a BETA distribution object
LOGNORMAL

Factory for a LOGNORMAL distribution object
NA_DISTRIBUTION

Factory for a NA distribution object
NORMAL

Factory for a NORMAL distribution object
POISSON

Factory for a POISSON distribution using confidence intervals
TRIANGULAR

Factory for a TRIANGULAR distribution object
DISTRIBUTION_factory

A factory of DISTRIBUTION classes
TRUNCATED

Factory for a TRUNCATED distribution object
EXPONENTIAL

Factory for a EXPONENTIAL distribution using confidence intervals
cinqnum

cinqnum
convdistr-package

convdistr: Convolute Probabilistic Distributions