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Based on the article fitdistrplus: an R Package for Fitting Distributions (Marie Laure Delignette-Muller and Christophe Dutang, 2015, Journal of Statistical Software, DOI 10.18637/jss.v064.i04)
Keywords: probability distribution fitting, bootstrap, censored data, maximum likelihood, moment matching, quantile matching, maximum goodness-of-fit, distributions, R
Fitting distributions to data is a very common task in statistics and consists in choosing a probability distribution modelling the random variable, as well as finding parameter estimates for that distribution.
This requires judgment and expertise and generally needs an iterative process of distribution choice, parameter estimation, and quality of fit assessment.
In the R (R Development Core Team 2013) package MASS (Venables and Ripley 2010), maximum likelihood estimation is available via the fitdistr
function; other steps of the fitting process can be done using other R functions (Ricci 2005).
In this paper, we present the R package fitdistrplus (Delignette-Muller et al. 2014) implementing several methods for fitting univariate parametric distribution.
A first objective in developing this package was to provide R users a set of functions dedicated to help this overall process.
The fitdistr
function estimates distribution parameters by maximizing the likelihood function using the optim
function.
No distinction between parameters with different roles (e.g., main parameter and nuisance parameter) is made, as this paper focuses on parameter estimation from a general point-of-view.
In some cases, other estimation methods could be prefered, such as maximum goodness-of-fit estimation (also called minimum distance estimation), as proposed in the R package actuar with three different goodness-of-fit distances (Dutang, Goulet, and Pigeon 2008).
While developping the fitdistrplus package, a second objective was to consider various estimation methods in addition to maximum likelihood estimation (MLE).
Functions were developped to enable moment matching estimation (MME), quantile matching estimation (QME), and maximum goodness-of-fit estimation (MGE) using eight different distances.
Moreover, the fitdistrplus package offers the possibility to specify a user-supplied function for optimization, useful in cases where classical optimization techniques, not included in optim
, are more adequate.
In applied statistics, it is frequent to have to fit distributions to censored data (Klein and Moeschberger 2003, @helsel05, @busschaertetal10, @lehaetal11, @commeauetal12).
The MASS fitdistr
function does not enable maximum likelihood estimation with this type of data.
Some packages can be used to work with censored data, especially survival data (Therneau 2011, @hiranoetal94, @jordan05), but those packages generally focus on specific models, enabling the fit of a restricted set of distributions.
A third objective is thus to provide R users a function to estimate univariate distribution parameters from right-, left- and interval-censored data.
Few packages on CRAN provide estimation procedures for any user-supplied parametric distribution and support different types of data.
The distrMod package (Kohl and Ruckdeschel 2010) provides an object-oriented (S4) implementation of probability models and includes distribution fitting procedures for a given minimization criterion.
This criterion is a user-supplied function which is sufficiently flexible to handle censored data, yet not in a trivial way, see Example M4 of the distrMod vignette.
The fitting functions MLEstimator
and MDEstimator
return an S4 class for which a coercion method to class mle
is provided so that the respective functionalities (e.g., confint
and logLik
) from package stats4 are available, too.
In fitdistrplus, we chose to use the standard S3 class system for its understanding by most R users.
When designing the fitdistrplus package, we did not forget to implement generic functions also available for S3 classes.
Finally, various other packages provide functions to estimate the mode, the moments or the L-moments of a distribution, see the reference manuals of modeest, lmomco and Lmoments packages.
The package is available from the Comprehensive R Archive Network at . The paper is organized as follows: Section 2 presents tools for fitting continuous distributions to classic non-censored data. Section 3 deals with other estimation methods and other types of data, before Section 4 concludes.
For illustrating the use of various functions of the fitdistrplus package with continuous non-censored data, we will first use a data set named groundbeef
which is included in our package.
This data set contains pointwise values of serving sizes in grams, collected in a French survey, for ground beef patties consumed by children under 5 years old.
It was used in a quantitative risk assessment published by Delignette-Muller and Cornu (2008).
library("fitdistrplus")
data("groundbeef")
str(groundbeef)
## 'data.frame': 254 obs. of 1 variable:
## $ serving: num 30 10 20 24 20 24 40 20 50 30 ...
Before fitting one or more distributions to a data set, it is generally necessary to choose good candidates among a predefined set of distributions. This choice may be guided by the knowledge of stochastic processes governing the modeled variable, or, in the absence of knowledge regarding the underlying process, by the observation of its empirical distribution. To help the user in this choice, we developed functions to plot and characterize the empirical distribution.
First of all, it is common to start with plots of the empirical distribution function and the histogram (or density plot), which can be obtained with the plotdist
function of the fitdistrplus package.
This function provides two plots (see Figure 2.1): the left-hand plot is by default the histogram on a density scale (or density plot of both, according to values of arguments histo
and demp
) and the right-hand plot the empirical cumulative distribution function (CDF).
plotdist(groundbeef$serving, histo = TRUE, demp = TRUE)
In addition to empirical plots, descriptive statistics may help to choose candidates to describe a distribution among a set of parametric distributions. Especially the skewness and kurtosis, linked to the third and fourth moments, are useful for this purpose. A non-zero skewness reveals a lack of symmetry of the empirical distribution, while the kurtosis value quantifies the weight of tails in comparison to the normal distribution for which the kurtosis equals 3. The skewness and kurtosis and their corresponding unbiased estimator (Casella and Berger 2002) from a sample \((X_i)_i \stackrel{\text{i.i.d.}}{\sim} X\) with observations \((x_i)_i\) are given by:
\[\begin{equation} sk(X) = \frac{E[(X-E(X))^3]}{Var(X)^{\frac{3}{2}}}~,~\widehat{sk}=\frac{\sqrt{n(n-1)}}{n-2}\times\frac{m_{3}}{m_{2}^{\frac{3}{2}}},\tag{2.1} \end{equation}\]
\[\begin{equation} kr(X) = \frac{E[(X-E(X))^4]}{Var(X)^{2}}~,~\widehat{kr}=\frac{n-1}{(n-2)(n-3)}((n+1) \times \frac{m_{4}}{m_{2}^{2}}-3(n-1)) + 3,\tag{2.2} \end{equation}\]
where \(m_{2}\), \(m_{3}\), \(m_{4}\) denote empirical moments defined by \(m_{k}=\frac{1}{n}\sum_{i=1}^n(x_{i}-\overline{x})^{k}\), with \(x_{i}\) the \(n\) observations of variable \(x\) and \(\overline{x}\) their mean value.
The descdist
function provides classical descriptive statistics (minimum, maximum, median, mean, standard deviation), skewness and kurtosis.
By default, unbiased estimations of the three last statistics are provided.
Nevertheless, the argument method
can be changed from "unbiased"
(default) to "sample"
to obtain them without correction for bias.
A skewness-kurtosis plot such as the one proposed by Cullen and Frey (1999) is provided by the descdist
function for the empirical distribution (see Figure 2.2 for the groundbeef
data set).
On this plot, values for common distributions are displayed in order to help the choice of distributions to fit to data.
For some distributions (normal, uniform, logistic, exponential), there is only one possible value for the skewness and the kurtosis.
Thus, the distribution is represented by a single point on the plot. For other distributions, areas of possible values are represented, consisting in lines (as for gamma and lognormal distributions), or larger areas (as for beta distribution).
Skewness and kurtosis are known not to be robust.
In order to take into account the uncertainty of the estimated values of kurtosis and skewness from data, a nonparametric bootstrap procedure (Efron and Tibshirani 1994) can be performed by using the argument boot
.
Values of skewness and kurtosis are computed on bootstrap samples (constructed by random sampling with replacement from the original data set) and reported on the skewness-kurtosis plot.
Nevertheless, the user needs to know that skewness and kurtosis, like all higher moments, have a very high variance.
This is a problem which cannot be completely solved by the use of bootstrap.
The skewness-kurtosis plot should then be regarded as indicative only.
The properties of the random variable should be considered, notably its expected value and its range, as a complement to the use of the plotdist
and descdist
functions.
Below is a call to the descdist
function to describe the distribution of the serving size from the groundbeef
data set and to draw the corresponding skewness-kurtosis plot (see Figure 2.2).
Looking at the results on this example with a positive skewness and a kurtosis not far from 3, the fit of three common right-skewed distributions could be considered, Weibull, gamma and lognormal distributions.
descdist(groundbeef$serving, boot = 1000)
## summary statistics
## ------
## min: 10 max: 200
## median: 79
## mean: 73.65
## estimated sd: 35.88
## estimated skewness: 0.7353
## estimated kurtosis: 3.551
Once selected, one or more parametric distributions \(f(.\vert \theta)\) (with parameter \(\theta\in\mathbb{R}^d\)) may be fitted to the data set, one at a time, using the fitdist
function.
Under the i.i.d. sample assumption, distribution parameters \(\theta\) are by default estimated by maximizing the likelihood function defined as:
\[\begin{equation} L(\theta)=\prod_{i=1}^n f(x_{i}\vert \theta)\tag{2.3} \end{equation}\]
with \(x_{i}\) the \(n\) observations of variable \(X\) and \(f(.\vert \theta)\) the density function of the parametric distribution. The other proposed estimation methods are described in Section 3.1.
The fitdist
function returns an S3 object of class fitdist
for which print
, summary
and plot
functions are provided.
The fit of a distribution using fitdist
assumes that the corresponding d
, p
, q
functions (standing respectively for the density, the distribution and the quantile functions) are defined.
Classical distributions are already defined in that way in the stats package, e.g., dnorm
, pnorm
and qnorm
for the normal distribution (see ?Distributions
).
Others may be found in various packages (see the CRAN task view: Probability Distributions at ).
Distributions not found in any package must be implemented by the user as d
, p
, q
functions.
In the call to fitdist
, a distribution has to be specified via the argument dist
either by the character string corresponding to its common root name used in the names of d
, p
, q
functions (e.g., "norm"
for the normal distribution) or by the density function itself, from which the root name is extracted (e.g., dnorm
for the normal distribution).
Numerical results returned by the fitdist
function are
(1) the parameter estimates,
(2) the estimated standard errors (computed from the estimate of the Hessian matrix at the maximum likelihood solution),
(3) the loglikelihood,
(4) Akaike and Bayesian information criteria (the so-called AIC and BIC), and (5) the correlation matrix between parameter estimates.
Below is a call to the fitdist
function to fit a Weibull distribution to the serving size from the groundbeef
data set.
fitdist(groundbeef$serving, "weibull")
fw <-summary(fw)
## Fitting of the distribution ' weibull ' by maximum likelihood
## Parameters :
## estimate Std. Error
## shape 2.186 0.1046
## scale 83.348 2.5269
## Loglikelihood: -1255 AIC: 2514 BIC: 2522
## Correlation matrix:
## shape scale
## shape 1.0000 0.3218
## scale 0.3218 1.0000
The plot of an object of class fitdist
provides four classical goodness-of-fit plots (Cullen and Frey 1999) presented on Figure 2.3:
For CDF, Q-Q and P-P plots, the probability plotting position is defined by default using Hazen’s rule, with probability points of the empirical distribution calculated as (1:n - 0.5)/n
, as recommended by Blom (1959).
This plotting position can be easily changed (see the reference manual for details (Delignette-Muller et al. 2014)).
Unlike the generic plot
function, the denscomp
, cdfcomp
, qqcomp
and ppcomp
functions enable to draw separately each of these four plots, in order to compare the empirical distribution and multiple parametric distributions fitted on a same data set.
These functions must be called with a first argument corresponding to a list of objects of class fitdist
, and optionally further arguments to customize the plot (see the reference manual for lists of arguments that may be specific to each plot (Delignette-Muller et al. 2014)).
In the following example, we compare the fit of a Weibull, a lognormal and a gamma distributions to the groundbeef
data set (Figure 2.3).
par(mfrow = c(2, 2), mar = c(4, 4, 2, 1))
fitdist(groundbeef$serving, "gamma")
fg <- fitdist(groundbeef$serving, "lnorm")
fln <- c("Weibull", "lognormal", "gamma")
plot.legend <-denscomp(list(fw, fln, fg), legendtext = plot.legend)
qqcomp(list(fw, fln, fg), legendtext = plot.legend)
cdfcomp(list(fw, fln, fg), legendtext = plot.legend)
ppcomp(list(fw, fln, fg), legendtext = plot.legend)
The density plot and the CDF plot may be considered as the basic classical goodness-of-fit plots. The two other plots are complementary and can be very informative in some cases. The Q-Q plot emphasizes the lack-of-fit at the distribution tails while the P-P plot emphasizes the lack-of-fit at the distribution center. In the present example (in Figure 2.3), none of the three fitted distributions correctly describes the center of the distribution, but the Weibull and gamma distributions could be prefered for their better description of the right tail of the empirical distribution, especially if this tail is important in the use of the fitted distribution, as it is in the context of food risk assessment.
The data set named endosulfan
will now be used to illustrate other features of the fitdistrplus package.
This data set contains acute toxicity values for the organochlorine pesticide endosulfan (geometric mean of LC50 ou EC50 values in \(\mu g.L^{-1}\)), tested on Australian and non-Australian laboratory-species (Hose and Van den Brink, n.d.).
In ecotoxicology, a lognormal or a loglogistic distribution is often fitted to such a data set in order to characterize the species sensitivity distribution (SSD) for a pollutant.
A low percentile of the fitted distribution, generally the 5% percentile, is then calculated and named the hazardous concentration 5% (HC5).
It is interpreted as the value of the pollutant concentration protecting 95% of the species (Posthuma, Suter, and Traas 2010).
But the fit of a lognormal or a loglogistic distribution to the whole endosulfan
data set is rather bad (Figure 2.4), especially due to a minority of very high values.
The two-parameter Pareto distribution and the three-parameter Burr distribution (which is an extension of both the loglogistic and the Pareto distributions) have been fitted.
Pareto and Burr distributions are provided in the package actuar.
Until here, we did not have to define starting values (in the optimization process) as reasonable starting values are implicity defined within the fitdist
function for most of the distributions defined in R (see ?fitdist
for details).
For other distributions like the Pareto and the Burr distribution, initial values for the distribution parameters have to be supplied in the argument start
, as a named list with initial values for each parameter (as they appear in the d
, p
, q
functions).
Having defined reasonable starting values1 various distributions can be fitted and graphically compared.
On this example, the function cdfcomp
can be used to report CDF values in a logscale so as to emphasize discrepancies on the tail of interest while defining an HC5 value (Figure 2.4).
library(actuar)
data("endosulfan")
endosulfan$ATV
ATV <- fitdist(ATV, "lnorm")
fendo.ln <- fitdist(ATV, "llogis", start = list(shape = 1, scale = 500))
fendo.ll <- fitdist(ATV, "pareto", start = list(shape = 1, scale = 500))
fendo.P <- fitdist(ATV, "burr", start = list(shape1 = 0.3, shape2 = 1, rate = 1))
fendo.B <-cdfcomp(list(fendo.ln, fendo.ll, fendo.P, fendo.B), xlogscale = TRUE,
ylogscale = TRUE, legendtext = c("lognormal", "loglogistic", "Pareto", "Burr"))
None of the fitted distribution correctly describes the right tail observed in the data set, but as shown in Figure 2.4, the left-tail seems to be better described by the Burr distribution.
Its use could then be considered to estimate the HC5 value as the 5% quantile of the distribution.
This can be easily done using the quantile
generic function defined for an object of class fitdist
.
Below is this calculation together with the calculation of the empirical quantile for comparison.
quantile(fendo.B, probs = 0.05)
## Estimated quantiles for each specified probability (non-censored data)
## p=0.05
## estimate 0.2939
quantile(ATV, probs = 0.05)
## 5%
## 0.2
In addition to the ecotoxicology context, the quantile
generic function is also attractive in the actuarial-financial context.
In fact, the value-at-risk \(VAR_\alpha\) is defined as the \(1-\alpha\)-quantile of the loss distribution and can be computed with quantile
on a fitdist
object.
The computation of different goodness-of-fit statistics is proposed in the fitdistrplus package in order to further compare fitted distributions.
The purpose of goodness-of-fit statistics aims to measure the distance between the fitted parametric distribution and the empirical distribution: e.g., the distance between the fitted cumulative distribution function \(F\) and the empirical distribution function \(F_{n}\).
When fitting continuous distributions, three goodness-of-fit statistics are classicaly considered: Cramer-von Mises, Kolmogorov-Smirnov and Anderson-Darling statistics (D’Agostino and Stephens 1986).
Naming \(x_{i}\) the \(n\) observations of a continuous variable \(X\) arranged in an ascending order, Table 2.1 gives the definition and the empirical estimate of the three considered goodness-of-fit statistics.
They can be computed using the function gofstat
as defined by Stephens (D’Agostino and Stephens 1986).
gofstat(list(fendo.ln, fendo.ll, fendo.P, fendo.B),
fitnames = c("lnorm", "llogis", "Pareto", "Burr"))
## Goodness-of-fit statistics
## lnorm llogis Pareto Burr
## Kolmogorov-Smirnov statistic 0.1672 0.1196 0.08488 0.06155
## Cramer-von Mises statistic 0.6374 0.3827 0.13926 0.06803
## Anderson-Darling statistic 3.4721 2.8316 0.89206 0.52393
##
## Goodness-of-fit criteria
## lnorm llogis Pareto Burr
## Akaike's Information Criterion 1069 1069 1048 1046
## Bayesian Information Criterion 1074 1075 1053 1054
Statistic | General formula | Computational formula |
---|---|---|
Kolmogorov-Smirnov (KS) | \(\sup|F_{n}(x) - F(x)|\) | \(\max(D^{+},D^{-})\) with \(D^{+}=\max\limits_{i=1,\dots,n}\left(\frac{i}{n} - F_i\right)\) and \(D^{-}=\max\limits_{i=1,\dots,n}\left(F_{i}-\frac{i-1}{n}\right)\) |
Cramer-von Mises (CvM) | \(n \int_{-\infty}^{\infty}(F_{n}(x) - F(x))^2 dx\) | \(\frac{1}{12n} + \sum\limits_{i=1}^n \left(F_i-\frac{2i-1}{2n} \right)^{2}\) |
Anderson-Darling (AD) | \(n \int_{-\infty}^{\infty}\frac{(F_{n}(x) - F(x))^2}{F(x) (1 - F(x))} dx\) | \(-n -\frac{1}{n}\sum\limits_{i=1}^n (2i-1)\log(F_i(1-F_{n+1-i}))\) |
where \(F_i\stackrel{\triangle}{=} F(x_i)\)
As giving more weight to distribution tails, the Anderson-Darling statistic is of special interest when it matters to equally emphasize the tails as well as the main body of a distribution. This is often the case in risk assessment (Cullen and Frey 1999, @Vose10). For this reason, this statistics is often used to select the best distribution among those fitted. Nevertheless, this statistics should be used cautiously when comparing fits of various distributions. Keeping in mind that the weighting of each CDF quadratic difference depends on the parametric distribution in its definition (see Table 2.1), Anderson-Darling statistics computed for several distributions fitted on a same data set are theoretically difficult to compare. Moreover, such a statistic, as Cramer-von Mises and Kolmogorov-Smirnov ones, does not take into account the complexity of the model (i.e., parameter number). It is not a problem when compared distributions are characterized by the same number of parameters, but it could systematically promote the selection of the more complex distributions in the other case. Looking at classical penalized criteria based on the loglikehood (AIC, BIC) seems thus also interesting, especially to discourage overfitting.
In the previous example, all the goodness-of-fit statistics based on the CDF distance are in favor of the Burr distribution, the only one characterized by three parameters, while AIC and BIC values respectively give the preference to the Burr distribution or the Pareto distribution. The choice between these two distributions seems thus less obvious and could be discussed. Even if specifically recommended for discrete distributions, the Chi-squared statistic may also be used for continuous distributions (see Section 3.3 and the reference manual for examples (Delignette-Muller et al. 2014)).
The uncertainty in the parameters of the fitted distribution can be estimated by parametric or nonparametric bootstraps using the boodist
function for non-censored data (Efron and Tibshirani 1994).
This function returns the bootstrapped values of parameters in an S3 class object which can be plotted to visualize the bootstrap region.
The medians and the 95% confidence intervals of parameters (2.5 and 97.5 percentiles) are printed in the summary.
When inferior to the whole number of iterations (due to lack of convergence of the optimization algorithm for some bootstrapped data sets), the number of iterations for which the estimation converges is also printed in the summary.
The plot of an object of class bootdist
consists in a scatterplot or a matrix of scatterplots of the bootstrapped values of parameters providing a representation of the joint uncertainty distribution of the fitted parameters.
Below is an example of the use of the bootdist
function with the previous fit of the Burr distribution to the endosulfan
data set (Figure 2.5).
bootdist(fendo.B, niter = 1001)
bendo.B <-summary(bendo.B)
## Parametric bootstrap medians and 95% percentile CI
## Median 2.5% 97.5%
## shape1 0.1983 0.09283 0.3606
## shape2 1.5863 1.05306 3.0629
## rate 1.4907 0.70828 2.7775
plot(bendo.B)
Bootstrap samples of parameter estimates are useful especially to calculate confidence intervals on each parameter of the fitted distribution from the marginal distribution of the bootstraped values. It is also interesting to look at the joint distribution of the bootstraped values in a scatterplot (or a matrix of scatterplots if the number of parameters exceeds two) in order to understand the potential structural correlation between parameters (see Figure 2.5).
The use of the whole bootstrap sample is also of interest in the risk assessment field. Its use enables the characterization of uncertainty in distribution parameters. It can be directly used within a second-order Monte Carlo simulation framework, especially within the package mc2d (Pouillot, Delignette-Muller, and Denis 2011). One could refer to Pouillot and Delignette-Muller (n.d.) for an introduction to the use of mc2d and fitdistrplus packages in the context of quantitative risk assessment.
The bootstrap method can also be used to calculate confidence intervals on quantiles of the fitted distribution.
For this purpose, a generic quantile
function is provided for class bootdist
.
By default, 95% percentiles bootstrap confidence intervals of quantiles are provided.
Going back to the previous example from ecotoxicolgy, this function can be used to estimate the uncertainty associated to the HC5 estimation, for example from the previously fitted Burr distribution to the endosulfan
data set.
quantile(bendo.B, probs = 0.05)
## (original) estimated quantiles for each specified probability (non-censored data)
## p=0.05
## estimate 0.2939
## Median of bootstrap estimates
## p=0.05
## estimate 0.2994
##
## two-sided 95 % CI of each quantile
## p=0.05
## 2.5 % 0.1792
## 97.5 % 0.4999
This subsection focuses on alternative estimation methods. One of the alternative for continuous distributions is the maximum goodness-of-fit estimation method also called minimum distance estimation method (D’Agostino and Stephens 1986, @actuarJSS). In this package this method is proposed with eight different distances: the three classical distances defined in Table 2.1, or one of the variants of the Anderson-Darling distance proposed by Luceno (n.d.) and defined in Table 3.1. The right-tail AD gives more weight to the right-tail, the left-tail AD gives more weight only to the left tail. Either of the tails, or both of them, can receive even larger weights by using second order Anderson-Darling Statistics.
Statistic | General formula | Computational formula |
---|---|---|
Right-tail AD (ADR) | \(\int_{-\infty}^{\infty}\frac{(F_{n}(x) - F(x))^2 }{1 - F(x)} dx\) | \(\frac{n}{2} -2\sum\limits_{i=1}^nF_i -\frac{1}{n}\sum\limits_{i=1}^n(2i-1)ln(\overline F_{n+1-i})\) |
Left-tail AD (ADL) | \(\int_{-\infty}^{\infty}\frac{(F_{n}(x) - F(x))^2 }{(F(x))} dx\) | \(-\frac{3n}{2} +2\sum\limits_{i=1}^nF_i -\frac{1}{n}\sum\limits_{i=1}^n(2i-1)ln(F_i)\) |
Right-tail AD 2nd order (AD2R) | \(ad2r=\int_{-\infty}^{\infty}\frac{(F_{n}(x) - F(x))^2 }{(1 - F(x))^{2}} dx\) | \(ad2r=2\sum\limits_{i=1}^nln(\overline F_i) +\frac{1}{n}\sum\limits_{i=1}^n \frac{2i-1}{\overline F_{n+1-i}}\) |
Left-tail AD 2nd order (AD2L) | \(ad2l=\int_{-\infty}^{\infty}\frac{(F_{n}(x) - F(x))^2 }{(F(x))^{2}} dx\) | \(ad2l=2\sum\limits_{i=1}^nln(F_i) +\frac{1}{n}\sum\limits_{i=1}^n\frac{2i-1}{F_i}\) |
AD 2nd order (AD2) | \(ad2r+ad2l\) | \(ad2r+ad2l\) |
where \(F_i\stackrel{\triangle}{=} F(x_{i})\) and \(\overline F_i\stackrel{\triangle}{=}1-F(x_{i})\)
To fit a distribution by maximum goodness-of-fit estimation, one needs to fix the argument method
to mge
in the call to fitdist
and to specify the argument gof
coding for the chosen goodness-of-fit distance.
This function is intended to be used only with continuous non-censored data.
Maximum goodness-of-fit estimation may be useful to give more weight to data at one tail of the distribution.
In the previous example from ecotoxicology, we used a non classical distribution (the Burr distribution) to correctly fit the empirical distribution especially on its left tail.
In order to correctly estimate the 5\(\%\) percentile, we could also consider the fit of the classical lognormal distribution, but minimizing a goodness-of-fit distance giving more weight to the left tail of the empirical distribution.
In what follows, the left tail Anderson-Darling distances of first or second order are used to fit a lognormal to endosulfan
data set (see Figure 3.1).
fitdist(ATV, "lnorm", method = "mge", gof = "ADL")
fendo.ln.ADL <- fitdist(ATV, "lnorm", method = "mge", gof = "AD2L")
fendo.ln.AD2L <-cdfcomp(list(fendo.ln, fendo.ln.ADL, fendo.ln.AD2L),
xlogscale = TRUE, ylogscale = TRUE,
main = "Fitting a lognormal distribution",
xlegend = "bottomright",
legendtext = c("MLE", "Left-tail AD", "Left-tail AD 2nd order"))
Comparing the 5% percentiles (HC5) calculated using these three fits to the one calculated from the MLE fit of the Burr distribution, we can observe, on this example, that fitting the lognormal distribution by maximizing left tail Anderson-Darling distances of first or second order enables to approach the value obtained by fitting the Burr distribution by MLE.
c(
(HC5.estimates <-empirical = as.numeric(quantile(ATV, probs = 0.05)),
Burr = as.numeric(quantile(fendo.B, probs = 0.05)$quantiles),
lognormal_MLE = as.numeric(quantile(fendo.ln, probs = 0.05)$quantiles),
lognormal_AD2 = as.numeric(quantile(fendo.ln.ADL, probs = 0.05)$quantiles),
lognormal_AD2L = as.numeric(quantile(fendo.ln.AD2L, probs = 0.05)$quantiles)))
## empirical Burr lognormal_MLE lognormal_AD2 lognormal_AD2L
## 0.20000 0.29393 0.07259 0.19591 0.25877
The moment matching estimation (MME) is another method commonly used to fit parametric distributions (Vose 2010). MME consists in finding the value of the parameter \(\theta\) that equalizes the first theoretical raw moments of the parametric distribution to the corresponding empirical raw moments as in Equation (3.1):
\[\begin{equation} E(X^{k}|\theta)=\frac{1}{n}\sum_{i=1}^{n}x_{i}^{k},\tag{3.1} \end{equation}\] for \(k=1,\ldots,d\), with \(d\) the number of parameters to estimate and \(x_{i}\) the \(n\) observations of variable \(X\). For moments of order greater than or equal to 2, it may also be relevant to match centered moments. Therefore, we match the moments given in Equation (3.2):
\[\begin{equation} E(X\vert \theta) = \overline{x} ~,~E\left((X-E(X))^{k}|\theta\right)=m_k, \text{ for } k=2,\ldots,d,\tag{3.2} \end{equation}\]
where \(m_k\) denotes the empirical centered moments.
This method can be performed by setting the argument method
to "mme"
in the call to fitdist
.
The estimate is computed by a closed-form formula for the following distributions: normal, lognormal, exponential, Poisson, gamma, logistic, negative binomial, geometric, beta and uniform distributions.
In this case, for distributions characterized by one parameter (geometric, Poisson and exponential), this parameter is simply estimated by matching theoretical and observed means, and for distributions characterized by two parameters, these parameters are estimated by matching theoretical and observed means and variances (Vose 2010).
For other distributions, the equation of moments is solved numerically using the optim
function by minimizing the sum of squared differences between observed and theoretical moments (see the fitdistrplus reference manual for technical details (Delignette-Muller et al. 2014)).
A classical data set from the Danish insurance industry published in McNeil (1997) will be used to illustrate this method.
In fitdistrplus, the data set is stored in danishuni
for the univariate version and contains the loss amounts collected at Copenhagen Reinsurance between 1980 and 1990.
In actuarial science, it is standard to consider positive heavy-tailed distributions and have a special focus on the right-tail of the distributions.
In this numerical experiment, we choose classic actuarial distributions for loss modelling: the lognormal distribution and the Pareto type II distribution (Klugman, Panjer, and Willmot 2009).
The lognormal distribution is fitted to danishuni
data set by matching moments implemented as a closed-form formula.
On the left-hand graph of Figure 3.2, the fitted distribution functions obtained using the moment matching estimation (MME) and maximum likelihood estimation (MLE) methods are compared.
The MME method provides a more cautious estimation of the insurance risk as the MME-fitted distribution function (resp. MLE-fitted) underestimates (overestimates) the empirical distribution function for large values of claim amounts.
data("danishuni")
str(danishuni)
## 'data.frame': 2167 obs. of 2 variables:
## $ Date: Date, format: "1980-01-03" "1980-01-04" ...
## $ Loss: num 1.68 2.09 1.73 1.78 4.61 ...
fitdist(danishuni$Loss, "lnorm")
fdanish.ln.MLE <- fitdist(danishuni$Loss, "lnorm", method = "mme", order = 1:2)
fdanish.ln.MME <-library(actuar)
fitdist(danishuni$Loss, "pareto", start = list(shape = 10, scale = 10),
fdanish.P.MLE <-lower = 2+1e-6, upper = Inf)
## Warning in cov2cor(varcovar): diag(V) had non-positive or NA entries; the
## non-finite result may be dubious
## Warning in sqrt(diag(varcovar)): Production de NaN
function(x, order) mean(x^order)
memp <- fitdist(danishuni$Loss, "pareto", method = "mme", order = 1:2, memp = "memp",
fdanish.P.MME <-start = list(shape = 10, scale = 10), lower = c(2+1e-6, 2+1e-6),
upper = c(Inf, Inf))
## Warning in cov2cor(varcovar): diag(V) had non-positive or NA entries; the
## non-finite result may be dubious
par(mfrow = c(1, 2))
cdfcomp(list(fdanish.ln.MLE, fdanish.ln.MME), legend = c("lognormal MLE", "lognormal MME"),
main = "Fitting a lognormal distribution", xlogscale = TRUE, datapch = 20)
cdfcomp(list(fdanish.P.MLE, fdanish.P.MME), legend = c("Pareto MLE", "Pareto MME"),
main = "Fitting a Pareto distribution", xlogscale = TRUE, datapch = 20)
In a second time, a Pareto distribution, which gives more weight to the right-tail of the distribution, is fitted. As the lognormal distribution, the Pareto has two parameters, which allows a fair comparison.
We use the implementation of the actuar package providing raw and centered moments for that distribution (in addition to d
, p
, q
and r
functions (Goulet 2012).
Fitting a heavy-tailed distribution for which the first and the second moments do not exist for certain values of the shape parameter requires some cautiousness.
This is carried out by providing, for the optimization process, a lower and an upper bound for each parameter.
The code below calls the L-BFGS-B optimization method in optim
, since this quasi-Newton allows box constraints.2
We choose match moments defined in Equation (3.1), and so a function for computing the empirical raw moment (called memp
in our example) is passed to fitdist
.
For two-parameter distributions (i.e., \(d=2\)), Equations (3.1) and (3.2) are equivalent.
gofstat(list(fdanish.ln.MLE, fdanish.P.MLE, fdanish.ln.MME, fdanish.P.MME),
fitnames = c("lnorm.mle", "Pareto.mle", "lnorm.mme", "Pareto.mme"))
## Goodness-of-fit statistics
## lnorm.mle Pareto.mle lnorm.mme Pareto.mme
## Kolmogorov-Smirnov statistic 0.1375 0.3124 0.4368 0.37
## Cramer-von Mises statistic 14.7911 37.7227 88.9503 55.43
## Anderson-Darling statistic 87.1933 208.3388 416.2567 281.58
##
## Goodness-of-fit criteria
## lnorm.mle Pareto.mle lnorm.mme Pareto.mme
## Akaike's Information Criterion 8120 9250 9792 9409
## Bayesian Information Criterion 8131 9261 9803 9420
As shown on Figure 3.2, MME and MLE fits are far less distant (when looking at the right-tail) for the Pareto distribution than for the lognormal distribution on this data set. Furthermore, for these two distributions, the MME method better fits the right-tail of the distribution from a visual point of view. This seems logical since empirical moments are influenced by large observed values. In the previous traces, we gave the values of goodness-of-fit statistics. Whatever the statistic considered, the MLE-fitted lognormal always provides the best fit to the observed data.
Maximum likelihood and moment matching estimations are certainly the most commonly used method for fitting distributions (Cullen and Frey 1999). Keeping in mind that these two methods may produce very different results, the user should be aware of its great sensitivity to outliers when choosing the moment matching estimation. This may be seen as an advantage in our example if the objective is to better describe the right tail of the distribution, but it may be seen as a drawback if the objective is different.
Fitting of a parametric distribution may also be done by matching theoretical quantiles of the parametric distributions (for specified probabilities) against the empirical quantiles (Tse 2009). The equality of theoretical and empirical quantiles is expressed by Equation (3.3) below, which is very similar to Equations (3.1) and (3.2):
\[\begin{equation} F^{-1}(p_{k}|\theta)=Q_{n,p_{k}}\tag{3.3} \end{equation}\] for \(k=1,\ldots,d\), with \(d\) the number of parameters to estimate (dimension of \(\theta\) if there is no fixed parameters) and \(Q_{n,p_{k}}\) the empirical quantiles calculated from data for specified probabilities \(p_{k}\).
Quantile matching estimation (QME) is performed by setting the argument method
to "qme"
in the call to fitdist
and adding an argument probs
defining the probabilities for which the quantile matching is performed (see Figure 3.3).
The length of this vector must be equal to the number of parameters to estimate (as the vector of moment orders for MME).
Empirical quantiles are computed using the quantile
function of the stats package using type=7
by default (see ?quantile
and Hyndman and Fan (1996)).
But the type of quantile can be easily changed by using the qty
argument in the call to the qme
function.
The quantile matching is carried out numerically, by minimizing the sum of squared differences between observed and theoretical quantiles.
fitdist(danishuni$Loss, "lnorm", method = "qme", probs = c(1/3, 2/3))
fdanish.ln.QME1 <- fitdist(danishuni$Loss, "lnorm", method = "qme", probs = c(8/10, 9/10))
fdanish.ln.QME2 <-cdfcomp(list(fdanish.ln.MLE, fdanish.ln.QME1, fdanish.ln.QME2),
legend = c("MLE", "QME(1/3, 2/3)", "QME(8/10, 9/10)"),
main = "Fitting a lognormal distribution", xlogscale = TRUE, datapch = 20)
Above is an example of fitting of a lognormal distribution to `danishuni} data set by matching probabilities \((p_1= 1/3, p_2=2/3)\) and \((p_1= 8/10, p_2=9/10)\). As expected, the second QME fit gives more weight to the right-tail of the distribution. Compared to the maximum likelihood estimation, the second QME fit best suits the right-tail of the distribution, whereas the first QME fit best models the body of the distribution. The quantile matching estimation is of particular interest when we need to focus around particular quantiles, e.g., \(p=99.5\%\) in the Solvency II insurance context or \(p=5\%\) for the HC5 estimation in the ecotoxicology context.
Each time a numerical minimization is carried out in the fitdistrplus
package, the optim
function of the stats package is used by default with the Nelder-Mead
method for distributions characterized by more than one parameter and the BFGS
method for distributions characterized by only one parameter.
Sometimes the default algorithm fails to converge.
It is then interesting to change some options of the optim
function or to use another optimization function than optim
to minimize the objective function.
The argument optim.method
can be used in the call to fitdist
or fitdistcens
.
It will internally be passed to mledist
, mmedist
, mgedist
or qmedist
, and to optim
(see ?optim
for details about the different algorithms available).
Even if no error is raised when computing the optimization, changing the algorithm is of particular interest to enforce bounds on some parameters.
For instance, a volatility parameter \(\sigma\) is strictly positive \(\sigma>0\) and a probability parameter \(p\) lies in \(p\in [0,1]\).
This is possible by using arguments lower
and/or upper
, for which their use automatically forces optim.method="L-BFGS-B"
.
Below are examples of fits of a gamma distribution \(\mathcal{G}(\alpha, \lambda)\) to the groundbeef
data set with various algorithms.
Note that the conjugate gradient algorithm (CG
) needs far more iterations to converge (around 2500 iterations) compared to other algorithms (converging in less than 100 iterations).
data("groundbeef")
fitdist(groundbeef$serving, "gamma", optim.method = "Nelder-Mead")
fNM <- fitdist(groundbeef$serving, "gamma", optim.method = "BFGS")
fBFGS <- fitdist(groundbeef$serving, "gamma", optim.method = "SANN")
fSANN <- try(fitdist(groundbeef$serving, "gamma", optim.method = "CG",
fCG <-control = list(maxit = 10000)))
if(inherits(fCG, "try-error")) {fCG <- list(estimate = NA)}
It is also possible to use another function than optim
to minimize the objective function by specifying by the argument custom.optim
in the call to fitdist
.
It may be necessary to customize this optimization function to meet the following requirements.
(1) custom.optim
function must have the following arguments: fn
for the function to be optimized and par
for the initialized parameters.
(2) custom.optim
should carry out a MINIMIZATION and must return the following components: par
for the estimate, convergence
for the convergence code, value=fn(par)
and hessian
.
Below is an example of code written to wrap the genoud
function from the rgenoud package in order to respect our optimization ``template’’.
The rgenoud package implements the genetic (stochastic) algorithm.
function(fn, par, ...)
mygenoud <-
{require(rgenoud)
genoud(fn, starting.values = par, ...)
res <- c(res, convergence = 0)
standardres <-return(standardres)
}
The customized optimization function can then be passed as the argument custom.optim
in the call to fitdist
or fitdistcens
.
The following code can for example be used to fit a gamma distribution to the groundbeef
data set.
Note that in this example various arguments are also passed from fitdist
to genoud
: nvars
, Domains
, boundary.enforcement
, print.level
and hessian
.
The code below compares all the parameter estimates (\(\hat\alpha\), \(\hat\lambda\)) by the different algorithms: shape \(\alpha\) and rate \(\lambda\) parameters are relatively similar on this example, roughly 4.00 and 0.05, respectively.
mledist(groundbeef$serving, "gamma", custom.optim = mygenoud, nvars = 2,
fgenoud <-max.generations = 10, Domains = cbind(c(0, 0), c(10, 10)),
boundary.enforcement = 1, hessian = TRUE, print.level = 0, P9 = 10)
## Le chargement a nécessité le package : rgenoud
## ## rgenoud (Version 5.9-0.10, Build Date: 2023-12-13)
## ## See http://sekhon.berkeley.edu/rgenoud for additional documentation.
## ## Please cite software as:
## ## Walter Mebane, Jr. and Jasjeet S. Sekhon. 2011.
## ## ``Genetic Optimization Using Derivatives: The rgenoud package for R.''
## ## Journal of Statistical Software, 42(11): 1-26.
## ##
cbind(NM = fNM$estimate, BFGS = fBFGS$estimate, SANN = fSANN$estimate, CG = fCG$estimate,
fgenoud = fgenoud$estimate)
## NM BFGS SANN CG fgenoud
## shape 3.99526 3.93869 3.98110 4.12797 4.00833
## rate 0.05424 0.05349 0.05402 0.05605 0.05443
This section was modified since the publication of this vignette in the Journal of Statistical Software in order to include new goodness-of-fit plots for censored and discrete data.
Analytical methods often lead to semi-quantitative results which are referred to as censored data. Observations only known to be under a limit of detection are left-censored data. Observations only known to be above a limit of quantification are right-censored data. Results known to lie between two bounds are interval-censored data. These two bounds may correspond to a limit of detection and a limit of quantification, or more generally to uncertainty bounds around the observation. Right-censored data are also commonly encountered with survival data (Klein and Moeschberger 2003). A data set may thus contain right-, left-, or interval-censored data, or may be a mixture of these categories, possibly with different upper and lower bounds. Censored data are sometimes excluded from the data analysis or replaced by a fixed value, which in both cases may lead to biased results. A more recommended approach to correctly model such data is based upon maximum likelihood (Klein and Moeschberger 2003, @helsel05).
Censored data may thus contain left-censored, right-censored and interval-censored values, with several lower and upper bounds.
Before their use in package fitdistrplus, such data must be coded into a dataframe with two columns, respectively named left
and right
, describing each observed value as an interval.
The left
column contains either NA
for left censored observations, the left bound of the interval for interval censored observations, or the observed value for non-censored observations.
The right
column contains either NA
for right censored observations, the right bound of the interval for interval censored observations, or the observed value for non-censored observations.
To illustrate the use of package fitdistrplus to fit distributions to censored continous data, we will use another data set from ecotoxicology, included in our package and named salinity
.
This data set contains acute salinity tolerance (LC50 values in electrical conductivity, \(mS\).\(cm^{-1}\)) of riverine macro-invertebrates taxa from the southern Murray-Darling Basin in Central Victoria, Australia (Kefford et al. 2007).
data("salinity")
str(salinity)
## 'data.frame': 108 obs. of 2 variables:
## $ left : num 20 20 20 20 20 21.5 15 20 23.7 25 ...
## $ right: num NA NA NA NA NA 21.5 30 25 23.7 NA ...
Using censored data such as those coded in the salinity} data set, the empirical distribution can be plotted using the
plotdistcens} function.
In older versions of the package, by default this function used the Expectation-Maximization approach of Turnbull (n.d.) to compute the overall empirical cdf curve with optional confidence intervals, by calls to survfit
and plot.survfit
functions from the survival package.
Even if this representation is always available (by fixing the argument NPMLE.method
to "Turnbull.middlepoints"
), now the default plot of the empirical cumulative distribution function (ECDF) explicitly represents the regions of non uniqueness of the NPMLE ECDF.
The default computation of those regions of non uniqueness and their associated masses uses the non parametric maximum likelihood estimation (NPMLE) approach developped by Wang (Wang 2007, @Wang2008, @Wang2013, @Wang2018).
Figure 3.5 shows on the top left the new plot of data together with two fitted distributions.
Grey filled rectangles in such a plot represent the regions of non uniqueness of the NPMLE ECDF.
A less rigorous but sometimes more illustrative plot can be obtained by fixing the argument NPMLE
to FALSE
in the call to plotdistcens
(see Figure 3.4 for an example and the help page of Function plotdistcens
for details).
This plot enables to see the real nature of censored data, as points and intervals, but the difficulty in building such a plot is to define a relevant ordering of observations.
plotdistcens(salinity, NPMLE = FALSE)
As for non censored data, one or more parametric distributions can be fitted to the censored data set, one at a time, but using in this case the fitdistcens
function.
This function estimates the vector of distribution parameters \(\theta\) by maximizing the likelihood for censored data defined as:
\[\begin{equation} L(\theta) = \prod_{i=1}^{N_{nonC}} f(x_{i}|\theta)\times \prod_{j=1}^{N_{leftC}} F(x^{upper}_{j}|\theta) \\ \times \prod_{k=1}^{N_{rightC}} (1- F(x^{lower}_{k}|\theta))\times \prod_{m=1}^{N_{intC}} (F(x^{upper}_{m}|\theta)- F(x^{lower}_{j}|\theta))\tag{3.4} \end{equation}\]
with \(x_{i}\) the \(N_{nonC}\) non-censored observations, \(x^{upper}_{j}\) upper values defining the \(N_{leftC}\) left-censored observations, \(x^{lower}_{k}\) lower values defining the \(N_{rightC}\) right-censored observations, \([x^{lower}_{m} ; x^{upper}_{m}]\) the intervals defining the \(N_{intC}\) interval-censored observations, and F the cumulative distribution function of the parametric distribution (Klein and Moeschberger 2003, @helsel05).
As fitdist
, fitdistcens
returns the results of the fit of any parametric distribution to a data set as an S3 class object that can be easily printed, summarized or plotted.
For the salinity
data set, a lognormal distribution or a loglogistic can be fitted as commonly done in ecotoxicology for such data.
As with fitdist
, for some distributions (see Delignette-Muller et al. (2014) for details), it is necessary to specify initial values for the distribution parameters in the argument start
.
The plotdistcens
function can help to find correct initial values for the distribution parameters in non trivial cases, by a manual iterative use if necessary.
fitdistcens(salinity, "lnorm")
fsal.ln <- fitdistcens(salinity, "llogis", start = list(shape = 5, scale = 40))
fsal.ll <-summary(fsal.ln)
## Fitting of the distribution ' lnorm ' By maximum likelihood on censored data
## Parameters
## estimate Std. Error
## meanlog 3.3854 0.06487
## sdlog 0.4961 0.05455
## Loglikelihood: -139.1 AIC: 282.1 BIC: 287.5
## Correlation matrix:
## meanlog sdlog
## meanlog 1.0000 0.2938
## sdlog 0.2938 1.0000
summary(fsal.ll)
## Fitting of the distribution ' llogis ' By maximum likelihood on censored data
## Parameters
## estimate Std. Error
## shape 3.421 0.4158
## scale 29.930 1.9447
## Loglikelihood: -140.1 AIC: 284.1 BIC: 289.5
## Correlation matrix:
## shape scale
## shape 1.0000 -0.2022
## scale -0.2022 1.0000
Computations of goodness-of-fit statistics have not yet been developed for fits using censored data but the quality of fit can be judged using Akaike and Schwarz’s Bayesian information criteria (AIC and BIC) and the goodness-of-fit CDF plot, respectively provided when summarizing or plotting an object of class fitdistcens
.
Functions cdfcompcens
, qqcompcens
and ppcompcens
can also be used to compare the fit of various distributions to the same censored data set.
Their calls are similar to the ones of cdfcomp
, qqcomp
and ppcomp
.
Below are examples of use of those functions with the two fitted distributions to the salinity
data set (see Figure 3.5).
When qqcompcens
and ppcompcens
are used with more than one fitted distribution, the non uniqueness rectangles are not filled and a small noise is added on the y-axis in order to help the visualization of various fits.
But we rather recommend the use of the plotstyle
ggplot
of qqcompcens
and ppcompcens
to compare the fits of various distributions as it provides a clearer plot splitted in facets (see ?graphcompcens
).
par(mfrow = c(2, 2))
cdfcompcens(list(fsal.ln, fsal.ll), legendtext = c("lognormal", "loglogistic "))
qqcompcens(fsal.ln, legendtext = "lognormal")
ppcompcens(fsal.ln, legendtext = "lognormal")
qqcompcens(list(fsal.ln, fsal.ll), legendtext = c("lognormal", "loglogistic "),
main = "Q-Q plot with 2 dist.")
Function bootdistcens
is the equivalent of bootdist
for censored data, except that it only proposes nonparametric bootstrap.
Indeed, it is not obvious to simulate censoring within a parametric bootstrap resampling procedure.
The generic function quantile
can also be applied to an object of class fitdistcens
or bootdistcens
, as for continuous non-censored data.
In addition to the fit of distributions to censored or non censored continuous data, our package can also accomodate discrete variables, such as count numbers, using the functions developped for continuous non-censored data.
These functions will provide somewhat different graphs and statistics, taking into account the discrete nature of the modeled variable.
The discrete nature of the variable is automatically recognized when a classical distribution is fitted to data (binomial, negative binomial, geometric, hypergeometric and Poisson distributions) but must be indicated by fixing argument discrete
to TRUE
in the call to functions in other cases.
The toxocara
data set included in the package corresponds to the observation of such a discrete variable.
Numbers of Toxocara cati parasites present in digestive tract are reported from a random sampling of feral cats living on Kerguelen island (Fromont et al., n.d.).
We will use it to illustrate the case of discrete data.
data("toxocara")
str(toxocara)
## 'data.frame': 53 obs. of 1 variable:
## $ number: int 0 0 0 0 0 0 0 0 0 0 ...
The fit of a discrete distribution to discrete data by maximum likelihood estimation requires the same procedure as for continuous non-censored data.
As an example, using the toxocara
data set, Poisson and negative binomial distributions can be easily fitted.
fitdist(toxocara$number, "pois")) (ftoxo.P <-
## Fitting of the distribution ' pois ' by maximum likelihood
## Parameters:
## estimate Std. Error
## lambda 8.679 0.4047
fitdist(toxocara$number, "nbinom")) (ftoxo.nb <-
## Fitting of the distribution ' nbinom ' by maximum likelihood
## Parameters:
## estimate Std. Error
## size 0.3971 0.08289
## mu 8.6803 1.93501
For discrete distributions, the plot of an object of class fitdist
simply provides two goodness-of-fit plots comparing empirical and theoretical distributions in density and in CDF.
Functions cdfcomp
and denscomp
can also be used to compare several plots to the same data set, as follows for the previous fits (Figure 3.6).
par(mfrow = c(1, 2))
denscomp(list(ftoxo.P, ftoxo.nb), legendtext = c("Poisson", "negative binomial"), fitlty = 1)
cdfcomp(list(ftoxo.P, ftoxo.nb), legendtext = c("Poisson", "negative binomial"), fitlty = 1)
When fitting discrete distributions, the Chi-squared statistic is computed by the gofstat
function using cells defined by the argument chisqbreaks
or cells automatically defined from the data in order to reach roughly the same number of observations per cell.
This number is roughly equal to the argument meancount
, or sligthly greater if there are some ties.
The choice to define cells from the empirical distribution (data), and not from the theoretical distribution, was done to enable the comparison of Chi-squared values obtained with different distributions fitted on a same data set.
If arguments chisqbreaks
and meancount
are both omitted, meancount
is fixed in order to obtain roughly \((4n)^{2/5}\) cells, with \(n\) the length of the data set (Vose 2010).
Using this default option the two previous fits are compared as follows, giving the preference to the negative binomial distribution, from both Chi-squared statistics and information criteria:
gofstat(list(ftoxo.P, ftoxo.nb), fitnames = c("Poisson", "negative binomial"))
## Chi-squared statistic: 31257 7.486
## Degree of freedom of the Chi-squared distribution: 5 4
## Chi-squared p-value: 0 0.1123
## the p-value may be wrong with some theoretical counts < 5
## Chi-squared table:
## obscounts theo Poisson theo negative binomial
## <= 0 14 0.009014 15.295
## <= 1 8 0.078237 5.809
## <= 3 6 1.321767 6.845
## <= 4 6 2.131298 2.408
## <= 9 6 29.827829 7.835
## <= 21 6 19.626224 8.271
## > 21 7 0.005631 6.537
##
## Goodness-of-fit criteria
## Poisson negative binomial
## Akaike's Information Criterion 1017 322.7
## Bayesian Information Criterion 1019 326.6
The R package fitdistrplus allows to easily fit distributions. Our main objective while developing this package was to provide tools for helping R users to fit distributions to data. We have been encouraged to pursue our work by feedbacks from users of our package in various areas as food or environmental risk assessment, epidemiology, ecology, molecular biology, genomics, bioinformatics, hydraulics, mechanics, financial and actuarial mathematics or operations research. Indeed, this package is already used by a lot of practionners and academics for simple MLE fits (Jaloustre et al. 2011, @saketal11, @kochetal12, @marquetouxetal12, @scholletal12, @suuronenetal12, @varoetal12, @mandletal13, @mala2013publi, @nadarajahbakar2013, @simoetal13, @westphalfitch13, @wayland13, @vianaetal13, @wu13, @staggeetal13, @fiorellietal13, @tikoleetal13, @voigtetal14), for MLE fits and goodness-of-fit statistics (Tarnczi, Fenyves, and Bcs 2011, @bagariaetal12, @benavidesetal12, @breitbach12, @Pouillot10, @vaninsky13), for MLE fits and bootstrap (Croucher et al. 2012, @meheustetal12, @orellanoetal12, @telloetal12, @hoelzeretal12, @prosseretal13, @Zhang2013, @Rigaux2014), for MLE fits, bootstrap and goodness-of-fit statistics (Larras, Montuelle, and Bouchez 2013), for MME fit (Luangkesorn et al. 2012, @callauetal13, @satoetal13), for censored MLE and bootstrap (Leha, Beissbarth, and Jung 2011, @poulliotetal12, @jongenburgeretal12, @commeauetal12, @contrerasetal2013), for graphic analysing in (Anand, Yeturu, and Chandra 2012), for grouped-data fitting methods (Fu, Steiner, and Costafreda 2012) or more generally (Busschaert et al. 2010, @eling12, @sosaetal2013, @srinivasanetal2013, @meyeretal13, @Guillier2013471, @Daelmanetal13, @eiketal13, @Wu2013b, @drakeetal2014).
The fitdistrplus package is complementary with the distrMod package (Kohl and Ruckdeschel 2010).
distrMod provides an even more flexible way to estimate distribution parameters but its use requires a greater initial investment to learn how to manipulate the S4 classes and methods developed in the distr
-family packages.
Many extensions of the fitdistrplus package are planned in the future: we target to extend to censored data some methods for the moment only available for non-censored data, especially concerning goodness-of-fit evaluation and fitting methods. We will also enlarge the choice of fitting methods for non-censored data, by proposing new goodness-of-fit distances (e.g., distances based on quantiles) for maximum goodness-of-fit estimation and new types of moments (e.g., limited expected values) for moment matching estimation. At last, we will consider the case of multivariate distribution fitting.
The package would not have been at this stage without the stimulating contribution of Régis Pouillot and Jean-Baptiste Denis, especially for its conceptualization. We also want to thank Régis Pouillot for his very valuable comments on the first version of this paper.
The authors gratefully acknowledges the two anonymous referees and the Editor for useful and constructive comments. The remaining errors, of course, should be attributed to the authors alone.
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The plotdist
function can plot any parametric distribution with specified parameter values in argument para
. It can thus help to find correct initial values for the distribution parameters in non trivial cases, by iterative calls if necessary (see the reference
manual for examples (Delignette-Muller et al. 2014)).↩︎
That is what the B stands for.↩︎
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.