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fitdistrplus: An R Package for Fitting Distributions

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  • Delignette-Muller, Marie Laure
  • Dutang, Christophe

Abstract

The package fitdistrplus provides functions for fitting univariate distributions to different types of data (continuous censored or non-censored data and discrete data) and allowing different estimation methods (maximum likelihood, moment matching, quantile matching and maximum goodness-of-fit estimation). Outputs of fitdist and fitdistcens functions are S3 objects, for which specific methods are provided, including summary, plot and quantile. This package also provides various functions to compare the fit of several distributions to the same data set and can handle to bootstrap parameter estimates. Detailed examples are given in food risk assessment, ecotoxicology and insurance contexts.

Suggested Citation

  • Delignette-Muller, Marie Laure & Dutang, Christophe, 2015. "fitdistrplus: An R Package for Fitting Distributions," Journal of Statistical Software, Foundation for Open Access Statistics, vol. 64(i04).
  • Handle: RePEc:jss:jstsof:v:064:i04
    DOI: http://hdl.handle.net/10.18637/jss.v064.i04
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    References listed on IDEAS

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