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A new flexible generalized family for constructing many families of distributions.

Muhammad H TahirM Adnan HussainGauss Moutinho Cordeiro
Published in: Journal of applied statistics (2021)
We propose a new flexible generalized family (NFGF) for constructing many families of distributions. The importance of the NFGF is that any baseline distribution can be chosen and it does not involve any additional parameters. Some useful statistical properties of the NFGF are determined such as a linear representation for the family density, analytical shapes of the density and hazard rate, random variable generation, moments and generating function. Further, the structural properties of a special model named the new flexible Kumaraswamy (NFKw) distribution, are investigated, and the model parameters are estimated by maximum-likelihood method. A simulation study is carried out to assess the performance of the estimates. The usefulness of the NFKw model is proved empirically by means of three real-life data sets. In fact, the two-parameter NFKw model performs better than three-parameter transmuted-Kumaraswamy, three-parameter exponentiated-Kumaraswamy and the well-known two-parameter Kumaraswamy models.
Keyphrases
  • machine learning
  • mass spectrometry
  • artificial intelligence
  • big data
  • liquid chromatography
  • neural network
  • single molecule