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Lithopsian (talk | contribs) rephrase the second sentence since "they" is ambiguous and appears grammatically to refer to the inventors rather than the QPDs themselves |
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== History ==
The development of quantile-parameterized distributions was inspired by the practical need for flexible continuous probability distributions that are easy to fit to data. Historically, the [[Pearson distribution|Pearson]]<ref>Johnson NL, Kotz S, Balakrishnan N. Continuous univariate distributions, Vol 1, Second Edition, John Wiley & Sons, Ltd, 1994, pp. 15–25.</ref> and [[Norman Lloyd Johnson|Johnson]]<ref>
For example, the [[beta distribution]] is a flexible Pearson distribution that is frequently used to model percentages of a population. However, if the characteristics of this population are such that the desired [[cumulative distribution function]] (CDF) should run through certain specific CDF points, there may be no beta distribution that meets this need. Because the beta distribution has only two shape parameters, it cannot, in general, match even three specified CDF points. Moreover, the beta parameters that best fit such data can be found only by nonlinear iterative methods.
Practitioners of [[decision analysis]], needing distributions easily parameterized by three or more CDF points (e.g., because such points were specified as the result of an [[Expert elicitation|expert-elicitation process]]), originally invented quantile-parameterized distributions for this purpose. Keelin and Powley (2011)<ref name="KeelinPowley">
== Definition ==
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=== Shape flexibility ===
A QPD with <math>n</math> terms, where <math>n\ge 2</math>, has <math>n-2</math> shape parameters. Thus, QPDs can be far more flexible than the [[Pearson distribution]]s, which have at most two shape parameters. For example, ten-term [[metalog distribution]]s parameterized by 105 CDF points from 30 traditional source distributions (including normal, student-t, lognormal, gamma, beta, and extreme value) have been shown to approximate each such source distribution within a [[Kolmogorov–Smirnov test|K–S]] distance of 0.001 or less.<ref>
=== Transformations ===
QPD transformations are governed by a general property of quantile functions: for any [[quantile function]] <math>x=Q(y)</math> and increasing function <math>t(x), x=t^{-1} (Q(y))</math> is a [[quantile function]].<ref>Gilchrist, W., 2000. Statistical modelling with quantile functions. CRC Press.</ref> For example, the [[quantile function]] of the [[normal distribution]], <math>x=\mu+\sigma \Phi^{-1} (y)</math>, is a QPD by the Keelin and Powley definition. The natural logarithm, <math>t(x)=\ln(x-b_l)</math>, is an increasing function, so <math>x=b_l+e^{\mu+\sigma \Phi^{-1} (y)}</math> is the [[quantile function]] of the [[Log-normal distribution|lognormal distribution]] with lower bound <math>b_l</math>. Importantly, this transformation converts an unbounded QPD into a semi-bounded QPD. Similarly, applying this log transformation to the [[Metalog distribution#Unbounded,_semibounded,_and_bounded_metalog_distributions|unbounded metalog distribution]]<ref name="UnboundedMetalog">
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* The [[Metalog distribution#Unbounded,_semibounded,_and_bounded_metalog_distributions|semi-bounded and bounded metalog distributions]], which are the log and logit transforms, respectively, of the unbounded metalog distribution.
* The [[Metalog distribution#SPT_metalog_distributions|SPT (symmetric-percentile triplet) unbounded, semi-bounded, and bounded metalog distributions]], which are parameterized by three CDF points and optional upper and lower bounds.
* The Simple Q-Normal distribution<ref>
* The metadistributions, including the meta-normal<ref>
* Quantile functions expressed as [[polynomial]] functions of cumulative probability <math>y</math>, including [[Chebyshev polynomial]] functions.
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