Difference between revisions of "Gamma distribution"

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[[category:Semi-bounded distributions]]
 
[[category:Semi-bounded distributions]]
 
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[[category:Unimodal distributions]]
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[[category:Univariate distributions]]
  
== Gamma(alpha'', beta'') ==
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The [[Gamma distribution]] is a [[:category:Continuous distributions|continuous]], [[:category:Semi-bounded distributions|positive-only]], [[:category:Unimodal distributions|unimodal]] distribution that encodes the time required for «alpha» events to occur in a [[Poisson]] process with mean arrival time of «beta»
  
Creates a gamma distribution with shape parameter «alpha» and scale parameter «beta». The scale parameter, «beta», is optional and defaults to <code>beta = 1</code>. The gamma distribution is bounded below by zero (all sample points are positive) and is unbounded from above. It has a theoretical mean of <code>alpha*beta</code> and a theoretical variance of <code>alpha*beta^2</code>.
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<center>[[image:Gamma(7,10).png]]</center>
  
When «alpha» > 1, the distribution is unimodal with the mode at <code>(alpha - 1)*beta</code>. An exponential distribution results when <code>alpha = 1</code>. As <math>\alpha \to \infty</math> , the gamma distribution approaches a normal distribution in shape.
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The gamma distribution is bounded below by zero (all sample points are positive) and is unbounded from above. It has a theoretical mean of <code>alpha*beta</code> and a theoretical variance of <code>alpha*beta^2</code>. When «alpha» > 1, the distribution is unimodal with the mode at <code>(alpha - 1)*beta</code>. An exponential distribution results when <code>alpha = 1</code>. As <math>\alpha \to \infty</math> , the gamma distribution approaches a normal distribution in shape.
  
The gamma distribution encodes the time required for «alpha» events to occur in a [[Poisson]] process with mean arrival time of «beta».
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== Functions ==
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; Note:
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Some textbooks use <code>Rate = 1/beta</code>, instead of «beta», as the scale parameter.
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=== Gamma(alpha'', beta, over'') ===
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The distribution function. Use this to describe a quantity that is gamma-distributed with shape parameter «alpha» and scale parameter «beta». The scale parameter, «beta», is optional and defaults to <code>beta = 1</code>.  
  
===Note===
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=== <div id="DensGamma">Dens{{Release||5.1|_}}Gamma(x, alpha'', beta'')</div> ===
Some textbooks use <code>Rate = 1/beta</code>, instead of «beta», as the scale parameter.
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{{Release||5.1|To use this, you need to add the [[Distribution Densities Library]] to your model. }}
  
The probability density of the [[Gamma]] distribution is
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The analytic probability density of the [[Gamma]] distribution at «x». Returns
  
 
:<math>p(x) = {{\beta^{-\alpha} x^{\alpha-1} \exp(-x/\beta)}\over{\Gamma(\alpha)}}</math>
 
:<math>p(x) = {{\beta^{-\alpha} x^{\alpha-1} \exp(-x/\beta)}\over{\Gamma(\alpha)}}</math>
  
If you need to compute the density, use the [[Dens_Gamma]](x, alpha, beta) function from the <code>"Distribution Densities.ana"</code> library. For the cumulative probability, use the [[GammaI]](x, a, b) function.
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=== <div id="CumGamma">CumGamma(x, alpha'', beta'')</div> ===
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{{Release||5.1|To use this, you need to add the [[Distribution Densities Library]] to your model, or use [[GammaI]] instead. }}
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The cumulative density up to «x».
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=== <div id="CumGammaInv">CumGammaInv(p, alpha'', beta'')</div> ===
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{{Release||5.1|To use this, you need to add the [[Distribution Densities Library]] to your model, or use [[GammaIInv]] instead. }}
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The inverse cumulative probability function (quantile function).
  
 
== When to use ==
 
== When to use ==
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a positive-only quantity.
 
a positive-only quantity.
  
== Library ==
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== Statistics ==
Distribution
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== Parameter Estimation ==
 
== Parameter Estimation ==

Revision as of 21:33, 10 October 2018


The Gamma distribution is a continuous, positive-only, unimodal distribution that encodes the time required for «alpha» events to occur in a Poisson process with mean arrival time of «beta»

Gamma(7,10).png

The gamma distribution is bounded below by zero (all sample points are positive) and is unbounded from above. It has a theoretical mean of alpha*beta and a theoretical variance of alpha*beta^2. When «alpha» > 1, the distribution is unimodal with the mode at (alpha - 1)*beta. An exponential distribution results when alpha = 1. As [math]\displaystyle{ \alpha \to \infty }[/math] , the gamma distribution approaches a normal distribution in shape.

Functions

Note

Some textbooks use Rate = 1/beta, instead of «beta», as the scale parameter.

Gamma(alpha, beta, over)

The distribution function. Use this to describe a quantity that is gamma-distributed with shape parameter «alpha» and scale parameter «beta». The scale parameter, «beta», is optional and defaults to beta = 1.

Dens_Gamma(x, alpha, beta)

To use this, you need to add the Distribution Densities Library to your model.

The analytic probability density of the Gamma distribution at «x». Returns

[math]\displaystyle{ p(x) = {{\beta^{-\alpha} x^{\alpha-1} \exp(-x/\beta)}\over{\Gamma(\alpha)}} }[/math]

CumGamma(x, alpha, beta)

To use this, you need to add the Distribution Densities Library to your model, or use GammaI instead.

The cumulative density up to «x».

CumGammaInv(p, alpha, beta)

To use this, you need to add the Distribution Densities Library to your model, or use GammaIInv instead.

The inverse cumulative probability function (quantile function).

When to use

Use the Gamma distribution with «alpha» > 1 if you have a sharp lower bound of zero but no sharp upper bound, a single mode, and a positive skew. The LogNormal distribution is also an option in this case. Gamma() is especially appropriate when encoding arrival times for sets of events. A gamma distribution with a large value for «alpha» is also useful when you wish to use a bell-shaped curve for a positive-only quantity.

Statistics

Parameter Estimation

Suppose X contains sampled historical data indexed by I. To estimate the parameters of the gamma distribution that best fits this sampled data, the following parameter estimation formulae can be used:

alpha := Mean(X, I)^2/Variance(X, I)
beta := Variance(X, I)/Mean(X, I)

The above is not the maximum likelihood parameter estimation, which turns out to be rather complex (see Wikipedia). However, in practice the above estimation formula perform excellently and are so convenient that more complicated methods are hardly justified.

The Gamma distribution with an «offset» has the form:

Gamma(alpha, beta) - offset

To estimate all three parameters, the following heuristic estimation can be used:

alpha := 4/Skewness(X, I)^2
offset := Mean(X, I) - SDeviation(X, I)*Sqrt(alpha)
beta := Variance(X, I)/(Mean(X, I) - offset)

See Also

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