| EMG | 
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| Probability density function | 
| Cumulative distribution function | 
| Parameters | μ ∈ R — mean of Gaussian component σ2 > 0 — variance of Gaussian component
 λ > 0 — rate of exponential component
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| Support | x ∈ R | 
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| PDF | ![{\displaystyle {\frac {\lambda }{2}}\exp \left[{\frac {\lambda }{2}}(2\mu +\lambda \sigma ^{2}-2x)\right]\operatorname {erfc} \left({\frac {\mu +\lambda \sigma ^{2}-x}{{\sqrt {2}}\sigma }}\right)}](./5e1a3fd847e9a021c38a3bf86630607608c7b703.svg) | 
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| CDF | ![{\displaystyle \Phi (x,\mu ,\sigma )-{\frac {1}{2}}\exp \left[{\frac {\lambda }{2}}(2\mu +\lambda \sigma ^{2}-2x)\right]\operatorname {erfc} \left({\frac {\mu +\lambda \sigma ^{2}-x}{{\sqrt {2}}\sigma }}\right)}](./132116643f9f9ca239cd804551cd3d1448354f2b.svg)  where
 
  is the CDF of a Gaussian distribution | 
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| Mean |  | 
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| Mode | 
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| Variance |  | 
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| Skewness |  | 
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| Excess kurtosis |  | 
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| MGF |  | 
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| CF |  | 
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In probability theory, an exponentially modified Gaussian distribution (EMG, also known as exGaussian distribution) describes the sum of  independent normal and exponential random variables. An exGaussian random variable Z may be expressed as Z = X + Y, where X and Y are independent, X is Gaussian with mean μ and variance σ2, and Y is exponential of rate λ. It has a characteristic positive skew from the exponential component.
It may also be regarded as a weighted function of a shifted exponential with the weight being a function of the normal distribution.