From Wikipedia, the free encyclopedia
Matrix-exponential
Parameters α, T, s
Support x ∈ [0, ∞)
PDF α ex Ts
CDF 1 + αexTT−1s

In probability theory, the matrix-exponential distribution is an absolutely continuous distribution with rational Laplace–Stieltjes transform. [1] They were first introduced by David Cox in 1955 as distributions with rational Laplace–Stieltjes transforms. [2]

The probability density function is (and 0 when x < 0), and the cumulative distribution function is [3] where 1 is a vector of 1s and

There are no restrictions on the parameters α, T, s other than that they correspond to a probability distribution. [4] There is no straightforward way to ascertain if a particular set of parameters form such a distribution. [2] The dimension of the matrix T is the order of the matrix-exponential representation. [1]

The distribution is a generalisation of the phase-type distribution.

Moments

If X has a matrix-exponential distribution then the kth moment is given by [2]

Fitting

Matrix exponential distributions can be fitted using maximum likelihood estimation. [5]

Software

See also

References

  1. ^ a b Asmussen, S. R.; o’Cinneide, C. A. (2006). "Matrix-Exponential Distributions". Encyclopedia of Statistical Sciences. doi: 10.1002/0471667196.ess1092.pub2. ISBN  0471667196.
  2. ^ a b c Bean, N. G.; Fackrell, M.; Taylor, P. (2008). "Characterization of Matrix-Exponential Distributions". Stochastic Models. 24 (3): 339. doi: 10.1080/15326340802232186.
  3. ^ "Tools for Phase-Type Distributions (butools.ph) — butools 2.0 documentation". webspn.hit.bme.hu. Retrieved 2022-04-16.
  4. ^ He, Q. M.; Zhang, H. (2007). "On matrix exponential distributions". Advances in Applied Probability. 39. Applied Probability Trust: 271–292. doi: 10.1239/aap/1175266478.
  5. ^ Fackrell, M. (2005). "Fitting with Matrix-Exponential Distributions". Stochastic Models. 21 (2–3): 377. doi: 10.1081/STM-200056227.


From Wikipedia, the free encyclopedia
Matrix-exponential
Parameters α, T, s
Support x ∈ [0, ∞)
PDF α ex Ts
CDF 1 + αexTT−1s

In probability theory, the matrix-exponential distribution is an absolutely continuous distribution with rational Laplace–Stieltjes transform. [1] They were first introduced by David Cox in 1955 as distributions with rational Laplace–Stieltjes transforms. [2]

The probability density function is (and 0 when x < 0), and the cumulative distribution function is [3] where 1 is a vector of 1s and

There are no restrictions on the parameters α, T, s other than that they correspond to a probability distribution. [4] There is no straightforward way to ascertain if a particular set of parameters form such a distribution. [2] The dimension of the matrix T is the order of the matrix-exponential representation. [1]

The distribution is a generalisation of the phase-type distribution.

Moments

If X has a matrix-exponential distribution then the kth moment is given by [2]

Fitting

Matrix exponential distributions can be fitted using maximum likelihood estimation. [5]

Software

See also

References

  1. ^ a b Asmussen, S. R.; o’Cinneide, C. A. (2006). "Matrix-Exponential Distributions". Encyclopedia of Statistical Sciences. doi: 10.1002/0471667196.ess1092.pub2. ISBN  0471667196.
  2. ^ a b c Bean, N. G.; Fackrell, M.; Taylor, P. (2008). "Characterization of Matrix-Exponential Distributions". Stochastic Models. 24 (3): 339. doi: 10.1080/15326340802232186.
  3. ^ "Tools for Phase-Type Distributions (butools.ph) — butools 2.0 documentation". webspn.hit.bme.hu. Retrieved 2022-04-16.
  4. ^ He, Q. M.; Zhang, H. (2007). "On matrix exponential distributions". Advances in Applied Probability. 39. Applied Probability Trust: 271–292. doi: 10.1239/aap/1175266478.
  5. ^ Fackrell, M. (2005). "Fitting with Matrix-Exponential Distributions". Stochastic Models. 21 (2–3): 377. doi: 10.1081/STM-200056227.



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