| Dirichlet distribution | 
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| Probability density function | 
| Parameters |  number of categories (integer) 
  concentration parameters, where  | 
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| Support |  where ![{\displaystyle x_{i}\in [0,1]}](./a32830173af0dc0eaf16f580cc75ef2f78b4f15e.svg) and   (i.e. a
  simplex) | 
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| PDF |  where
  where
  | 
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| Mean | ![{\displaystyle \operatorname {E} [X_{i}]={\frac {\alpha _{i}}{\alpha _{0}}}}](./dbec98ee7aeb59af97828e7b3e9fa92de937021d.svg) 
 ![{\displaystyle \operatorname {E} [\ln X_{i}]=\psi (\alpha _{i})-\psi (\alpha _{0})}](./a864ba2186ba3577dcd095b6b3f608511c668b53.svg) (where
  is the digamma function) | 
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| Mode |  | 
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| Variance | ![{\displaystyle \operatorname {Var} [X_{i}]={\frac {{\tilde {\alpha }}_{i}(1-{\tilde {\alpha }}_{i})}{\alpha _{0}+1}},}](./74281baf02f79a7b6c05443a1b82fcca1525f9dc.svg)  ![{\displaystyle \operatorname {Cov} [X_{i},X_{j}]={\frac {\delta _{ij}\,{\tilde {\alpha }}_{i}-{\tilde {\alpha }}_{i}{\tilde {\alpha }}_{j}}{\alpha _{0}+1}}}](./c5a10465175e4b932c563278e2f8b155dfd4fdbb.svg)  where
  , and  is the Kronecker delta | 
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| Entropy |    with
  defined as for variance, above; and  is the digamma function | 
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| Method of moments | ![{\displaystyle \alpha _{i}=E[X_{i}]\left({\frac {E[X_{j}](1-E[X_{j}])}{V[X_{j}]}}-1\right)}](./027c83bab1eaa080e4ffb57d8a91db47f2a6c62f.svg) where j is any index, possibly i itself | 
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In probability and statistics, the Dirichlet distribution (after Peter Gustav Lejeune Dirichlet), often denoted  , is a family of continuous multivariate probability distributions parameterized by a vector α of positive reals. It is a multivariate generalization of the beta distribution, hence its alternative name of multivariate beta distribution (MBD).  Dirichlet distributions are commonly used as prior distributions in Bayesian statistics, and in fact, the Dirichlet distribution is the conjugate prior of the categorical distribution and multinomial distribution.
, is a family of continuous multivariate probability distributions parameterized by a vector α of positive reals. It is a multivariate generalization of the beta distribution, hence its alternative name of multivariate beta distribution (MBD).  Dirichlet distributions are commonly used as prior distributions in Bayesian statistics, and in fact, the Dirichlet distribution is the conjugate prior of the categorical distribution and multinomial distribution.
The infinite-dimensional generalization of the Dirichlet distribution is the Dirichlet process.