| Multivariate t | 
|---|
| Notation |  | 
|---|
| Parameters | ![{\displaystyle {\boldsymbol {\mu }}=[\mu _{1},\dots ,\mu _{p}]^{T}}](./319c3e962051bd23a858e6a3960644364ee2515a.svg) location (real  vector) 
  scale matrix (positive-definite real  matrix) 
  (real) represents the degrees of freedom | 
|---|
| Support |  | 
|---|
| PDF | ![{\displaystyle {\frac {\Gamma \left[(\nu +p)/2\right]}{\Gamma (\nu /2)\nu ^{p/2}\pi ^{p/2}\left|{\boldsymbol {\Sigma }}\right|^{1/2}}}\left[1+{\frac {1}{\nu }}({\mathbf {x} }-{\boldsymbol {\mu }})^{\rm {T}}{\boldsymbol {\Sigma }}^{-1}({\mathbf {x} }-{\boldsymbol {\mu }})\right]^{-(\nu +p)/2}}](./2a8f5dfeaf2441f91617b39b38762315c104ae6f.svg) | 
|---|
| CDF | No analytic expression, but see text for approximations | 
|---|
| Mean |  if  ; else undefined | 
|---|
| Median |  | 
|---|
| Mode |  | 
|---|
| Variance |  if  ; else undefined | 
|---|
| Skewness | 0 if  ; else undefined | 
|---|
In statistics, the multivariate t-distribution (or multivariate Student distribution) is a multivariate probability distribution. It is a generalization to random vectors of the Student's t-distribution, which is a distribution applicable to univariate random variables. While the case of a random matrix could be treated within this structure, the matrix t-distribution is distinct and makes particular use of the matrix structure.