A uniform distribution, sometimes also known as a rectangular distribution, is a distribution that has constant probability.
The probability density function and cumulative distribution function for a continuous uniform distribution on the interval are
| (1) | |||
| (2) |
These can be written in terms of the Heaviside step function as
| (3) | |||
| (4) |
the latter of which simplifies to the expected for
.
The continuous distribution is implemented as UniformDistribution[a, b].
For a continuous uniform distribution, the characteristic function is
| (5) |
If and
, the characteristic function simplifies to
| (6) | |||
| (7) |
The moment-generating function is
| (8) | |||
| (9) | |||
| (10) |
and
| (11) | |||
| (12) |
The moment-generating function is not differentiable at zero, but the moments can be calculated by differentiating and then taking . The raw moments are given analytically by
| (13) | |||
| (14) | |||
| (15) |
The first few are therefore given explicitly by
| (16) | |||
| (17) | |||
| (18) | |||
| (19) |
The central moments are given analytically by
| (20) | |||
| (21) | |||
| (22) |
The first few are therefore given explicitly by
| (23) | |||
| (24) | |||
| (25) | |||
| (26) |
The mean, variance, skewness, and kurtosis excess are therefore
| (27) | |||
| (28) | |||
| (29) | |||
| (30) |