A generic continuous random variable class meant for subclassing.
rv_continuous is a base class to construct specific distribution classes and instances from for continuous random variables. It cannot be used directly as a distribution.
Parameters : | momtype : int, optional
a : float, optional
b : float, optional
xa : float, optional
xb : float, optional
xtol : float, optional
badvalue : object, optional
name : str, optional
longname : str, optional
shapes : str, optional
extradoc : str, optional
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Notes
Frozen Distribution
Alternatively, the object may be called (as a function) to fix the shape, location, and scale parameters returning a “frozen” continuous RV object:
Subclassing
New random variables can be defined by subclassing rv_continuous class and re-defining at least the
_pdf or the cdf method which will be given clean arguments (in between a and b) and passing the argument check method
If postive argument checking is not correct for your RV then you will also need to re-define
_argcheck
Correct, but potentially slow defaults exist for the remaining methods but for speed and/or accuracy you can over-ride
_cdf, _ppf, _rvs, _isf, _sf
Rarely would you override _isf and _sf but you could.
Statistics are computed using numerical integration by default. For speed you can redefine this using
OR
You can override
Examples
To create a new Gaussian distribution, we would do the following:
class gaussian_gen(rv_continuous):
"Gaussian distribution"
def _pdf:
...
...
Methods
rvs(<shape(s)>, loc=0, scale=1, size=1) | random variates | |
pdf(x, <shape(s)>, loc=0, scale=1) | probability density function | |
cdf(x, <shape(s)>, loc=0, scale=1) | cumulative density function | |
sf(x, <shape(s)>, loc=0, scale=1) | survival function (1-cdf — sometimes more accurate) | |
ppf(q, <shape(s)>, loc=0, scale=1) | percent point function (inverse of cdf — quantiles) | |
isf(q, <shape(s)>, loc=0, scale=1) | inverse survival function (inverse of sf) | |
moments(n, <shape(s)>) | non-central n-th moment of the standard distribution (oc=0, scale=1) | |
stats(<shape(s)>, loc=0, scale=1, moments=’mv’) | mean(‘m’), variance(‘v’), skew(‘s’), and/or kurtosis(‘k’) | |
entropy(<shape(s)>, loc=0, scale=1) | (differential) entropy of the RV. | |
fit(data, <shape(s)>, loc=0, scale=1) | Parameter estimates for generic data | |
__call__(<shape(s)>, loc=0, scale=1) | calling a distribution instance creates a frozen RV object with the same methods but holding the given shape, location, and scale fixed. see Notes section | |
Parameters for Methods | ||
x | array-like | quantiles |
q | array-like | lower or upper tail probability |
<shape(s)> | array-like | shape parameters |
loc | array-like, optional | location parameter (default=0) |
scale | array-like, optional | scale parameter (default=1) |
size | int or tuple of ints, optional | shape of random variates (default computed from input arguments ) |
moments | string, optional | composed of letters [‘mvsk’] specifying which moments to compute where ‘m’ = mean, ‘v’ = variance, ‘s’ = (Fisher’s) skew and ‘k’ = (Fisher’s) kurtosis. (default=’mv’) |
n | int | order of moment to calculate in method moments |
Methods that can be overwritten by subclasses | ||
_rvs _pdf _cdf _sf _ppf _isf _stats _munp _entropy _argcheck | ||
There are additional (internal and private) generic methods that can | ||
be useful for cross-checking and for debugging, but might work in all | ||
cases when directly called. |