Vehicle-Anti-Theft-Face-Rec.../venv/Lib/site-packages/scipy/stats/_discrete_distns.py

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#
# Author: Travis Oliphant 2002-2011 with contributions from
# SciPy Developers 2004-2011
#
from functools import partial
from scipy import special
from scipy.special import entr, logsumexp, betaln, gammaln as gamln
from scipy._lib._util import _lazywhere, rng_integers
from numpy import floor, ceil, log, exp, sqrt, log1p, expm1, tanh, cosh, sinh
import numpy as np
from ._distn_infrastructure import (
rv_discrete, _ncx2_pdf, _ncx2_cdf, get_distribution_names)
class binom_gen(rv_discrete):
r"""A binomial discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `binom` is:
.. math::
f(k) = \binom{n}{k} p^k (1-p)^{n-k}
for ``k`` in ``{0, 1,..., n}``.
`binom` takes ``n`` and ``p`` as shape parameters.
%(after_notes)s
%(example)s
"""
def _rvs(self, n, p, size=None, random_state=None):
return random_state.binomial(n, p, size)
def _argcheck(self, n, p):
return (n >= 0) & (p >= 0) & (p <= 1)
def _get_support(self, n, p):
return self.a, n
def _logpmf(self, x, n, p):
k = floor(x)
combiln = (gamln(n+1) - (gamln(k+1) + gamln(n-k+1)))
return combiln + special.xlogy(k, p) + special.xlog1py(n-k, -p)
def _pmf(self, x, n, p):
# binom.pmf(k) = choose(n, k) * p**k * (1-p)**(n-k)
return exp(self._logpmf(x, n, p))
def _cdf(self, x, n, p):
k = floor(x)
vals = special.bdtr(k, n, p)
return vals
def _sf(self, x, n, p):
k = floor(x)
return special.bdtrc(k, n, p)
def _ppf(self, q, n, p):
vals = ceil(special.bdtrik(q, n, p))
vals1 = np.maximum(vals - 1, 0)
temp = special.bdtr(vals1, n, p)
return np.where(temp >= q, vals1, vals)
def _stats(self, n, p, moments='mv'):
q = 1.0 - p
mu = n * p
var = n * p * q
g1, g2 = None, None
if 's' in moments:
g1 = (q - p) / sqrt(var)
if 'k' in moments:
g2 = (1.0 - 6*p*q) / var
return mu, var, g1, g2
def _entropy(self, n, p):
k = np.r_[0:n + 1]
vals = self._pmf(k, n, p)
return np.sum(entr(vals), axis=0)
binom = binom_gen(name='binom')
class bernoulli_gen(binom_gen):
r"""A Bernoulli discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `bernoulli` is:
.. math::
f(k) = \begin{cases}1-p &\text{if } k = 0\\
p &\text{if } k = 1\end{cases}
for :math:`k` in :math:`\{0, 1\}`.
`bernoulli` takes :math:`p` as shape parameter.
%(after_notes)s
%(example)s
"""
def _rvs(self, p, size=None, random_state=None):
return binom_gen._rvs(self, 1, p, size=size, random_state=random_state)
def _argcheck(self, p):
return (p >= 0) & (p <= 1)
def _get_support(self, p):
# Overrides binom_gen._get_support!x
return self.a, self.b
def _logpmf(self, x, p):
return binom._logpmf(x, 1, p)
def _pmf(self, x, p):
# bernoulli.pmf(k) = 1-p if k = 0
# = p if k = 1
return binom._pmf(x, 1, p)
def _cdf(self, x, p):
return binom._cdf(x, 1, p)
def _sf(self, x, p):
return binom._sf(x, 1, p)
def _ppf(self, q, p):
return binom._ppf(q, 1, p)
def _stats(self, p):
return binom._stats(1, p)
def _entropy(self, p):
return entr(p) + entr(1-p)
bernoulli = bernoulli_gen(b=1, name='bernoulli')
class betabinom_gen(rv_discrete):
r"""A beta-binomial discrete random variable.
%(before_notes)s
Notes
-----
The beta-binomial distribution is a binomial distribution with a
probability of success `p` that follows a beta distribution.
The probability mass function for `betabinom` is:
.. math::
f(k) = \binom{n}{k} \frac{B(k + a, n - k + b)}{B(a, b)}
for ``k`` in ``{0, 1,..., n}``, :math:`n \geq 0`, :math:`a > 0`,
:math:`b > 0`, where :math:`B(a, b)` is the beta function.
`betabinom` takes :math:`n`, :math:`a`, and :math:`b` as shape parameters.
References
----------
.. [1] https://en.wikipedia.org/wiki/Beta-binomial_distribution
%(after_notes)s
.. versionadded:: 1.4.0
See Also
--------
beta, binom
%(example)s
"""
def _rvs(self, n, a, b, size=None, random_state=None):
p = random_state.beta(a, b, size)
return random_state.binomial(n, p, size)
def _get_support(self, n, a, b):
return 0, n
def _argcheck(self, n, a, b):
return (n >= 0) & (a > 0) & (b > 0)
def _logpmf(self, x, n, a, b):
k = floor(x)
combiln = -log(n + 1) - betaln(n - k + 1, k + 1)
return combiln + betaln(k + a, n - k + b) - betaln(a, b)
def _pmf(self, x, n, a, b):
return exp(self._logpmf(x, n, a, b))
def _stats(self, n, a, b, moments='mv'):
e_p = a / (a + b)
e_q = 1 - e_p
mu = n * e_p
var = n * (a + b + n) * e_p * e_q / (a + b + 1)
g1, g2 = None, None
if 's' in moments:
g1 = 1.0 / sqrt(var)
g1 *= (a + b + 2 * n) * (b - a)
g1 /= (a + b + 2) * (a + b)
if 'k' in moments:
g2 = a + b
g2 *= (a + b - 1 + 6 * n)
g2 += 3 * a * b * (n - 2)
g2 += 6 * n ** 2
g2 -= 3 * e_p * b * n * (6 - n)
g2 -= 18 * e_p * e_q * n ** 2
g2 *= (a + b) ** 2 * (1 + a + b)
g2 /= (n * a * b * (a + b + 2) * (a + b + 3) * (a + b + n))
g2 -= 3
return mu, var, g1, g2
betabinom = betabinom_gen(name='betabinom')
class nbinom_gen(rv_discrete):
r"""A negative binomial discrete random variable.
%(before_notes)s
Notes
-----
Negative binomial distribution describes a sequence of i.i.d. Bernoulli
trials, repeated until a predefined, non-random number of successes occurs.
The probability mass function of the number of failures for `nbinom` is:
.. math::
f(k) = \binom{k+n-1}{n-1} p^n (1-p)^k
for :math:`k \ge 0`.
`nbinom` takes :math:`n` and :math:`p` as shape parameters where n is the
number of successes, whereas p is the probability of a single success.
%(after_notes)s
%(example)s
"""
def _rvs(self, n, p, size=None, random_state=None):
return random_state.negative_binomial(n, p, size)
def _argcheck(self, n, p):
return (n > 0) & (p >= 0) & (p <= 1)
def _pmf(self, x, n, p):
# nbinom.pmf(k) = choose(k+n-1, n-1) * p**n * (1-p)**k
return exp(self._logpmf(x, n, p))
def _logpmf(self, x, n, p):
coeff = gamln(n+x) - gamln(x+1) - gamln(n)
return coeff + n*log(p) + special.xlog1py(x, -p)
def _cdf(self, x, n, p):
k = floor(x)
return special.betainc(n, k+1, p)
def _sf_skip(self, x, n, p):
# skip because special.nbdtrc doesn't work for 0<n<1
k = floor(x)
return special.nbdtrc(k, n, p)
def _ppf(self, q, n, p):
vals = ceil(special.nbdtrik(q, n, p))
vals1 = (vals-1).clip(0.0, np.inf)
temp = self._cdf(vals1, n, p)
return np.where(temp >= q, vals1, vals)
def _stats(self, n, p):
Q = 1.0 / p
P = Q - 1.0
mu = n*P
var = n*P*Q
g1 = (Q+P)/sqrt(n*P*Q)
g2 = (1.0 + 6*P*Q) / (n*P*Q)
return mu, var, g1, g2
nbinom = nbinom_gen(name='nbinom')
class geom_gen(rv_discrete):
r"""A geometric discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `geom` is:
.. math::
f(k) = (1-p)^{k-1} p
for :math:`k \ge 1`.
`geom` takes :math:`p` as shape parameter.
%(after_notes)s
See Also
--------
planck
%(example)s
"""
def _rvs(self, p, size=None, random_state=None):
return random_state.geometric(p, size=size)
def _argcheck(self, p):
return (p <= 1) & (p >= 0)
def _pmf(self, k, p):
return np.power(1-p, k-1) * p
def _logpmf(self, k, p):
return special.xlog1py(k - 1, -p) + log(p)
def _cdf(self, x, p):
k = floor(x)
return -expm1(log1p(-p)*k)
def _sf(self, x, p):
return np.exp(self._logsf(x, p))
def _logsf(self, x, p):
k = floor(x)
return k*log1p(-p)
def _ppf(self, q, p):
vals = ceil(log1p(-q) / log1p(-p))
temp = self._cdf(vals-1, p)
return np.where((temp >= q) & (vals > 0), vals-1, vals)
def _stats(self, p):
mu = 1.0/p
qr = 1.0-p
var = qr / p / p
g1 = (2.0-p) / sqrt(qr)
g2 = np.polyval([1, -6, 6], p)/(1.0-p)
return mu, var, g1, g2
geom = geom_gen(a=1, name='geom', longname="A geometric")
class hypergeom_gen(rv_discrete):
r"""A hypergeometric discrete random variable.
The hypergeometric distribution models drawing objects from a bin.
`M` is the total number of objects, `n` is total number of Type I objects.
The random variate represents the number of Type I objects in `N` drawn
without replacement from the total population.
%(before_notes)s
Notes
-----
The symbols used to denote the shape parameters (`M`, `n`, and `N`) are not
universally accepted. See the Examples for a clarification of the
definitions used here.
The probability mass function is defined as,
.. math:: p(k, M, n, N) = \frac{\binom{n}{k} \binom{M - n}{N - k}}
{\binom{M}{N}}
for :math:`k \in [\max(0, N - M + n), \min(n, N)]`, where the binomial
coefficients are defined as,
.. math:: \binom{n}{k} \equiv \frac{n!}{k! (n - k)!}.
%(after_notes)s
Examples
--------
>>> from scipy.stats import hypergeom
>>> import matplotlib.pyplot as plt
Suppose we have a collection of 20 animals, of which 7 are dogs. Then if
we want to know the probability of finding a given number of dogs if we
choose at random 12 of the 20 animals, we can initialize a frozen
distribution and plot the probability mass function:
>>> [M, n, N] = [20, 7, 12]
>>> rv = hypergeom(M, n, N)
>>> x = np.arange(0, n+1)
>>> pmf_dogs = rv.pmf(x)
>>> fig = plt.figure()
>>> ax = fig.add_subplot(111)
>>> ax.plot(x, pmf_dogs, 'bo')
>>> ax.vlines(x, 0, pmf_dogs, lw=2)
>>> ax.set_xlabel('# of dogs in our group of chosen animals')
>>> ax.set_ylabel('hypergeom PMF')
>>> plt.show()
Instead of using a frozen distribution we can also use `hypergeom`
methods directly. To for example obtain the cumulative distribution
function, use:
>>> prb = hypergeom.cdf(x, M, n, N)
And to generate random numbers:
>>> R = hypergeom.rvs(M, n, N, size=10)
"""
def _rvs(self, M, n, N, size=None, random_state=None):
return random_state.hypergeometric(n, M-n, N, size=size)
def _get_support(self, M, n, N):
return np.maximum(N-(M-n), 0), np.minimum(n, N)
def _argcheck(self, M, n, N):
cond = (M > 0) & (n >= 0) & (N >= 0)
cond &= (n <= M) & (N <= M)
return cond
def _logpmf(self, k, M, n, N):
tot, good = M, n
bad = tot - good
result = (betaln(good+1, 1) + betaln(bad+1, 1) + betaln(tot-N+1, N+1) -
betaln(k+1, good-k+1) - betaln(N-k+1, bad-N+k+1) -
betaln(tot+1, 1))
return result
def _pmf(self, k, M, n, N):
# same as the following but numerically more precise
# return comb(good, k) * comb(bad, N-k) / comb(tot, N)
return exp(self._logpmf(k, M, n, N))
def _stats(self, M, n, N):
# tot, good, sample_size = M, n, N
# "wikipedia".replace('N', 'M').replace('n', 'N').replace('K', 'n')
M, n, N = 1.*M, 1.*n, 1.*N
m = M - n
p = n/M
mu = N*p
var = m*n*N*(M - N)*1.0/(M*M*(M-1))
g1 = (m - n)*(M-2*N) / (M-2.0) * sqrt((M-1.0) / (m*n*N*(M-N)))
g2 = M*(M+1) - 6.*N*(M-N) - 6.*n*m
g2 *= (M-1)*M*M
g2 += 6.*n*N*(M-N)*m*(5.*M-6)
g2 /= n * N * (M-N) * m * (M-2.) * (M-3.)
return mu, var, g1, g2
def _entropy(self, M, n, N):
k = np.r_[N - (M - n):min(n, N) + 1]
vals = self.pmf(k, M, n, N)
return np.sum(entr(vals), axis=0)
def _sf(self, k, M, n, N):
# This for loop is needed because `k` can be an array. If that's the
# case, the sf() method makes M, n and N arrays of the same shape. We
# therefore unpack all inputs args, so we can do the manual
# integration.
res = []
for quant, tot, good, draw in zip(k, M, n, N):
# Manual integration over probability mass function. More accurate
# than integrate.quad.
k2 = np.arange(quant + 1, draw + 1)
res.append(np.sum(self._pmf(k2, tot, good, draw)))
return np.asarray(res)
def _logsf(self, k, M, n, N):
res = []
for quant, tot, good, draw in zip(k, M, n, N):
if (quant + 0.5) * (tot + 0.5) < (good - 0.5) * (draw - 0.5):
# Less terms to sum if we calculate log(1-cdf)
res.append(log1p(-exp(self.logcdf(quant, tot, good, draw))))
else:
# Integration over probability mass function using logsumexp
k2 = np.arange(quant + 1, draw + 1)
res.append(logsumexp(self._logpmf(k2, tot, good, draw)))
return np.asarray(res)
def _logcdf(self, k, M, n, N):
res = []
for quant, tot, good, draw in zip(k, M, n, N):
if (quant + 0.5) * (tot + 0.5) > (good - 0.5) * (draw - 0.5):
# Less terms to sum if we calculate log(1-sf)
res.append(log1p(-exp(self.logsf(quant, tot, good, draw))))
else:
# Integration over probability mass function using logsumexp
k2 = np.arange(0, quant + 1)
res.append(logsumexp(self._logpmf(k2, tot, good, draw)))
return np.asarray(res)
hypergeom = hypergeom_gen(name='hypergeom')
# FIXME: Fails _cdfvec
class logser_gen(rv_discrete):
r"""A Logarithmic (Log-Series, Series) discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `logser` is:
.. math::
f(k) = - \frac{p^k}{k \log(1-p)}
for :math:`k \ge 1`.
`logser` takes :math:`p` as shape parameter.
%(after_notes)s
%(example)s
"""
def _rvs(self, p, size=None, random_state=None):
# looks wrong for p>0.5, too few k=1
# trying to use generic is worse, no k=1 at all
return random_state.logseries(p, size=size)
def _argcheck(self, p):
return (p > 0) & (p < 1)
def _pmf(self, k, p):
# logser.pmf(k) = - p**k / (k*log(1-p))
return -np.power(p, k) * 1.0 / k / special.log1p(-p)
def _stats(self, p):
r = special.log1p(-p)
mu = p / (p - 1.0) / r
mu2p = -p / r / (p - 1.0)**2
var = mu2p - mu*mu
mu3p = -p / r * (1.0+p) / (1.0 - p)**3
mu3 = mu3p - 3*mu*mu2p + 2*mu**3
g1 = mu3 / np.power(var, 1.5)
mu4p = -p / r * (
1.0 / (p-1)**2 - 6*p / (p - 1)**3 + 6*p*p / (p-1)**4)
mu4 = mu4p - 4*mu3p*mu + 6*mu2p*mu*mu - 3*mu**4
g2 = mu4 / var**2 - 3.0
return mu, var, g1, g2
logser = logser_gen(a=1, name='logser', longname='A logarithmic')
class poisson_gen(rv_discrete):
r"""A Poisson discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `poisson` is:
.. math::
f(k) = \exp(-\mu) \frac{\mu^k}{k!}
for :math:`k \ge 0`.
`poisson` takes :math:`\mu` as shape parameter.
%(after_notes)s
%(example)s
"""
# Override rv_discrete._argcheck to allow mu=0.
def _argcheck(self, mu):
return mu >= 0
def _rvs(self, mu, size=None, random_state=None):
return random_state.poisson(mu, size)
def _logpmf(self, k, mu):
Pk = special.xlogy(k, mu) - gamln(k + 1) - mu
return Pk
def _pmf(self, k, mu):
# poisson.pmf(k) = exp(-mu) * mu**k / k!
return exp(self._logpmf(k, mu))
def _cdf(self, x, mu):
k = floor(x)
return special.pdtr(k, mu)
def _sf(self, x, mu):
k = floor(x)
return special.pdtrc(k, mu)
def _ppf(self, q, mu):
vals = ceil(special.pdtrik(q, mu))
vals1 = np.maximum(vals - 1, 0)
temp = special.pdtr(vals1, mu)
return np.where(temp >= q, vals1, vals)
def _stats(self, mu):
var = mu
tmp = np.asarray(mu)
mu_nonzero = tmp > 0
g1 = _lazywhere(mu_nonzero, (tmp,), lambda x: sqrt(1.0/x), np.inf)
g2 = _lazywhere(mu_nonzero, (tmp,), lambda x: 1.0/x, np.inf)
return mu, var, g1, g2
poisson = poisson_gen(name="poisson", longname='A Poisson')
class planck_gen(rv_discrete):
r"""A Planck discrete exponential random variable.
%(before_notes)s
Notes
-----
The probability mass function for `planck` is:
.. math::
f(k) = (1-\exp(-\lambda)) \exp(-\lambda k)
for :math:`k \ge 0` and :math:`\lambda > 0`.
`planck` takes :math:`\lambda` as shape parameter. The Planck distribution
can be written as a geometric distribution (`geom`) with
:math:`p = 1 - \exp(-\lambda)` shifted by `loc = -1`.
%(after_notes)s
See Also
--------
geom
%(example)s
"""
def _argcheck(self, lambda_):
return lambda_ > 0
def _pmf(self, k, lambda_):
return -expm1(-lambda_)*exp(-lambda_*k)
def _cdf(self, x, lambda_):
k = floor(x)
return -expm1(-lambda_*(k+1))
def _sf(self, x, lambda_):
return exp(self._logsf(x, lambda_))
def _logsf(self, x, lambda_):
k = floor(x)
return -lambda_*(k+1)
def _ppf(self, q, lambda_):
vals = ceil(-1.0/lambda_ * log1p(-q)-1)
vals1 = (vals-1).clip(*(self._get_support(lambda_)))
temp = self._cdf(vals1, lambda_)
return np.where(temp >= q, vals1, vals)
def _rvs(self, lambda_, size=None, random_state=None):
# use relation to geometric distribution for sampling
p = -expm1(-lambda_)
return random_state.geometric(p, size=size) - 1.0
def _stats(self, lambda_):
mu = 1/expm1(lambda_)
var = exp(-lambda_)/(expm1(-lambda_))**2
g1 = 2*cosh(lambda_/2.0)
g2 = 4+2*cosh(lambda_)
return mu, var, g1, g2
def _entropy(self, lambda_):
C = -expm1(-lambda_)
return lambda_*exp(-lambda_)/C - log(C)
planck = planck_gen(a=0, name='planck', longname='A discrete exponential ')
class boltzmann_gen(rv_discrete):
r"""A Boltzmann (Truncated Discrete Exponential) random variable.
%(before_notes)s
Notes
-----
The probability mass function for `boltzmann` is:
.. math::
f(k) = (1-\exp(-\lambda)) \exp(-\lambda k) / (1-\exp(-\lambda N))
for :math:`k = 0,..., N-1`.
`boltzmann` takes :math:`\lambda > 0` and :math:`N > 0` as shape parameters.
%(after_notes)s
%(example)s
"""
def _argcheck(self, lambda_, N):
return (lambda_ > 0) & (N > 0)
def _get_support(self, lambda_, N):
return self.a, N - 1
def _pmf(self, k, lambda_, N):
# boltzmann.pmf(k) =
# (1-exp(-lambda_)*exp(-lambda_*k)/(1-exp(-lambda_*N))
fact = (1-exp(-lambda_))/(1-exp(-lambda_*N))
return fact*exp(-lambda_*k)
def _cdf(self, x, lambda_, N):
k = floor(x)
return (1-exp(-lambda_*(k+1)))/(1-exp(-lambda_*N))
def _ppf(self, q, lambda_, N):
qnew = q*(1-exp(-lambda_*N))
vals = ceil(-1.0/lambda_ * log(1-qnew)-1)
vals1 = (vals-1).clip(0.0, np.inf)
temp = self._cdf(vals1, lambda_, N)
return np.where(temp >= q, vals1, vals)
def _stats(self, lambda_, N):
z = exp(-lambda_)
zN = exp(-lambda_*N)
mu = z/(1.0-z)-N*zN/(1-zN)
var = z/(1.0-z)**2 - N*N*zN/(1-zN)**2
trm = (1-zN)/(1-z)
trm2 = (z*trm**2 - N*N*zN)
g1 = z*(1+z)*trm**3 - N**3*zN*(1+zN)
g1 = g1 / trm2**(1.5)
g2 = z*(1+4*z+z*z)*trm**4 - N**4 * zN*(1+4*zN+zN*zN)
g2 = g2 / trm2 / trm2
return mu, var, g1, g2
boltzmann = boltzmann_gen(name='boltzmann', a=0,
longname='A truncated discrete exponential ')
class randint_gen(rv_discrete):
r"""A uniform discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `randint` is:
.. math::
f(k) = \frac{1}{high - low}
for ``k = low, ..., high - 1``.
`randint` takes ``low`` and ``high`` as shape parameters.
%(after_notes)s
%(example)s
"""
def _argcheck(self, low, high):
return (high > low)
def _get_support(self, low, high):
return low, high-1
def _pmf(self, k, low, high):
# randint.pmf(k) = 1./(high - low)
p = np.ones_like(k) / (high - low)
return np.where((k >= low) & (k < high), p, 0.)
def _cdf(self, x, low, high):
k = floor(x)
return (k - low + 1.) / (high - low)
def _ppf(self, q, low, high):
vals = ceil(q * (high - low) + low) - 1
vals1 = (vals - 1).clip(low, high)
temp = self._cdf(vals1, low, high)
return np.where(temp >= q, vals1, vals)
def _stats(self, low, high):
m2, m1 = np.asarray(high), np.asarray(low)
mu = (m2 + m1 - 1.0) / 2
d = m2 - m1
var = (d*d - 1) / 12.0
g1 = 0.0
g2 = -6.0/5.0 * (d*d + 1.0) / (d*d - 1.0)
return mu, var, g1, g2
def _rvs(self, low, high, size=None, random_state=None):
"""An array of *size* random integers >= ``low`` and < ``high``."""
if np.asarray(low).size == 1 and np.asarray(high).size == 1:
# no need to vectorize in that case
return rng_integers(random_state, low, high, size=size)
if size is not None:
# NumPy's RandomState.randint() doesn't broadcast its arguments.
# Use `broadcast_to()` to extend the shapes of low and high
# up to size. Then we can use the numpy.vectorize'd
# randint without needing to pass it a `size` argument.
low = np.broadcast_to(low, size)
high = np.broadcast_to(high, size)
randint = np.vectorize(partial(rng_integers, random_state),
otypes=[np.int_])
return randint(low, high)
def _entropy(self, low, high):
return log(high - low)
randint = randint_gen(name='randint', longname='A discrete uniform '
'(random integer)')
# FIXME: problems sampling.
class zipf_gen(rv_discrete):
r"""A Zipf discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `zipf` is:
.. math::
f(k, a) = \frac{1}{\zeta(a) k^a}
for :math:`k \ge 1`.
`zipf` takes :math:`a` as shape parameter. :math:`\zeta` is the
Riemann zeta function (`scipy.special.zeta`)
%(after_notes)s
%(example)s
"""
def _rvs(self, a, size=None, random_state=None):
return random_state.zipf(a, size=size)
def _argcheck(self, a):
return a > 1
def _pmf(self, k, a):
# zipf.pmf(k, a) = 1/(zeta(a) * k**a)
Pk = 1.0 / special.zeta(a, 1) / k**a
return Pk
def _munp(self, n, a):
return _lazywhere(
a > n + 1, (a, n),
lambda a, n: special.zeta(a - n, 1) / special.zeta(a, 1),
np.inf)
zipf = zipf_gen(a=1, name='zipf', longname='A Zipf')
class dlaplace_gen(rv_discrete):
r"""A Laplacian discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for `dlaplace` is:
.. math::
f(k) = \tanh(a/2) \exp(-a |k|)
for integers :math:`k` and :math:`a > 0`.
`dlaplace` takes :math:`a` as shape parameter.
%(after_notes)s
%(example)s
"""
def _pmf(self, k, a):
# dlaplace.pmf(k) = tanh(a/2) * exp(-a*abs(k))
return tanh(a/2.0) * exp(-a * abs(k))
def _cdf(self, x, a):
k = floor(x)
f = lambda k, a: 1.0 - exp(-a * k) / (exp(a) + 1)
f2 = lambda k, a: exp(a * (k+1)) / (exp(a) + 1)
return _lazywhere(k >= 0, (k, a), f=f, f2=f2)
def _ppf(self, q, a):
const = 1 + exp(a)
vals = ceil(np.where(q < 1.0 / (1 + exp(-a)),
log(q*const) / a - 1,
-log((1-q) * const) / a))
vals1 = vals - 1
return np.where(self._cdf(vals1, a) >= q, vals1, vals)
def _stats(self, a):
ea = exp(a)
mu2 = 2.*ea/(ea-1.)**2
mu4 = 2.*ea*(ea**2+10.*ea+1.) / (ea-1.)**4
return 0., mu2, 0., mu4/mu2**2 - 3.
def _entropy(self, a):
return a / sinh(a) - log(tanh(a/2.0))
def _rvs(self, a, size=None, random_state=None):
# The discrete Laplace is equivalent to the two-sided geometric
# distribution with PMF:
# f(k) = (1 - alpha)/(1 + alpha) * alpha^abs(k)
# Reference:
# https://www.sciencedirect.com/science/
# article/abs/pii/S0378375804003519
# Furthermore, the two-sided geometric distribution is
# equivalent to the difference between two iid geometric
# distributions.
# Reference (page 179):
# https://pdfs.semanticscholar.org/61b3/
# b99f466815808fd0d03f5d2791eea8b541a1.pdf
# Thus, we can leverage the following:
# 1) alpha = e^-a
# 2) probability_of_success = 1 - alpha (Bernoulli trial)
probOfSuccess = -np.expm1(-np.asarray(a))
x = random_state.geometric(probOfSuccess, size=size)
y = random_state.geometric(probOfSuccess, size=size)
return x - y
dlaplace = dlaplace_gen(a=-np.inf,
name='dlaplace', longname='A discrete Laplacian')
class skellam_gen(rv_discrete):
r"""A Skellam discrete random variable.
%(before_notes)s
Notes
-----
Probability distribution of the difference of two correlated or
uncorrelated Poisson random variables.
Let :math:`k_1` and :math:`k_2` be two Poisson-distributed r.v. with
expected values :math:`\lambda_1` and :math:`\lambda_2`. Then,
:math:`k_1 - k_2` follows a Skellam distribution with parameters
:math:`\mu_1 = \lambda_1 - \rho \sqrt{\lambda_1 \lambda_2}` and
:math:`\mu_2 = \lambda_2 - \rho \sqrt{\lambda_1 \lambda_2}`, where
:math:`\rho` is the correlation coefficient between :math:`k_1` and
:math:`k_2`. If the two Poisson-distributed r.v. are independent then
:math:`\rho = 0`.
Parameters :math:`\mu_1` and :math:`\mu_2` must be strictly positive.
For details see: https://en.wikipedia.org/wiki/Skellam_distribution
`skellam` takes :math:`\mu_1` and :math:`\mu_2` as shape parameters.
%(after_notes)s
%(example)s
"""
def _rvs(self, mu1, mu2, size=None, random_state=None):
n = size
return (random_state.poisson(mu1, n) -
random_state.poisson(mu2, n))
def _pmf(self, x, mu1, mu2):
px = np.where(x < 0,
_ncx2_pdf(2*mu2, 2*(1-x), 2*mu1)*2,
_ncx2_pdf(2*mu1, 2*(1+x), 2*mu2)*2)
# ncx2.pdf() returns nan's for extremely low probabilities
return px
def _cdf(self, x, mu1, mu2):
x = floor(x)
px = np.where(x < 0,
_ncx2_cdf(2*mu2, -2*x, 2*mu1),
1 - _ncx2_cdf(2*mu1, 2*(x+1), 2*mu2))
return px
def _stats(self, mu1, mu2):
mean = mu1 - mu2
var = mu1 + mu2
g1 = mean / sqrt((var)**3)
g2 = 1 / var
return mean, var, g1, g2
skellam = skellam_gen(a=-np.inf, name="skellam", longname='A Skellam')
class yulesimon_gen(rv_discrete):
r"""A Yule-Simon discrete random variable.
%(before_notes)s
Notes
-----
The probability mass function for the `yulesimon` is:
.. math::
f(k) = \alpha B(k, \alpha+1)
for :math:`k=1,2,3,...`, where :math:`\alpha>0`.
Here :math:`B` refers to the `scipy.special.beta` function.
The sampling of random variates is based on pg 553, Section 6.3 of [1]_.
Our notation maps to the referenced logic via :math:`\alpha=a-1`.
For details see the wikipedia entry [2]_.
References
----------
.. [1] Devroye, Luc. "Non-uniform Random Variate Generation",
(1986) Springer, New York.
.. [2] https://en.wikipedia.org/wiki/Yule-Simon_distribution
%(after_notes)s
%(example)s
"""
def _rvs(self, alpha, size=None, random_state=None):
E1 = random_state.standard_exponential(size)
E2 = random_state.standard_exponential(size)
ans = ceil(-E1 / log1p(-exp(-E2 / alpha)))
return ans
def _pmf(self, x, alpha):
return alpha * special.beta(x, alpha + 1)
def _argcheck(self, alpha):
return (alpha > 0)
def _logpmf(self, x, alpha):
return log(alpha) + special.betaln(x, alpha + 1)
def _cdf(self, x, alpha):
return 1 - x * special.beta(x, alpha + 1)
def _sf(self, x, alpha):
return x * special.beta(x, alpha + 1)
def _logsf(self, x, alpha):
return log(x) + special.betaln(x, alpha + 1)
def _stats(self, alpha):
mu = np.where(alpha <= 1, np.inf, alpha / (alpha - 1))
mu2 = np.where(alpha > 2,
alpha**2 / ((alpha - 2.0) * (alpha - 1)**2),
np.inf)
mu2 = np.where(alpha <= 1, np.nan, mu2)
g1 = np.where(alpha > 3,
sqrt(alpha - 2) * (alpha + 1)**2 / (alpha * (alpha - 3)),
np.inf)
g1 = np.where(alpha <= 2, np.nan, g1)
g2 = np.where(alpha > 4,
(alpha + 3) + (alpha**3 - 49 * alpha - 22) / (alpha *
(alpha - 4) * (alpha - 3)), np.inf)
g2 = np.where(alpha <= 2, np.nan, g2)
return mu, mu2, g1, g2
yulesimon = yulesimon_gen(name='yulesimon', a=1)
# Collect names of classes and objects in this module.
pairs = list(globals().items())
_distn_names, _distn_gen_names = get_distribution_names(pairs, rv_discrete)
__all__ = _distn_names + _distn_gen_names