scipy.stats.rvs_ratio_uniforms¶
-
scipy.stats.
rvs_ratio_uniforms
(pdf, umax, vmin, vmax, size=1, c=0, random_state=None)[source]¶ Generate random samples from a probability density function using the ratio-of-uniforms method.
- Parameters
- pdfcallable
A function with signature pdf(x) that is proportional to the probability density function of the distribution.
- umaxfloat
The upper bound of the bounding rectangle in the u-direction.
- vminfloat
The lower bound of the bounding rectangle in the v-direction.
- vmaxfloat
The upper bound of the bounding rectangle in the v-direction.
- sizeint or tuple of ints, optional
Defining number of random variates (default is 1).
- cfloat, optional.
Shift parameter of ratio-of-uniforms method, see Notes. Default is 0.
- random_state{None, int, RandomState, Generator}, optional
If random_state is None the RandomState singleton is used. If random_state is an int, a new
RandomState
instance is used, seeded with random_state. If random_state is already aRandomState
orGenerator
instance, then that object is used. Default is None.
- Returns
- rvsndarray
The random variates distributed according to the probability distribution defined by the pdf.
Notes
Given a univariate probability density function pdf and a constant c, define the set
A = {(u, v) : 0 < u <= sqrt(pdf(v/u + c))}
. If (U, V) is a random vector uniformly distributed over A, then V/U + c follows a distribution according to pdf.The above result (see [1], [2]) can be used to sample random variables using only the pdf, i.e. no inversion of the cdf is required. Typical choices of c are zero or the mode of pdf. The set A is a subset of the rectangle
R = [0, umax] x [vmin, vmax]
whereumax = sup sqrt(pdf(x))
vmin = inf (x - c) sqrt(pdf(x))
vmax = sup (x - c) sqrt(pdf(x))
In particular, these values are finite if pdf is bounded and
x**2 * pdf(x)
is bounded (i.e. subquadratic tails). One can generate (U, V) uniformly on R and return V/U + c if (U, V) are also in A which can be directly verified.The algorithm is not changed if one replaces pdf by k * pdf for any constant k > 0. Thus, it is often convenient to work with a function that is proportional to the probability density function by dropping unneccessary normalization factors.
Intuitively, the method works well if A fills up most of the enclosing rectangle such that the probability is high that (U, V) lies in A whenever it lies in R as the number of required iterations becomes too large otherwise. To be more precise, note that the expected number of iterations to draw (U, V) uniformly distributed on R such that (U, V) is also in A is given by the ratio
area(R) / area(A) = 2 * umax * (vmax - vmin) / area(pdf)
, where area(pdf) is the integral of pdf (which is equal to one if the probability density function is used but can take on other values if a function proportional to the density is used). The equality holds since the area of A is equal to 0.5 * area(pdf) (Theorem 7.1 in [1]). If the sampling fails to generate a single random variate after 50000 iterations (i.e. not a single draw is in A), an exception is raised.If the bounding rectangle is not correctly specified (i.e. if it does not contain A), the algorithm samples from a distribution different from the one given by pdf. It is therefore recommended to perform a test such as
kstest
as a check.References
- 1(1,2)
L. Devroye, “Non-Uniform Random Variate Generation”, Springer-Verlag, 1986.
- 2
W. Hoermann and J. Leydold, “Generating generalized inverse Gaussian random variates”, Statistics and Computing, 24(4), p. 547–557, 2014.
- 3
A.J. Kinderman and J.F. Monahan, “Computer Generation of Random Variables Using the Ratio of Uniform Deviates”, ACM Transactions on Mathematical Software, 3(3), p. 257–260, 1977.
Examples
>>> from scipy import stats
Simulate normally distributed random variables. It is easy to compute the bounding rectangle explicitly in that case. For simplicity, we drop the normalization factor of the density.
>>> f = lambda x: np.exp(-x**2 / 2) >>> v_bound = np.sqrt(f(np.sqrt(2))) * np.sqrt(2) >>> umax, vmin, vmax = np.sqrt(f(0)), -v_bound, v_bound >>> np.random.seed(12345) >>> rvs = stats.rvs_ratio_uniforms(f, umax, vmin, vmax, size=2500)
The K-S test confirms that the random variates are indeed normally distributed (normality is not rejected at 5% significance level):
>>> stats.kstest(rvs, 'norm')[1] 0.33783681428365553
The exponential distribution provides another example where the bounding rectangle can be determined explicitly.
>>> np.random.seed(12345) >>> rvs = stats.rvs_ratio_uniforms(lambda x: np.exp(-x), umax=1, ... vmin=0, vmax=2*np.exp(-1), size=1000) >>> stats.kstest(rvs, 'expon')[1] 0.928454552559516