Inverse transformation sampling takes uniform samples of a number between 0 and 1, interpreted as a probability, and then returns the smallest number such that for the cumulative distribution function of a random variable. For example, imagine that is the standard normal distribution with mean zero and standard deviation one. The table below shows samples taken from the uniform distribution and their representation on the standard normal distribution.
Transformation from uniform sample to normal
.5
0
.975
1.95996
.995
2.5758
.999999
4.75342
1-2−52
8.12589
We are randomly choosing a proportion of the area under the curve and returning the number in the domain such that exactly this proportion of the area occurs to the left of that number. Intuitively, we are unlikely to choose a number in the far end of tails because there is very little area in them which would require choosing a number very close to zero or one.
Computationally, this method involves computing the quantile function of the distribution — in other words, computing the cumulative distribution function (CDF) of the distribution (which maps a number in the domain to a probability between 0 and 1) and then inverting that function. This is the source of the term "inverse" or "inversion" in most of the names for this method. Note that for a discrete distribution, computing the CDF is not in general too difficult: we simply add up the individual probabilities for the various points of the distribution. For a continuous distribution, however, we need to integrate the probability density function (PDF) of the distribution, which is impossible to do analytically for most distributions (including the normal distribution). As a result, this method may be computationally inefficient for many distributions and other methods are preferred; however, it is a useful method for building more generally applicable samplers such as those based on rejection sampling.
For the normal distribution, the lack of an analytical expression for the corresponding quantile function means that other methods (e.g. the Box–Muller transform) may be preferred computationally. It is often the case that, even for simple distributions, the inverse transform sampling method can be improved on:[1] see, for example, the ziggurat algorithm and rejection sampling. On the other hand, it is possible to approximate the quantile function of the normal distribution extremely accurately using moderate-degree polynomials, and in fact the method of doing this is fast enough that inversion sampling is now the default method for sampling from a normal distribution in the statistical package R.[2]
Compute . The computed random variable has distribution and thereby the same law as .
Expressed differently, given a cumulative distribution function and a uniform variable , the random variable has the distribution .[3]
In the continuous case, a treatment of such inverse functions as objects satisfying differential equations can be given.[4] Some such differential equations admit explicit power series solutions, despite their non-linearity.[5]
In order to perform an inversion we want to solve for
From here we would perform steps one, two and three.
As another example, we use the exponential distribution with for x ≥ 0 (and 0 otherwise). By solving y=F(x) we obtain the inverse function
It means that if we draw some from a and compute This has exponential distribution.
The idea is illustrated in the following graph:
Note that the distribution does not change if we start with 1-y instead of y. For computational purposes, it therefore suffices to generate random numbers y in [0, 1] and then simply calculate
Claim: If is a uniform random variable on then has as its CDF.
Proof:
Truncated distribution
Inverse transform sampling can be simply extended to cases of truncated distributions on the interval without the cost of rejection sampling: the same algorithm can be followed, but instead of generating a random number uniformly distributed between 0 and 1, generate uniformly distributed between and , and then again take .
Reduction of the number of inversions
In order to obtain a large number of samples, one needs to perform the same number of inversions of the distribution.
One possible way to reduce the number of inversions while obtaining a large number of samples is the application of the so-called Stochastic Collocation Monte Carlo sampler (SCMC sampler) within a polynomial chaos expansion framework. This allows us to generate any number of Monte Carlo samples with only a few inversions of the original distribution with independent samples of a variable for which the inversions are analytically available, for example the standard normal variable.[7]
Software implementations
There are software implementations available for applying the inverse sampling method by using numerical approximations of the inverse in the case that it is not available in closed form. For example, an approximation of the inverse can be computed if the user provides some information about the distributions such as the PDF [8] or the CDF.
^ abMcNeil, Alexander J.; Frey, Rüdiger; Embrechts, Paul (2005). Quantitative risk management. Princeton Series in Finance. Princeton University Press, Princeton, NJ. p. 186. ISBN0-691-12255-5.
^Steinbrecher, György; Shaw, William T. (19 March 2008). "Quantile mechanics". European Journal of Applied Mathematics. 19 (2). doi:10.1017/S0956792508007341. S2CID6899308.
^L.A. Grzelak, J.A.S. Witteveen, M. Suarez, and C.W. Oosterlee. The stochastic collocation Monte Carlo sampler: Highly efficient sampling from “expensive” distributions. https://ssrn.com/abstract=2529691
^
Baumgarten, Christoph; Patel, Tirth (2022). "Automatic random variate generation in Python". Proceedings of the 21st Python in Science Conference. pp. 46–51. doi:10.25080/majora-212e5952-007.
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