Class MarsagliaTsangWangDiscreteSampler
- java.lang.Object
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- org.apache.commons.rng.sampling.distribution.MarsagliaTsangWangDiscreteSampler
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public final class MarsagliaTsangWangDiscreteSampler extends Object
Sampler for a discrete distribution using an optimised look-up table.- The method requires 30-bit integer probabilities that sum to 230 as described in George Marsaglia, Wai Wan Tsang, Jingbo Wang (2004) Fast Generation of Discrete Random Variables. Journal of Statistical Software. Vol. 11, Issue. 3, pp. 1-11.
Sampling uses 1 call to
UniformRandomProvider.nextInt()
.Memory requirements depend on the maximum number of possible sample values,
n
, and the values for the probabilities. Storage is optimised forn
. The worst case scenario is a uniform distribution of the maximum sample size. This is capped at 0.06MB forn <=
28, 17.0MB forn <=
216, and 4.3GB forn <=
230. Realistic requirements will be in the kB range.The sampler supports the following distributions:
- Enumerated distribution (probabilities must be provided for each sample)
- Poisson distribution up to
mean = 1024
- Binomial distribution up to
trials = 65535
- Since:
- 1.3
- See Also:
- Margsglia, et al (2004) JSS Vol. 11, Issue 3
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Nested Class Summary
Nested Classes Modifier and Type Class Description static class
MarsagliaTsangWangDiscreteSampler.Binomial
Create a sampler for the Binomial distribution.static class
MarsagliaTsangWangDiscreteSampler.Enumerated
Create a sampler for an enumerated distribution ofn
values each with an associated probability.static class
MarsagliaTsangWangDiscreteSampler.Poisson
Create a sampler for the Poisson distribution.
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