method
Draw samples from a binomial distribution.
Samples are drawn from a binomial distribution with specified parameters, n trials and p probability of success where n an integer >= 0 and p is in the interval [0,1]. (n may be input as a float, but it is truncated to an integer in use)
Parameter of the distribution, >= 0. Floats are also accepted, but they will be truncated to integers.
Parameter of the distribution, >= 0 and <=1.
Output shape. If the given shape is, e.g., (m, n, k), then m * n * k samples are drawn. If size is None (default), a single value is returned if n and p are both scalars. Otherwise, np.broadcast(n, p).size samples are drawn.
Drawn samples from the parameterized binomial distribution, where each sample is equal to the number of successes over the n trials.
See also
scipy.stats.binomprobability density function, distribution or cumulative density function, etc.
The probability mass function (PMF) for the binomial distribution is
where \(n\) is the number of trials, \(p\) is the probability of success, and \(N\) is the number of successes.
When estimating the standard error of a proportion in a population by using a random sample, the normal distribution works well unless the product p*n <=5, where p = population proportion estimate, and n = number of samples, in which case the binomial distribution is used instead. For example, a sample of 15 people shows 4 who are left handed, and 11 who are right handed. Then p = 4/15 = 27%. 0.27*15 = 4, so the binomial distribution should be used in this case.
Dalgaard, Peter, “Introductory Statistics with R”, Springer-Verlag, 2002.
Glantz, Stanton A. “Primer of Biostatistics.”, McGraw-Hill, Fifth Edition, 2002.
Lentner, Marvin, “Elementary Applied Statistics”, Bogden and Quigley, 1972.
Weisstein, Eric W. “Binomial Distribution.” From MathWorld–A Wolfram Web Resource. https://mathworld.wolfram.com/BinomialDistribution.html
Wikipedia, “Binomial distribution”, https://en.wikipedia.org/wiki/Binomial_distribution
Draw samples from the distribution:
>>> rng = np.random.default_rng() >>> n, p, size = 10, .5, 10000 >>> s = rng.binomial(n, p, 10000)
Assume a company drills 9 wild-cat oil exploration wells, each with an estimated probability of success of p=0.1. All nine wells fail. What is the probability of that happening?
Over size = 20,000 trials the probability of this happening is on average:
>>> n, p, size = 9, 0.1, 20000 >>> np.sum(rng.binomial(n=n, p=p, size=size) == 0)/size 0.39015 # may vary
The following can be used to visualize a sample with n=100, p=0.4 and the corresponding probability density function:
>>> import matplotlib.pyplot as plt >>> from scipy.stats import binom >>> n, p, size = 100, 0.4, 10000 >>> sample = rng.binomial(n, p, size=size) >>> count, bins, _ = plt.hist(sample, 30, density=True) >>> x = np.arange(n) >>> y = binom.pmf(x, n, p) >>> plt.plot(x, y, linewidth=2, color='r')
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https://numpy.org/doc/2.4/reference/random/generated/numpy.random.Generator.binomial.html