Old engine for Continuous Time Bayesian Networks. Superseded by reCTBN. 🐍
https://github.com/madlabunimib/PyCTBN
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156 lines
4.0 KiB
156 lines
4.0 KiB
4 years ago
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"""
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Utilities for generating random numbers, random sequences, and
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random selections.
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"""
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import networkx as nx
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from networkx.utils import py_random_state
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# The same helpers for choosing random sequences from distributions
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# uses Python's random module
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# https://docs.python.org/3/library/random.html
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@py_random_state(2)
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def powerlaw_sequence(n, exponent=2.0, seed=None):
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"""
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Return sample sequence of length n from a power law distribution.
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"""
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return [seed.paretovariate(exponent - 1) for i in range(n)]
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@py_random_state(2)
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def zipf_rv(alpha, xmin=1, seed=None):
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r"""Returns a random value chosen from the Zipf distribution.
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The return value is an integer drawn from the probability distribution
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.. math::
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p(x)=\frac{x^{-\alpha}}{\zeta(\alpha, x_{\min})},
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where $\zeta(\alpha, x_{\min})$ is the Hurwitz zeta function.
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Parameters
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----------
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alpha : float
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Exponent value of the distribution
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xmin : int
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Minimum value
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seed : integer, random_state, or None (default)
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Indicator of random number generation state.
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See :ref:`Randomness<randomness>`.
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Returns
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-------
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x : int
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Random value from Zipf distribution
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Raises
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------
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ValueError:
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If xmin < 1 or
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If alpha <= 1
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Notes
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-----
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The rejection algorithm generates random values for a the power-law
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distribution in uniformly bounded expected time dependent on
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parameters. See [1]_ for details on its operation.
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Examples
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--------
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>>> nx.utils.zipf_rv(alpha=2, xmin=3, seed=42)
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8
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References
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----------
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.. [1] Luc Devroye, Non-Uniform Random Variate Generation,
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Springer-Verlag, New York, 1986.
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"""
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if xmin < 1:
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raise ValueError("xmin < 1")
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if alpha <= 1:
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raise ValueError("a <= 1.0")
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a1 = alpha - 1.0
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b = 2 ** a1
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while True:
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u = 1.0 - seed.random() # u in (0,1]
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v = seed.random() # v in [0,1)
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x = int(xmin * u ** -(1.0 / a1))
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t = (1.0 + (1.0 / x)) ** a1
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if v * x * (t - 1.0) / (b - 1.0) <= t / b:
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break
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return x
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def cumulative_distribution(distribution):
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"""Returns normalized cumulative distribution from discrete distribution."""
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cdf = [0.0]
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psum = float(sum(distribution))
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for i in range(0, len(distribution)):
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cdf.append(cdf[i] + distribution[i] / psum)
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return cdf
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@py_random_state(3)
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def discrete_sequence(n, distribution=None, cdistribution=None, seed=None):
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"""
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Return sample sequence of length n from a given discrete distribution
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or discrete cumulative distribution.
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One of the following must be specified.
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distribution = histogram of values, will be normalized
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cdistribution = normalized discrete cumulative distribution
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"""
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import bisect
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if cdistribution is not None:
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cdf = cdistribution
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elif distribution is not None:
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cdf = cumulative_distribution(distribution)
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else:
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raise nx.NetworkXError(
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"discrete_sequence: distribution or cdistribution missing"
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)
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# get a uniform random number
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inputseq = [seed.random() for i in range(n)]
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# choose from CDF
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seq = [bisect.bisect_left(cdf, s) - 1 for s in inputseq]
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return seq
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@py_random_state(2)
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def random_weighted_sample(mapping, k, seed=None):
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"""Returns k items without replacement from a weighted sample.
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The input is a dictionary of items with weights as values.
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"""
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if k > len(mapping):
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raise ValueError("sample larger than population")
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sample = set()
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while len(sample) < k:
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sample.add(weighted_choice(mapping, seed))
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return list(sample)
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@py_random_state(1)
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def weighted_choice(mapping, seed=None):
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"""Returns a single element from a weighted sample.
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The input is a dictionary of items with weights as values.
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"""
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# use roulette method
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rnd = seed.random() * sum(mapping.values())
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for k, w in mapping.items():
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rnd -= w
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if rnd < 0:
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return k
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