Esempio n. 1
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 def variance(self):
     variances = tuple(p.variance() for p in self.parts)
     means = tuple(p.mean() for p in self.parts)
     if any(d is None for d in variances) or any(m is None for m in means):
         return None
     sq_means = tuple(m * m for m in means)
     pos = zip(variances, sq_means)
     return sum(prod(x) for x in product(*pos)) - prod(sq_means)
Esempio n. 2
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 def probability(self, k) -> Optional[float]:
     cdf = [p.cumulative_density(k) for p in self.parts]
     prob = [p.probability(k) for p in self.parts]
     if any(x is None for x in cdf) or any(x is None for x in prob):
         return None
     inv_cdf = [1 - x for x in cdf]
     prod_inv_cdf = prod(inv_cdf)
     return sum(
         (prod_inv_cdf / icdf) * p for (icdf, p) in zip(inv_cdf, prob))
Esempio n. 3
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 def sample_probability(self,
                        k,
                        sample_size=4096,
                        epsilon=None) -> Optional[float]:
     cdf = [
         p.approx_cumulative_density(k, sample_size=sample_size)
         for p in self.parts
     ]
     prob = [
         p.approx_probability(k, sample_size=sample_size, epsilon=epsilon)
         for p in self.parts
     ]
     inv_cdf = [1 - x for x in cdf]
     prod_inv_cdf = prod(inv_cdf)
     return sum(
         (prod_inv_cdf / icdf) * p for (icdf, p) in zip(inv_cdf, prob))
Esempio n. 4
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    def sample_probability(self, k, **kwargs):
        discrete_finite_parts = []
        discrete_support_spaces = []
        other_parts = []
        for p in self.parts:
            ss = p.support_space()
            if ss is None or not ss.is_finite():
                other_parts.append(p)
            else:
                discrete_support_spaces.append(ss)
                discrete_finite_parts.append(p)

        if not discrete_finite_parts:
            return super().sample_probability(k, **kwargs)

        if not other_parts:
            other_parts = discrete_finite_parts[-1:]
            del discrete_finite_parts[-1]
            del discrete_support_spaces[-1]

        other = self.func(other_parts)
        total = 0

        for possibility in product(*discrete_support_spaces):
            probs = tuple(
                part.approx_probability(poss, **kwargs)
                for (part, poss) in zip(discrete_finite_parts, possibility))
            if None in probs:
                return None
            poss_prob = prod(probs)
            if poss_prob == 0:
                continue
            req = self.rev_func(k, possibility)
            if req is None:
                continue
            other_prob = other.approx_probability(req, **kwargs)
            if other_prob is None:
                return None
            total += poss_prob * other_prob
        return total
Esempio n. 5
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 def probability(self, k):
     finite_parts = []
     finite_spaces = []
     other_parts = []
     for p in self.parts:
         ss = p.support_space()
         if ss is None or not ss.is_finite():
             other_parts.append(p)
             if len(other_parts) >= 2:
                 return None
         else:
             finite_spaces.append(ss)
             finite_parts.append(p)
     assert finite_parts
     if not other_parts:
         other_parts = finite_parts[-1:]
         del finite_parts[-1]
         del finite_spaces[-1]
     other, = other_parts
     total = 0
     for possibility in product(*finite_spaces):
         probs = tuple(
             part.probability(poss)
             for (part, poss) in zip(finite_parts, possibility))
         if None in probs:
             return None
         poss_prob = prod(probs)
         if poss_prob == 0:
             continue
         req = self.rev_func(k, possibility)
         if req is None:
             continue
         other_prob = other.probability(req)
         if other_prob is None:
             return None
         total += poss_prob * other_prob
     return total
Esempio n. 6
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 def func(cls, parts):
     return prod(parts)
Esempio n. 7
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 def func(cls, args):
     return prod(args)
Esempio n. 8
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 def rev_func(cls, target, parts):
     if any(p == 0 for p in parts):
         return None
     return target / prod(parts)
Esempio n. 9
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 def __init__(self, parts: Iterable[BufferedDistribution[T]]):
     ProductDistribution.__init__(self, parts)
     BufferedDistribution.__init__(self,
                                   prod(p.bufferer for p in self.parts))