| import itertools |
| from sympy.concrete.summations import Sum |
| from sympy.core.add import Add |
| from sympy.core.expr import Expr |
| from sympy.core.function import expand as _expand |
| from sympy.core.mul import Mul |
| from sympy.core.relational import Eq |
| from sympy.core.singleton import S |
| from sympy.core.symbol import Symbol |
| from sympy.integrals.integrals import Integral |
| from sympy.logic.boolalg import Not |
| from sympy.core.parameters import global_parameters |
| from sympy.core.sorting import default_sort_key |
| from sympy.core.sympify import _sympify |
| from sympy.core.relational import Relational |
| from sympy.logic.boolalg import Boolean |
| from sympy.stats import variance, covariance |
| from sympy.stats.rv import (RandomSymbol, pspace, dependent, |
| given, sampling_E, RandomIndexedSymbol, is_random, |
| PSpace, sampling_P, random_symbols) |
|
|
| __all__ = ['Probability', 'Expectation', 'Variance', 'Covariance'] |
|
|
|
|
| @is_random.register(Expr) |
| def _(x): |
| atoms = x.free_symbols |
| if len(atoms) == 1 and next(iter(atoms)) == x: |
| return False |
| return any(is_random(i) for i in atoms) |
|
|
| @is_random.register(RandomSymbol) |
| def _(x): |
| return True |
|
|
|
|
| class Probability(Expr): |
| """ |
| Symbolic expression for the probability. |
| |
| Examples |
| ======== |
| |
| >>> from sympy.stats import Probability, Normal |
| >>> from sympy import Integral |
| >>> X = Normal("X", 0, 1) |
| >>> prob = Probability(X > 1) |
| >>> prob |
| Probability(X > 1) |
| |
| Integral representation: |
| |
| >>> prob.rewrite(Integral) |
| Integral(sqrt(2)*exp(-_z**2/2)/(2*sqrt(pi)), (_z, 1, oo)) |
| |
| Evaluation of the integral: |
| |
| >>> prob.evaluate_integral() |
| sqrt(2)*(-sqrt(2)*sqrt(pi)*erf(sqrt(2)/2) + sqrt(2)*sqrt(pi))/(4*sqrt(pi)) |
| """ |
|
|
| is_commutative = True |
|
|
| def __new__(cls, prob, condition=None, **kwargs): |
| prob = _sympify(prob) |
| if condition is None: |
| obj = Expr.__new__(cls, prob) |
| else: |
| condition = _sympify(condition) |
| obj = Expr.__new__(cls, prob, condition) |
| obj._condition = condition |
| return obj |
|
|
| def doit(self, **hints): |
| condition = self.args[0] |
| given_condition = self._condition |
| numsamples = hints.get('numsamples', False) |
| evaluate = hints.get('evaluate', True) |
|
|
| if isinstance(condition, Not): |
| return S.One - self.func(condition.args[0], given_condition, |
| evaluate=evaluate).doit(**hints) |
|
|
| if condition.has(RandomIndexedSymbol): |
| return pspace(condition).probability(condition, given_condition, |
| evaluate=evaluate) |
|
|
| if isinstance(given_condition, RandomSymbol): |
| condrv = random_symbols(condition) |
| if len(condrv) == 1 and condrv[0] == given_condition: |
| from sympy.stats.frv_types import BernoulliDistribution |
| return BernoulliDistribution(self.func(condition).doit(**hints), 0, 1) |
| if any(dependent(rv, given_condition) for rv in condrv): |
| return Probability(condition, given_condition) |
| else: |
| return Probability(condition).doit() |
|
|
| if given_condition is not None and \ |
| not isinstance(given_condition, (Relational, Boolean)): |
| raise ValueError("%s is not a relational or combination of relationals" |
| % (given_condition)) |
|
|
| if given_condition == False or condition is S.false: |
| return S.Zero |
| if not isinstance(condition, (Relational, Boolean)): |
| raise ValueError("%s is not a relational or combination of relationals" |
| % (condition)) |
| if condition is S.true: |
| return S.One |
|
|
| if numsamples: |
| return sampling_P(condition, given_condition, numsamples=numsamples) |
| if given_condition is not None: |
| |
| return Probability(given(condition, given_condition)).doit() |
|
|
| |
| if pspace(condition) == PSpace(): |
| return Probability(condition, given_condition) |
|
|
| result = pspace(condition).probability(condition) |
| if hasattr(result, 'doit') and evaluate: |
| return result.doit() |
| else: |
| return result |
|
|
| def _eval_rewrite_as_Integral(self, arg, condition=None, **kwargs): |
| return self.func(arg, condition=condition).doit(evaluate=False) |
|
|
| _eval_rewrite_as_Sum = _eval_rewrite_as_Integral |
|
|
| def evaluate_integral(self): |
| return self.rewrite(Integral).doit() |
|
|
|
|
| class Expectation(Expr): |
| """ |
| Symbolic expression for the expectation. |
| |
| Examples |
| ======== |
| |
| >>> from sympy.stats import Expectation, Normal, Probability, Poisson |
| >>> from sympy import symbols, Integral, Sum |
| >>> mu = symbols("mu") |
| >>> sigma = symbols("sigma", positive=True) |
| >>> X = Normal("X", mu, sigma) |
| >>> Expectation(X) |
| Expectation(X) |
| >>> Expectation(X).evaluate_integral().simplify() |
| mu |
| |
| To get the integral expression of the expectation: |
| |
| >>> Expectation(X).rewrite(Integral) |
| Integral(sqrt(2)*X*exp(-(X - mu)**2/(2*sigma**2))/(2*sqrt(pi)*sigma), (X, -oo, oo)) |
| |
| The same integral expression, in more abstract terms: |
| |
| >>> Expectation(X).rewrite(Probability) |
| Integral(x*Probability(Eq(X, x)), (x, -oo, oo)) |
| |
| To get the Summation expression of the expectation for discrete random variables: |
| |
| >>> lamda = symbols('lamda', positive=True) |
| >>> Z = Poisson('Z', lamda) |
| >>> Expectation(Z).rewrite(Sum) |
| Sum(Z*lamda**Z*exp(-lamda)/factorial(Z), (Z, 0, oo)) |
| |
| This class is aware of some properties of the expectation: |
| |
| >>> from sympy.abc import a |
| >>> Expectation(a*X) |
| Expectation(a*X) |
| >>> Y = Normal("Y", 1, 2) |
| >>> Expectation(X + Y) |
| Expectation(X + Y) |
| |
| To expand the ``Expectation`` into its expression, use ``expand()``: |
| |
| >>> Expectation(X + Y).expand() |
| Expectation(X) + Expectation(Y) |
| >>> Expectation(a*X + Y).expand() |
| a*Expectation(X) + Expectation(Y) |
| >>> Expectation(a*X + Y) |
| Expectation(a*X + Y) |
| >>> Expectation((X + Y)*(X - Y)).expand() |
| Expectation(X**2) - Expectation(Y**2) |
| |
| To evaluate the ``Expectation``, use ``doit()``: |
| |
| >>> Expectation(X + Y).doit() |
| mu + 1 |
| >>> Expectation(X + Expectation(Y + Expectation(2*X))).doit() |
| 3*mu + 1 |
| |
| To prevent evaluating nested ``Expectation``, use ``doit(deep=False)`` |
| |
| >>> Expectation(X + Expectation(Y)).doit(deep=False) |
| mu + Expectation(Expectation(Y)) |
| >>> Expectation(X + Expectation(Y + Expectation(2*X))).doit(deep=False) |
| mu + Expectation(Expectation(Expectation(2*X) + Y)) |
| |
| """ |
|
|
| def __new__(cls, expr, condition=None, **kwargs): |
| expr = _sympify(expr) |
| if expr.is_Matrix: |
| from sympy.stats.symbolic_multivariate_probability import ExpectationMatrix |
| return ExpectationMatrix(expr, condition) |
| if condition is None: |
| if not is_random(expr): |
| return expr |
| obj = Expr.__new__(cls, expr) |
| else: |
| condition = _sympify(condition) |
| obj = Expr.__new__(cls, expr, condition) |
| obj._condition = condition |
| return obj |
|
|
| def _eval_is_commutative(self): |
| return(self.args[0].is_commutative) |
|
|
| def expand(self, **hints): |
| expr = self.args[0] |
| condition = self._condition |
|
|
| if not is_random(expr): |
| return expr |
|
|
| if isinstance(expr, Add): |
| return Add.fromiter(Expectation(a, condition=condition).expand() |
| for a in expr.args) |
|
|
| expand_expr = _expand(expr) |
| if isinstance(expand_expr, Add): |
| return Add.fromiter(Expectation(a, condition=condition).expand() |
| for a in expand_expr.args) |
|
|
| elif isinstance(expr, Mul): |
| rv = [] |
| nonrv = [] |
| for a in expr.args: |
| if is_random(a): |
| rv.append(a) |
| else: |
| nonrv.append(a) |
| return Mul.fromiter(nonrv)*Expectation(Mul.fromiter(rv), condition=condition) |
|
|
| return self |
|
|
| def doit(self, **hints): |
| deep = hints.get('deep', True) |
| condition = self._condition |
| expr = self.args[0] |
| numsamples = hints.get('numsamples', False) |
| evaluate = hints.get('evaluate', True) |
|
|
| if deep: |
| expr = expr.doit(**hints) |
|
|
| if not is_random(expr) or isinstance(expr, Expectation): |
| return expr |
| if numsamples: |
| evalf = hints.get('evalf', True) |
| return sampling_E(expr, condition, numsamples=numsamples, evalf=evalf) |
|
|
| if expr.has(RandomIndexedSymbol): |
| return pspace(expr).compute_expectation(expr, condition) |
|
|
| |
| if condition is not None: |
| return self.func(given(expr, condition)).doit(**hints) |
|
|
| |
|
|
| if expr.is_Add: |
| return Add(*[self.func(arg, condition).doit(**hints) |
| if not isinstance(arg, Expectation) else self.func(arg, condition) |
| for arg in expr.args]) |
| if expr.is_Mul: |
| if expr.atoms(Expectation): |
| return expr |
|
|
| if pspace(expr) == PSpace(): |
| return self.func(expr) |
| |
| result = pspace(expr).compute_expectation(expr, evaluate=evaluate) |
| if hasattr(result, 'doit') and evaluate: |
| return result.doit(**hints) |
| else: |
| return result |
|
|
|
|
| def _eval_rewrite_as_Probability(self, arg, condition=None, **kwargs): |
| rvs = arg.atoms(RandomSymbol) |
| if len(rvs) > 1: |
| raise NotImplementedError() |
| if len(rvs) == 0: |
| return arg |
|
|
| rv = rvs.pop() |
| if rv.pspace is None: |
| raise ValueError("Probability space not known") |
|
|
| symbol = rv.symbol |
| if symbol.name[0].isupper(): |
| symbol = Symbol(symbol.name.lower()) |
| else : |
| symbol = Symbol(symbol.name + "_1") |
|
|
| if rv.pspace.is_Continuous: |
| return Integral(arg.replace(rv, symbol)*Probability(Eq(rv, symbol), condition), (symbol, rv.pspace.domain.set.inf, rv.pspace.domain.set.sup)) |
| else: |
| if rv.pspace.is_Finite: |
| raise NotImplementedError |
| else: |
| return Sum(arg.replace(rv, symbol)*Probability(Eq(rv, symbol), condition), (symbol, rv.pspace.domain.set.inf, rv.pspace.set.sup)) |
|
|
| def _eval_rewrite_as_Integral(self, arg, condition=None, evaluate=False, **kwargs): |
| return self.func(arg, condition=condition).doit(deep=False, evaluate=evaluate) |
|
|
| _eval_rewrite_as_Sum = _eval_rewrite_as_Integral |
|
|
| def evaluate_integral(self): |
| return self.rewrite(Integral).doit() |
|
|
| evaluate_sum = evaluate_integral |
|
|
| class Variance(Expr): |
| """ |
| Symbolic expression for the variance. |
| |
| Examples |
| ======== |
| |
| >>> from sympy import symbols, Integral |
| >>> from sympy.stats import Normal, Expectation, Variance, Probability |
| >>> mu = symbols("mu", positive=True) |
| >>> sigma = symbols("sigma", positive=True) |
| >>> X = Normal("X", mu, sigma) |
| >>> Variance(X) |
| Variance(X) |
| >>> Variance(X).evaluate_integral() |
| sigma**2 |
| |
| Integral representation of the underlying calculations: |
| |
| >>> Variance(X).rewrite(Integral) |
| Integral(sqrt(2)*(X - Integral(sqrt(2)*X*exp(-(X - mu)**2/(2*sigma**2))/(2*sqrt(pi)*sigma), (X, -oo, oo)))**2*exp(-(X - mu)**2/(2*sigma**2))/(2*sqrt(pi)*sigma), (X, -oo, oo)) |
| |
| Integral representation, without expanding the PDF: |
| |
| >>> Variance(X).rewrite(Probability) |
| -Integral(x*Probability(Eq(X, x)), (x, -oo, oo))**2 + Integral(x**2*Probability(Eq(X, x)), (x, -oo, oo)) |
| |
| Rewrite the variance in terms of the expectation |
| |
| >>> Variance(X).rewrite(Expectation) |
| -Expectation(X)**2 + Expectation(X**2) |
| |
| Some transformations based on the properties of the variance may happen: |
| |
| >>> from sympy.abc import a |
| >>> Y = Normal("Y", 0, 1) |
| >>> Variance(a*X) |
| Variance(a*X) |
| |
| To expand the variance in its expression, use ``expand()``: |
| |
| >>> Variance(a*X).expand() |
| a**2*Variance(X) |
| >>> Variance(X + Y) |
| Variance(X + Y) |
| >>> Variance(X + Y).expand() |
| 2*Covariance(X, Y) + Variance(X) + Variance(Y) |
| |
| """ |
| def __new__(cls, arg, condition=None, **kwargs): |
| arg = _sympify(arg) |
|
|
| if arg.is_Matrix: |
| from sympy.stats.symbolic_multivariate_probability import VarianceMatrix |
| return VarianceMatrix(arg, condition) |
| if condition is None: |
| obj = Expr.__new__(cls, arg) |
| else: |
| condition = _sympify(condition) |
| obj = Expr.__new__(cls, arg, condition) |
| obj._condition = condition |
| return obj |
|
|
| def _eval_is_commutative(self): |
| return self.args[0].is_commutative |
|
|
| def expand(self, **hints): |
| arg = self.args[0] |
| condition = self._condition |
|
|
| if not is_random(arg): |
| return S.Zero |
|
|
| if isinstance(arg, RandomSymbol): |
| return self |
| elif isinstance(arg, Add): |
| rv = [] |
| for a in arg.args: |
| if is_random(a): |
| rv.append(a) |
| variances = Add(*(Variance(xv, condition).expand() for xv in rv)) |
| map_to_covar = lambda x: 2*Covariance(*x, condition=condition).expand() |
| covariances = Add(*map(map_to_covar, itertools.combinations(rv, 2))) |
| return variances + covariances |
| elif isinstance(arg, Mul): |
| nonrv = [] |
| rv = [] |
| for a in arg.args: |
| if is_random(a): |
| rv.append(a) |
| else: |
| nonrv.append(a**2) |
| if len(rv) == 0: |
| return S.Zero |
| return Mul.fromiter(nonrv)*Variance(Mul.fromiter(rv), condition) |
|
|
| |
| return self |
|
|
| def _eval_rewrite_as_Expectation(self, arg, condition=None, **kwargs): |
| e1 = Expectation(arg**2, condition) |
| e2 = Expectation(arg, condition)**2 |
| return e1 - e2 |
|
|
| def _eval_rewrite_as_Probability(self, arg, condition=None, **kwargs): |
| return self.rewrite(Expectation).rewrite(Probability) |
|
|
| def _eval_rewrite_as_Integral(self, arg, condition=None, **kwargs): |
| return variance(self.args[0], self._condition, evaluate=False) |
|
|
| _eval_rewrite_as_Sum = _eval_rewrite_as_Integral |
|
|
| def evaluate_integral(self): |
| return self.rewrite(Integral).doit() |
|
|
|
|
| class Covariance(Expr): |
| """ |
| Symbolic expression for the covariance. |
| |
| Examples |
| ======== |
| |
| >>> from sympy.stats import Covariance |
| >>> from sympy.stats import Normal |
| >>> X = Normal("X", 3, 2) |
| >>> Y = Normal("Y", 0, 1) |
| >>> Z = Normal("Z", 0, 1) |
| >>> W = Normal("W", 0, 1) |
| >>> cexpr = Covariance(X, Y) |
| >>> cexpr |
| Covariance(X, Y) |
| |
| Evaluate the covariance, `X` and `Y` are independent, |
| therefore zero is the result: |
| |
| >>> cexpr.evaluate_integral() |
| 0 |
| |
| Rewrite the covariance expression in terms of expectations: |
| |
| >>> from sympy.stats import Expectation |
| >>> cexpr.rewrite(Expectation) |
| Expectation(X*Y) - Expectation(X)*Expectation(Y) |
| |
| In order to expand the argument, use ``expand()``: |
| |
| >>> from sympy.abc import a, b, c, d |
| >>> Covariance(a*X + b*Y, c*Z + d*W) |
| Covariance(a*X + b*Y, c*Z + d*W) |
| >>> Covariance(a*X + b*Y, c*Z + d*W).expand() |
| a*c*Covariance(X, Z) + a*d*Covariance(W, X) + b*c*Covariance(Y, Z) + b*d*Covariance(W, Y) |
| |
| This class is aware of some properties of the covariance: |
| |
| >>> Covariance(X, X).expand() |
| Variance(X) |
| >>> Covariance(a*X, b*Y).expand() |
| a*b*Covariance(X, Y) |
| """ |
|
|
| def __new__(cls, arg1, arg2, condition=None, **kwargs): |
| arg1 = _sympify(arg1) |
| arg2 = _sympify(arg2) |
|
|
| if arg1.is_Matrix or arg2.is_Matrix: |
| from sympy.stats.symbolic_multivariate_probability import CrossCovarianceMatrix |
| return CrossCovarianceMatrix(arg1, arg2, condition) |
|
|
| if kwargs.pop('evaluate', global_parameters.evaluate): |
| arg1, arg2 = sorted([arg1, arg2], key=default_sort_key) |
|
|
| if condition is None: |
| obj = Expr.__new__(cls, arg1, arg2) |
| else: |
| condition = _sympify(condition) |
| obj = Expr.__new__(cls, arg1, arg2, condition) |
| obj._condition = condition |
| return obj |
|
|
| def _eval_is_commutative(self): |
| return self.args[0].is_commutative |
|
|
| def expand(self, **hints): |
| arg1 = self.args[0] |
| arg2 = self.args[1] |
| condition = self._condition |
|
|
| if arg1 == arg2: |
| return Variance(arg1, condition).expand() |
|
|
| if not is_random(arg1): |
| return S.Zero |
| if not is_random(arg2): |
| return S.Zero |
|
|
| arg1, arg2 = sorted([arg1, arg2], key=default_sort_key) |
|
|
| if isinstance(arg1, RandomSymbol) and isinstance(arg2, RandomSymbol): |
| return Covariance(arg1, arg2, condition) |
|
|
| coeff_rv_list1 = self._expand_single_argument(arg1.expand()) |
| coeff_rv_list2 = self._expand_single_argument(arg2.expand()) |
|
|
| addends = [a*b*Covariance(*sorted([r1, r2], key=default_sort_key), condition=condition) |
| for (a, r1) in coeff_rv_list1 for (b, r2) in coeff_rv_list2] |
| return Add.fromiter(addends) |
|
|
| @classmethod |
| def _expand_single_argument(cls, expr): |
| |
| if isinstance(expr, RandomSymbol): |
| return [(S.One, expr)] |
| elif isinstance(expr, Add): |
| outval = [] |
| for a in expr.args: |
| if isinstance(a, Mul): |
| outval.append(cls._get_mul_nonrv_rv_tuple(a)) |
| elif is_random(a): |
| outval.append((S.One, a)) |
|
|
| return outval |
| elif isinstance(expr, Mul): |
| return [cls._get_mul_nonrv_rv_tuple(expr)] |
| elif is_random(expr): |
| return [(S.One, expr)] |
|
|
| @classmethod |
| def _get_mul_nonrv_rv_tuple(cls, m): |
| rv = [] |
| nonrv = [] |
| for a in m.args: |
| if is_random(a): |
| rv.append(a) |
| else: |
| nonrv.append(a) |
| return (Mul.fromiter(nonrv), Mul.fromiter(rv)) |
|
|
| def _eval_rewrite_as_Expectation(self, arg1, arg2, condition=None, **kwargs): |
| e1 = Expectation(arg1*arg2, condition) |
| e2 = Expectation(arg1, condition)*Expectation(arg2, condition) |
| return e1 - e2 |
|
|
| def _eval_rewrite_as_Probability(self, arg1, arg2, condition=None, **kwargs): |
| return self.rewrite(Expectation).rewrite(Probability) |
|
|
| def _eval_rewrite_as_Integral(self, arg1, arg2, condition=None, **kwargs): |
| return covariance(self.args[0], self.args[1], self._condition, evaluate=False) |
|
|
| _eval_rewrite_as_Sum = _eval_rewrite_as_Integral |
|
|
| def evaluate_integral(self): |
| return self.rewrite(Integral).doit() |
|
|
|
|
| class Moment(Expr): |
| """ |
| Symbolic class for Moment |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Symbol, Integral |
| >>> from sympy.stats import Normal, Expectation, Probability, Moment |
| >>> mu = Symbol('mu', real=True) |
| >>> sigma = Symbol('sigma', positive=True) |
| >>> X = Normal('X', mu, sigma) |
| >>> M = Moment(X, 3, 1) |
| |
| To evaluate the result of Moment use `doit`: |
| |
| >>> M.doit() |
| mu**3 - 3*mu**2 + 3*mu*sigma**2 + 3*mu - 3*sigma**2 - 1 |
| |
| Rewrite the Moment expression in terms of Expectation: |
| |
| >>> M.rewrite(Expectation) |
| Expectation((X - 1)**3) |
| |
| Rewrite the Moment expression in terms of Probability: |
| |
| >>> M.rewrite(Probability) |
| Integral((x - 1)**3*Probability(Eq(X, x)), (x, -oo, oo)) |
| |
| Rewrite the Moment expression in terms of Integral: |
| |
| >>> M.rewrite(Integral) |
| Integral(sqrt(2)*(X - 1)**3*exp(-(X - mu)**2/(2*sigma**2))/(2*sqrt(pi)*sigma), (X, -oo, oo)) |
| |
| """ |
| def __new__(cls, X, n, c=0, condition=None, **kwargs): |
| X = _sympify(X) |
| n = _sympify(n) |
| c = _sympify(c) |
| if condition is not None: |
| condition = _sympify(condition) |
| return super().__new__(cls, X, n, c, condition) |
| else: |
| return super().__new__(cls, X, n, c) |
|
|
| def doit(self, **hints): |
| return self.rewrite(Expectation).doit(**hints) |
|
|
| def _eval_rewrite_as_Expectation(self, X, n, c=0, condition=None, **kwargs): |
| return Expectation((X - c)**n, condition) |
|
|
| def _eval_rewrite_as_Probability(self, X, n, c=0, condition=None, **kwargs): |
| return self.rewrite(Expectation).rewrite(Probability) |
|
|
| def _eval_rewrite_as_Integral(self, X, n, c=0, condition=None, **kwargs): |
| return self.rewrite(Expectation).rewrite(Integral) |
|
|
|
|
| class CentralMoment(Expr): |
| """ |
| Symbolic class Central Moment |
| |
| Examples |
| ======== |
| |
| >>> from sympy import Symbol, Integral |
| >>> from sympy.stats import Normal, Expectation, Probability, CentralMoment |
| >>> mu = Symbol('mu', real=True) |
| >>> sigma = Symbol('sigma', positive=True) |
| >>> X = Normal('X', mu, sigma) |
| >>> CM = CentralMoment(X, 4) |
| |
| To evaluate the result of CentralMoment use `doit`: |
| |
| >>> CM.doit().simplify() |
| 3*sigma**4 |
| |
| Rewrite the CentralMoment expression in terms of Expectation: |
| |
| >>> CM.rewrite(Expectation) |
| Expectation((-Expectation(X) + X)**4) |
| |
| Rewrite the CentralMoment expression in terms of Probability: |
| |
| >>> CM.rewrite(Probability) |
| Integral((x - Integral(x*Probability(True), (x, -oo, oo)))**4*Probability(Eq(X, x)), (x, -oo, oo)) |
| |
| Rewrite the CentralMoment expression in terms of Integral: |
| |
| >>> CM.rewrite(Integral) |
| Integral(sqrt(2)*(X - Integral(sqrt(2)*X*exp(-(X - mu)**2/(2*sigma**2))/(2*sqrt(pi)*sigma), (X, -oo, oo)))**4*exp(-(X - mu)**2/(2*sigma**2))/(2*sqrt(pi)*sigma), (X, -oo, oo)) |
| |
| """ |
| def __new__(cls, X, n, condition=None, **kwargs): |
| X = _sympify(X) |
| n = _sympify(n) |
| if condition is not None: |
| condition = _sympify(condition) |
| return super().__new__(cls, X, n, condition) |
| else: |
| return super().__new__(cls, X, n) |
|
|
| def doit(self, **hints): |
| return self.rewrite(Expectation).doit(**hints) |
|
|
| def _eval_rewrite_as_Expectation(self, X, n, condition=None, **kwargs): |
| mu = Expectation(X, condition, **kwargs) |
| return Moment(X, n, mu, condition, **kwargs).rewrite(Expectation) |
|
|
| def _eval_rewrite_as_Probability(self, X, n, condition=None, **kwargs): |
| return self.rewrite(Expectation).rewrite(Probability) |
|
|
| def _eval_rewrite_as_Integral(self, X, n, condition=None, **kwargs): |
| return self.rewrite(Expectation).rewrite(Integral) |
|
|