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    ohq6                     @   sz  d dl mZ d dlmZ d dlmZ d dlmZ d dlm	Z	 d dl
mZmZ d dlmZ d dlmZ d d	lmZ d d
lmZ ddlmZmZmZmZmZmZmZmZmZmZm Z m!Z!m"Z"m#Z#m$Z$m%Z%m&Z&m'Z'm(Z( g dZ)d+ddddZ*d,ddZ+d,ddZ,e,Z-d,ddZ.d,ddZ/d,ddZ0d,ddddZ1d,dd Z2d,d!d"Z3d,d#d$Z4d,d%d&Z5d-d'd(Z6d,d)d*Z7eZ8eZ9e.Z:dS ).    )	FiniteSet)Rational)Eq)Dummy)FallingFactorial)explog)sqrt)piecewise_fold)Integral)solveset   )probabilityexpectationdensitywheregivenpspacecdfPSpacecharacteristic_functionsamplesample_iterrandom_symbolsindependent	dependentsampling_densitymoment_generating_functionquantile	is_randomsample_stochastic_process)PEHr   r   r   r   r   r   r   r   variancestdskewnesskurtosis
covariancer   entropymedianr   r   correlationfactorial_momentmomentcmomentr   r   smomentr   r    NT)evaluatec                K   s6   ddl m} |r|| ||| S || |||tS )a[  
    Return the nth moment of a random expression about c.

    .. math::
        moment(X, c, n) = E((X-c)^{n})

    Default value of c is 0.

    Examples
    ========

    >>> from sympy.stats import Die, moment, E
    >>> X = Die('X', 6)
    >>> moment(X, 1, 6)
    -5/2
    >>> moment(X, 2)
    91/6
    >>> moment(X, 1) == E(X)
    True
    r   )Moment) sympy.stats.symbolic_probabilityr1   doitrewriter   )Xnc	conditionr0   kwargsr1    r:   l/var/www/html/construction_image-detection-poc/venv/lib/python3.10/site-packages/sympy/stats/rv_interface.pyr-      s   r-   c                 K   s@   t | rt| t krddlm} || |S t| d|fi |S )a  
    Variance of a random expression.

    .. math::
        variance(X) = E((X-E(X))^{2})

    Examples
    ========

    >>> from sympy.stats import Die, Bernoulli, variance
    >>> from sympy import simplify, Symbol

    >>> X = Die('X', 6)
    >>> p = Symbol('p')
    >>> B = Bernoulli('B', p, 1, 0)

    >>> variance(2*X)
    35/3

    >>> simplify(variance(B))
    p*(1 - p)
    r   )Variance   )r   r   r   r2   r<   r.   )r5   r8   r9   r<   r:   r:   r;   r$   5   s   
r$   c                 K   s   t t| |fi |S )aK  
    Standard Deviation of a random expression

    .. math::
        std(X) = \sqrt(E((X-E(X))^{2}))

    Examples
    ========

    >>> from sympy.stats import Bernoulli, std
    >>> from sympy import Symbol, simplify

    >>> p = Symbol('p')
    >>> B = Bernoulli('B', p, 1, 0)

    >>> simplify(std(B))
    sqrt(p*(1 - p))
    )r	   r$   r5   r8   r9   r:   r:   r;   standard_deviationS   s   r?   c                    sZ   t | |fi |}|dtd t|tr#t fdd| D S tt||   S )an  
    Calculuates entropy of a probability distribution.

    Parameters
    ==========

    expression : the random expression whose entropy is to be calculated
    condition : optional, to specify conditions on random expression
    b: base of the logarithm, optional
       By default, it is taken as Euler's number

    Returns
    =======

    result : Entropy of the expression, a constant

    Examples
    ========

    >>> from sympy.stats import Normal, Die, entropy
    >>> X = Normal('X', 0, 1)
    >>> entropy(X)
    log(2)/2 + 1/2 + log(pi)/2

    >>> D = Die('D', 4)
    >>> entropy(D)
    log(4)

    References
    ==========

    .. [1] https://en.wikipedia.org/wiki/Entropy_%28information_theory%29
    .. [2] https://www.crmarsh.com/static/pdf/Charles_Marsh_Continuous_Entropy.pdf
    .. [3] https://kconrad.math.uconn.edu/blurbs/analysis/entropypost.pdf
    br   c                 3   s     | ]}| t |  V  qd S N)r   ).0probbaser:   r;   	<genexpr>   s    zentropy.<locals>.<genexpr>)	r   getr   
isinstancedictsumvaluesr   r   )exprr8   r9   pdfr:   rD   r;   r)   i   s
   $
r)   c                 K   s~   t | rt| t kst |r"t|t kr"ddlm} || ||S t| t| |fi | |t||fi |  |fi |S )aE  
    Covariance of two random expressions.

    Explanation
    ===========

    The expectation that the two variables will rise and fall together

    .. math::
        covariance(X,Y) = E((X-E(X)) (Y-E(Y)))

    Examples
    ========

    >>> from sympy.stats import Exponential, covariance
    >>> from sympy import Symbol

    >>> rate = Symbol('lambda', positive=True, real=True)
    >>> X = Exponential('X', rate)
    >>> Y = Exponential('Y', rate)

    >>> covariance(X, X)
    lambda**(-2)
    >>> covariance(X, Y)
    0
    >>> covariance(X, Y + rate*X)
    1/lambda
    r   )
Covariance)r   r   r   r2   rN   r   )r5   Yr8   r9   rN   r:   r:   r;   r(      s   ,r(   c                 K   s8   t | ||fi |t| |fi |t||fi |  S )a  
    Correlation of two random expressions, also known as correlation
    coefficient or Pearson's correlation.

    Explanation
    ===========

    The normalized expectation that the two variables will rise
    and fall together

    .. math::
        correlation(X,Y) = E((X-E(X))(Y-E(Y)) / (\sigma_x  \sigma_y))

    Examples
    ========

    >>> from sympy.stats import Exponential, correlation
    >>> from sympy import Symbol

    >>> rate = Symbol('lambda', positive=True, real=True)
    >>> X = Exponential('X', rate)
    >>> Y = Exponential('Y', rate)

    >>> correlation(X, X)
    1
    >>> correlation(X, Y)
    0
    >>> correlation(X, Y + rate*X)
    1/sqrt(1 + lambda**(-2))
    )r(   r%   )r5   rO   r8   r9   r:   r:   r;   r+      s   "r+   c                K   s2   ddl m} |r|| || S || ||tS )a\  
    Return the nth central moment of a random expression about its mean.

    .. math::
        cmoment(X, n) = E((X - E(X))^{n})

    Examples
    ========

    >>> from sympy.stats import Die, cmoment, variance
    >>> X = Die('X', 6)
    >>> cmoment(X, 3)
    0
    >>> cmoment(X, 2)
    35/12
    >>> cmoment(X, 2) == variance(X)
    True
    r   )CentralMoment)r2   rP   r3   r4   r   )r5   r6   r8   r0   r9   rP   r:   r:   r;   r.      s   r.   c                 K   s2   t | |fi |}d| | t| ||fi | S )a  
    Return the nth Standardized moment of a random expression.

    .. math::
        smoment(X, n) = E(((X - \mu)/\sigma_X)^{n})

    Examples
    ========

    >>> from sympy.stats import skewness, Exponential, smoment
    >>> from sympy import Symbol
    >>> rate = Symbol('lambda', positive=True, real=True)
    >>> Y = Exponential('Y', rate)
    >>> smoment(Y, 4)
    9
    >>> smoment(Y, 4) == smoment(3*Y, 4)
    True
    >>> smoment(Y, 3) == skewness(Y)
    True
    r   )r%   r.   )r5   r6   r8   r9   sigmar:   r:   r;   r/      s    r/   c                 K      t | dfd|i|S )aA  
    Measure of the asymmetry of the probability distribution.

    Explanation
    ===========

    Positive skew indicates that most of the values lie to the right of
    the mean.

    .. math::
        skewness(X) = E(((X - E(X))/\sigma_X)^{3})

    Parameters
    ==========

    condition : Expr containing RandomSymbols
            A conditional expression. skewness(X, X>0) is skewness of X given X > 0

    Examples
    ========

    >>> from sympy.stats import skewness, Exponential, Normal
    >>> from sympy import Symbol
    >>> X = Normal('X', 0, 1)
    >>> skewness(X)
    0
    >>> skewness(X, X > 0) # find skewness given X > 0
    (-sqrt(2)/sqrt(pi) + 4*sqrt(2)/pi**(3/2))/(1 - 2/pi)**(3/2)

    >>> rate = Symbol('lambda', positive=True, real=True)
    >>> Y = Exponential('Y', rate)
    >>> skewness(Y)
    2
       r8   r/   r>   r:   r:   r;   r&     s   #r&   c                 K   rR   )a  
    Characterizes the tails/outliers of a probability distribution.

    Explanation
    ===========

    Kurtosis of any univariate normal distribution is 3. Kurtosis less than
    3 means that the distribution produces fewer and less extreme outliers
    than the normal distribution.

    .. math::
        kurtosis(X) = E(((X - E(X))/\sigma_X)^{4})

    Parameters
    ==========

    condition : Expr containing RandomSymbols
            A conditional expression. kurtosis(X, X>0) is kurtosis of X given X > 0

    Examples
    ========

    >>> from sympy.stats import kurtosis, Exponential, Normal
    >>> from sympy import Symbol
    >>> X = Normal('X', 0, 1)
    >>> kurtosis(X)
    3
    >>> kurtosis(X, X > 0) # find kurtosis given X > 0
    (-4/pi - 12/pi**2 + 3)/(1 - 2/pi)**2

    >>> rate = Symbol('lamda', positive=True, real=True)
    >>> Y = Exponential('Y', rate)
    >>> kurtosis(Y)
    9

    References
    ==========

    .. [1] https://en.wikipedia.org/wiki/Kurtosis
    .. [2] https://mathworld.wolfram.com/Kurtosis.html
       r8   rT   r>   r:   r:   r;   r'   3  s   *r'   c                 K   s   t t| |fd|i|S )a  
    The factorial moment is a mathematical quantity defined as the expectation
    or average of the falling factorial of a random variable.

    .. math::
        factorial-moment(X, n) = E(X(X - 1)(X - 2)...(X - n + 1))

    Parameters
    ==========

    n: A natural number, n-th factorial moment.

    condition : Expr containing RandomSymbols
            A conditional expression.

    Examples
    ========

    >>> from sympy.stats import factorial_moment, Poisson, Binomial
    >>> from sympy import Symbol, S
    >>> lamda = Symbol('lamda')
    >>> X = Poisson('X', lamda)
    >>> factorial_moment(X, 2)
    lamda**2
    >>> Y = Binomial('Y', 2, S.Half)
    >>> factorial_moment(Y, 2)
    1/2
    >>> factorial_moment(Y, 2, Y > 1) # find factorial moment for Y > 1
    2

    References
    ==========

    .. [1] https://en.wikipedia.org/wiki/Factorial_moment
    .. [2] https://mathworld.wolfram.com/FactorialMoment.html
    r8   )r   r   )r5   r6   r8   r9   r:   r:   r;   r,   `  s   %r,   c                 K   s  t | s| S ddlm} ddlm} ddlm} tt| |rTt| 	| }g }|
 D ]#\}}	|	tddkrOd|	 t| t| | tddkrO|| q,t| S tt| ||fr|t| 	| }td}
tt||
tdd |
t| j}|S tdtt|  )	aN  
    Calculuates the median of the probability distribution.

    Explanation
    ===========

    Mathematically, median of Probability distribution is defined as all those
    values of `m` for which the following condition is satisfied

    .. math::
        P(X\leq m) \geq  \frac{1}{2} \text{ and} \text{ } P(X\geq m)\geq \frac{1}{2}

    Parameters
    ==========

    X: The random expression whose median is to be calculated.

    Returns
    =======

    The FiniteSet or an Interval which contains the median of the
    random expression.

    Examples
    ========

    >>> from sympy.stats import Normal, Die, median
    >>> N = Normal('N', 3, 1)
    >>> median(N)
    {3}
    >>> D = Die('D')
    >>> median(D)
    {3, 4}

    References
    ==========

    .. [1] https://en.wikipedia.org/wiki/Median#Probability_distributions

    r   )ContinuousPSpace)DiscretePSpace)FinitePSpacer   r=   xz$The median of %s is not implemented.)r   sympy.stats.crvrV   sympy.stats.drvrW   sympy.stats.frvrX   rH   r   compute_cdfitemsr   r   r   appendr   r   r   r
   setNotImplementedErrorstr)r5   r0   r9   rV   rW   rX   r   resultkeyvaluerY   r:   r:   r;   r*     s.   )
$r*   c                 K   s   t | t | |fi | |t ||fi |  |t ||fi |  |fi |}t| |fi |t||fi | t||fi | }|| S )a%  
    Calculates the co-skewness of three random variables.

    Explanation
    ===========

    Mathematically Coskewness is defined as

    .. math::
        coskewness(X,Y,Z)=\frac{E[(X-E[X]) * (Y-E[Y]) * (Z-E[Z])]} {\sigma_{X}\sigma_{Y}\sigma_{Z}}

    Parameters
    ==========

    X : RandomSymbol
            Random Variable used to calculate coskewness
    Y : RandomSymbol
            Random Variable used to calculate coskewness
    Z : RandomSymbol
            Random Variable used to calculate coskewness
    condition : Expr containing RandomSymbols
            A conditional expression

    Examples
    ========

    >>> from sympy.stats import coskewness, Exponential, skewness
    >>> from sympy import symbols
    >>> p = symbols('p', positive=True)
    >>> X = Exponential('X', p)
    >>> Y = Exponential('Y', 2*p)
    >>> coskewness(X, Y, Y)
    0
    >>> coskewness(X, Y + X, Y + 2*X)
    16*sqrt(85)/85
    >>> coskewness(X + 2*Y, Y + X, Y + 2*X, X > 3)
    9*sqrt(170)/85
    >>> coskewness(Y, Y, Y) == skewness(Y)
    True
    >>> coskewness(X, Y + p*X, Y + 2*p*X)
    4/(sqrt(1 + 1/(4*p**2))*sqrt(4 + 1/(4*p**2)))

    Returns
    =======

    coskewness : The coskewness of the three random variables

    References
    ==========

    .. [1] https://en.wikipedia.org/wiki/Coskewness

    )r   r%   )r5   rO   Zr8   r9   numdenr:   r:   r;   
coskewness  s   6"ri   )r   NrA   )T);
sympy.setsr   sympy.core.numbersr   sympy.core.relationalr   sympy.core.symbolr   (sympy.functions.combinatorial.factorialsr   &sympy.functions.elementary.exponentialr   r   (sympy.functions.elementary.miscellaneousr	   $sympy.functions.elementary.piecewiser
   sympy.integrals.integralsr   sympy.solvers.solvesetr   rvr   r   r   r   r   r   r   r   r   r   r   r   r   r   r   r   r   r   r    __all__r-   r$   r?   r%   r)   r(   r+   r.   r/   r&   r'   r,   r*   ri   r!   r"   r#   r:   r:   r:   r;   <module>   s:    T	
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