probability-continuous.rst
author Oleksandr Gavenko <gavenkoa@gmail.com>
Thu, 21 Apr 2016 16:20:38 +0300
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Add "Law of total expectation", "Law of total variance", proofs for covariance.
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=============================
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 Continuous random variables
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=============================
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.. contents::
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   :local:
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Probability density function
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============================
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.. role:: def
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   :class: def
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:def:`Probability density function` (PDF) for continuous random variable
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:math:`x` is function:
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.. math::
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   CDF(a ≤ X ≤ b) = P(a ≤ X ≤ b) = ∫_{a, b}\ f_X(x) \ dx
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   f_X(x) ≥ 0
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   ∫_{-∞, +∞}\ f_X(x) \ dx = 1
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:math:`f_X(x)` funtion maps values :math:`x` from sample space to real numbers.
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For continuous random variable:
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.. math:: P(X = a) = 0
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Expectation
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===========
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:def:`Expectation` of continuous random variable is:
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.. math:: μ = E[X] = ∫_{-∞, +∞}\ x·f_X(x) \ dx
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Properties:
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.. math::
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   E[X + Y] = E[X] + E[Y]
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   E[a·X] = a·E[X]
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   E[a·X + b] = a·E[X] + b
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Variance
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========
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:def:`Variance` of continuous random variable is:
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.. math:: var[X] = ∫_{-∞, +∞}\ (x-μ)²·f_X(x) \ dx
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Properties:
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.. math::
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   var[a·X + b] = a²·var[X]
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   var[X] = E[X²] - E²[X]
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Standard deviation
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==================
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:def:`Standard deviation` of continuous random variable is:
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.. math:: σ_Χ = sqrt(var[X])
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Cumulative distribution functions
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=================================
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:def:`Cumulative distribution functions` (CDF) of random variable :math:`X` is:
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.. math:: F_X(x) = P(X ≤ x) = ∫_{-∞, x}\ f_X(t) \ dt
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So:
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.. math::
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   P(a ≤ X ≤ b) = F_X(b) - F_X(a) + f_X(a) = ∫_{a,b}\ f_X(x) \ dx
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   F_X(-∞) = 0
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   F_X(+∞) = 1
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and :math:`F_X(a) ≤ F_X(b)` for :math:`a ≤ b`.
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Relation between CDF and PDF:
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.. math:: (d(CDF(t))/dt)(x) = PDF(x)
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Conditional probability
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=======================
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:def:`Conditional probability` of continuous random variable is:
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.. math:: P(X ⊆ B | A) = ∫_{B}\ f_{X|A}(x) \ dx = ∫_{A∩B}\ f_X(x) \ dx / P(A)
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:def:`Conditional expectation` of continuous random variable is:
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.. math:: E[X|A] = ∫_\ x·f_{X|A}(x) \ dx
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Properties:
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.. math::
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   E[g(X)|A] = ∫_\ g(x)·f_{X|A}(x) \ dx
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Independence
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============
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Random variable :math:`X`, :math:`Y` are :def:`independent` if:
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.. math:: f_{X,Y}(x, y) = f_X(x)·f_Y(y)
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Continuous uniform random variable
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==================================
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:def:`Continuous uniform random variable` is :math:`f_X(x)` that is non-zero
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only on :math:`[a, b]` with :math:`f_X(x) = `1/(b-a)`.
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.. math::
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   E[unif(a, b)] = (b+a)/2
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   var[unif(a, b)] = (b-a)²/12
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   σ = (b-a)/sqrt(12)
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Proofs:
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.. math::
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6
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   E[unif(a, b)] = ∫_{a, b}\ x·1/(b-a)·dx = x²/2/(b-a) |_{a, b} = (b²-a²)/(b-a)/2 = (b+a)/2
4
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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   E[unif²(a, b)] = ∫_{a, b} x²·1/(b-a)·dx = x³/3/(b-a) |_{a, b} = (b³-a³)/(b-a)/3 = (b²+b·a+a²)/3
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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   var[unif(a, b)] = E[unif²(a, b)] - E²[unif(a, b)] = (b²+b·a+a²)/3 - (b+a)²/4 = (b-a)²/12
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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.. note::
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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   In maxima::
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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     (%i4) factor((b^2+b*a+a^2)/3 - (a+b)^2/4);
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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                 2
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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          (b - a)
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          --------
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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             12
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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Exponential random variables
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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============================
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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:def:`Exponential random variables` with parameter :math:`λ` is:
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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.. math:: f_X(x) = λ·exp(-λ·x)
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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for :math:`x ≥ 0`, and zero otherwise.
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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Properties:
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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.. math::
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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   E[exp(λ)] = 1/λ
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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   var[exp(λ)] = 1/λ²
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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Proof:
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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.. math::
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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6
9b4e31a03161 Normal random variables.
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  ∫_{-∞, +∞}\ f_X(x) \ dx = ∫_{0, +∞}\ λ·exp(-λ·x) \ dx = -exp(-λ·x) |_{0, +∞} = 1
4
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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6
9b4e31a03161 Normal random variables.
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  E[exp(λ)] = ∫_{0, +∞}\ x·λ·exp(-λ·x) \ dx = 1/λ
4
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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6
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  E[exp²(λ)] = ∫_{0, +∞}\ x²·λ·exp(-λ·x) \ dx = 1/λ²
4
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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.. note::
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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   From maxima::
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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    (%i15) assume(lambda>0);
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    (%o15)                           [lambda > 0]
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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    (%i16) integrate(lambda*%e^(-lambda*x),x,0,inf);
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    (%o16)                                 1
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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    (%i17) integrate(x*lambda*%e^(-lambda*x),x,0,inf);
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                                          1
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    (%o17)                              ------
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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                                        lambda
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5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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    (%i18) integrate(x^2*lambda*%e^(-lambda*x),x,0,inf);
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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                                           2
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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    (%o18)                              -------
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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                                              2
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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                                        lambda
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6
9b4e31a03161 Normal random variables.
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Normal random variables
9b4e31a03161 Normal random variables.
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=======================
9b4e31a03161 Normal random variables.
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9b4e31a03161 Normal random variables.
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:def:`Normal random variables` with parameters :math:`μ, σ` and :math:`σ > 0`
9b4e31a03161 Normal random variables.
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defined by PDF:
9b4e31a03161 Normal random variables.
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7
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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.. math:: norm(μ, σ²) = 1/sqrt(2·π)/σ·exp(-(x-μ)²/σ²/2)
6
9b4e31a03161 Normal random variables.
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9b4e31a03161 Normal random variables.
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Properties:
9b4e31a03161 Normal random variables.
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9b4e31a03161 Normal random variables.
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.. math::
4
5d6cec5fe095 Probability density function. Continuous uniform random variable. Exponential
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7
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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   E[norm(μ, σ²)] = μ
6
9b4e31a03161 Normal random variables.
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7
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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   var[norm(μ, σ²)] = σ²
6
9b4e31a03161 Normal random variables.
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8
a80094bd530c Convolution formula
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Summa of two normal r.v.
a80094bd530c Convolution formula
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========================
a80094bd530c Convolution formula
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a80094bd530c Convolution formula
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If :math:`Z = X + Y` and X and Y is independent normal r.v. then:
a80094bd530c Convolution formula
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a80094bd530c Convolution formula
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.. math:: norm(μ_z, σ_z²) = norm(μ_x+μ_y, σ_x²+σ_y²)
a80094bd530c Convolution formula
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a80094bd530c Convolution formula
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   222
Proof:
4
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6
9b4e31a03161 Normal random variables.
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.. math::
9b4e31a03161 Normal random variables.
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8
a80094bd530c Convolution formula
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   norm(μ_z, σ_z²) = ∫_x\ f_X(x)·f_Y(z-x)\ dx
6
9b4e31a03161 Normal random variables.
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8
a80094bd530c Convolution formula
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   = ∫_x\ 1/sqrt(2·π)/σ_x·exp(-(x-μ_x)²/σ_x²/2)·1/sqrt(2·π)/σ_y·exp(-(z-x-μ_y)²/σ_y²/2)\ dx
a80094bd530c Convolution formula
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a80094bd530c Convolution formula
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   = 1/sqrt(2·π·(σ_x² + σ_y²))·exp(-(x-μ_x-μ_y)²/(σ_x²+σ_y²)/2)
6
9b4e31a03161 Normal random variables.
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7
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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Linear function of distribution
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===============================
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   234
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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If :math:`Y = a·X + b` then :math:`f_Y(y) = 1/|a|·f_X((y-b)/a)`.
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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Proof, for :math:`y > 0`:
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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.. math:: F_Y(Y ≤ y) = F_X(a·X + b ≤ y) = F_X(X ≤ (y-b)/a)
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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so:
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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.. math:: f_Y(y) = d/dy\ F_Y(Y ≤ y) = d/dy\ F_X(x ≤ (y-b)/a) = 1/a·f_X((y-b)/a)
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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For :math:`y < 0`:
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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.. math::
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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   F_Y(Y > y) = F_X(a·X + b > y) = F_X(X < (y-b)/a)
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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   F_Y(Y <= y) = 1 - F_Y(Y > y) = 1 - F_X(X < (y-b)/a)
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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   d/dy\ f_Y(y) = -1/a·f_X((y-b)/a)
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c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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Combining expression for :math:`a≠0` gives us result.
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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   256
c9c0861c10c2 Linear function of distribution. Monotonic function of distribution.
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If X is uniform distribution with parameters :math:`c, d` then :math:`a·Y + b`
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also is uniform distribution with parameters :math:`a·c+b, a·d+b`.
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If X is exponential distribution with parameters :math:`λ` then :math:`a·Y`
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also is exponential distribution with parameters :math:`λ/a` for :math:`a > 0`.
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If X is normal distribution with parameters :math:`μ, σ²` then
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:math:`a·Y + b` also is normal distribution with parameters :math:`a·μ+b, (a·σ)²`.
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Proofs.
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When :math:`Χ ~ exp(λ)` and :math:`Y = a·X` then:
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.. math:: f_Y(y) = 1/a·f_X(y/a) = λ/a·e^{-λ·y/a} ~ exp(λ/a)
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When :math:`Χ ~ norm(μ, σ²)` and :math:`Y = a·X + b` then:
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.. math::
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   f_Y(y) = 1/a·f_X((y-b)/a) = 1/a·1/sqrt(2·π)/σ·e^{-λ·((y-b)/a - μ)²/σ²/2}
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   = 1/sqrt(2·π)/(a·σ)·e^{-λ·(y - (a·μ+b))²/(a·σ)²/2} = ~ norm(a·μ+b, (a·σ)²)
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Monotonic function of distribution
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==================================
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Let's :math:`Y = g(X)` and :math:`g` is monotonic function on range :math:`[a,
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b]`. So there is inverse function :math:`h(Y) = X` on range :math:`[g(a), g(b)]`
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(if :math:`g` is increasing values) or on range :math:`[g(b), g(a)]` (if
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:math:`g` is decreasing values). In that case:
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.. math:: f_Y(y) = f_X(h(y))·(d\ h(t)/dt)(y)
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Proof. Let :math:`g` is monotonically increasing function. Thus:
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.. math:: F_Y(Y ≤ y) = F_X(g(X) ≤ y) = F_X(X ≤ h(y)) = F_X(h(y))
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and so:
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.. math:: f_Y(y) = (d\ F_Y(t)/dt)(y) = (d\ F_X(h(t))/dt)(y) = f_X(h(y))·(d\ h(t)/dt)(y)
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8
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Convolution formula
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===================
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If :math:`Z = X + Y` and X and Y is independent r.v. then:
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.. math:: f_Z(z) = ∫_x\ f_X(x)·f_Y(z-x)·dx
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Proof:
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Consider :math:`Z` at conditional event :math:`X=x`:
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.. math:: f_{Z|X}(z|X=x) = f_{z|X=x}(z|X=x)
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Becasue of independence of :math:`X` and :math:`Y`:
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.. math:: f_{Z|X}(z|X=x) = f_{X+Y|X=x}(z|X=x) = f_{x+Y}(z) = f_Y(z-x)
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Joint PDF of :math:`X` and :math:`Z` is:
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.. math:: f_{X,Z}(x,z) = f_X(x)·f_{Z|X}(z|X=x) = f_X(x)·f_Y(z-x)
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By integrating by :math:`x` we get:
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.. math:: f_Z(z) = ∫_x\ f_{X,Z}(x,z)\ dx = ∫_x\ f_X(x)·f_Y(z-x)\ dx
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* https://en.wikipedia.org/wiki/List_of_convolutions_of_probability_distributions
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Covariance
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==========
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Covariance of two r.v. is:
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.. math:: cov(X, Y) = E[(X - E[X])·(Y - E[Y])]
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Properties:
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.. math:: cov(X, Y) = E[X·Y] - E[X]·E[Y]
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.. math:: cov(X, X) = var(X)
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.. math:: cov(a·X + b, Y) = a·cov(X, Y)
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.. math:: cov(X, Y + Z) = cov(X, Y) + cov(X, Z)
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.. math:: var(X + Y) = var(X) + var(Y) + 2·cov(X, Y)
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Covariance of two independent r.v. is zero.
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Proofs:
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.. math::
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   cov(X, Y) = E[(X - E[X])·(Y - E[Y])] = E[ X·Y - X·E[Y] - E[X]·Y + E[X]·E[Y] ]
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   = E[X·Y] - E[X·E[Y]] - E[E[X]·Y] + E[E[X]·E[Y]]
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   = E[X·Y] - E[X]·E[Y] - E[X]·E[Y] + E[X]·E[Y] = E[X·Y] - E[X]·E[Y]
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.. math::
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   cov(a·X + b, Y) = E[(a·X + b - E[a·X + b])·(Y - E[Y])]
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   = E[(a·X + b - (a·E[X] + b))·(Y - E[Y])] = E[(a·X + a·E[X])·(Y - E[Y])]
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   = a·E[(X + E[X])·(Y - E[Y])] = a·cov(X, Y)
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.. math::
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   cov(X, Y + Z) = E[(X - E[X])·(Y + Z - E[Y + Z])] = E[(X - E[X])·(Y - E[Y] + Z - E[Z])]
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   = E[(X - E[X])·(Y - E[Y]) + (X - E[X])·(Z - E[Z])]
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   = E[(X - E[X])·(Y - E[Y])] + E[(X - E[X])·(Z - E[Z])] = cov(X, Y) + cov(X, Z)
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.. math::
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   var(X) + var(Y) + 2·cov(X, Y) = E[X²] - (E[X])² + E[Y²] - (E[Y])² + 2·E[X·Y] - 2·E[X]·E[Y]
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   = E[X² - X·E[X] + Y² - Y·E[Y] + 2·X·Y - X·E[Y] - Y·E[X]]
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   = E[(X+Y)² - (X·E[X] + Y·E[Y] + X·E[Y] + Y·E[X])]
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   379
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   380
   = E[(X+Y)²] - E[(X+Y)·(E[X] + E[Y])] = E[(X+Y)²] - E[X+Y]·E[X+Y] = var(X+Y)
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   381
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   382
For independent r.v. :math:`X` and :math:`Y`:
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   383
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   384
.. math:: cov(X, Y) = E[(X - E[X])·(Y - E[Y])] = E[(X - E[X])]·E[(Y - E[Y])] = 0
10
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   385
5a09c6837dcb Covariance
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   386
Correlation coefficient
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   387
=======================
5a09c6837dcb Covariance
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   388
5a09c6837dcb Covariance
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   389
Dimensionless version of covariance:
5a09c6837dcb Covariance
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   390
5a09c6837dcb Covariance
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   391
.. math:: ρ(Χ, Υ) = E[(X-E[X])/σ_Χ·(Y-E[Y])/σ_Y] = cov(X, Y)/(σ_X·σ_Y)
5a09c6837dcb Covariance
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   392
5a09c6837dcb Covariance
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   393
It is defined only for cases when :math:`σ_X ≠ 0` and :math:`σ_Y ≠ 0`.
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   394
5a09c6837dcb Covariance
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   395
Obviously :math:`-1 ≤ ρ(Χ, Υ) ≤ +1` and :math:`ρ(Χ, X) = 0`.
5a09c6837dcb Covariance
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   396
5a09c6837dcb Covariance
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   397
For independent r.v. :math:`ρ(Χ, Y) = 0`.
5a09c6837dcb Covariance
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   398
5a09c6837dcb Covariance
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   399
If :math:`|ρ(X, Y)| = 1` then :math:`X` and :math:`Y` is have linear
5a09c6837dcb Covariance
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   400
dependencies :math:`X = Y` or :math:`X = -Y`.
5a09c6837dcb Covariance
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diff changeset
   401
5a09c6837dcb Covariance
Oleksandr Gavenko <gavenkoa@gmail.com>
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   402
Properties:
5a09c6837dcb Covariance
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diff changeset
   403
5a09c6837dcb Covariance
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   404
.. math:: ρ(a·X + b, Y) = sign(a)·ρ(X, Y)
5a09c6837dcb Covariance
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diff changeset
   405
16
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   406
Conditioned expectation
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   407
=======================
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diff changeset
   408
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   409
.. math:: E[X|Y] = ∫_X\ x·f_{X|Y}(x|Y)\ dx
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diff changeset
   410
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   411
Law of total expectation
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   412
========================
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diff changeset
   413
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   414
.. math:: E[X] = E[E[X|Y]]
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diff changeset
   415
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   416
Proof::
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   417
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   418
.. math::
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   419
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   420
   E[E[X|Y]] = ∫_Y\ f_Y(y)·∫_X\ x·f_{X|Y}(x|y)\ dx·dy
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diff changeset
   421
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   422
   = ∫_Y\ ∫_X\ x·f_Y(y)·f_{X|Y}(x|y)\ dx·dy = ∫_Y\ ∫_X\ x·f_{X,Y}(x,y)\ dx·dy
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diff changeset
   423
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   424
   = ∫_X\ x·∫_Y\ f_{X,Y}(x,y)\ dy·dx = ∫_X\ x·f_X(x)\ dx = E[X]
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diff changeset
   425
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   426
* https://en.wikipedia.org/wiki/Law_of_total_expectation
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diff changeset
   427
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   428
Iterated expectations with nested conditioning sets
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   429
===================================================
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diff changeset
   430
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   431
.. math:: E[X|A] = E[E[X|B]|A]
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diff changeset
   432
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   433
Conditional variance
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   434
====================
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diff changeset
   435
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   436
.. math:: var(X|Y=y) = E[(X - E[X|Y=y])² |Y=y]
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   437
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   438
* https://en.wikipedia.org/wiki/Conditional_variance
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parents: 10
diff changeset
   439
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
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diff changeset
   440
Law of total variance
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diff changeset
   441
=====================
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diff changeset
   442
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   443
.. math:: var(X) = E[var(X|Y)] + var(E[X|Y]) = E_Y[var_X(X|Y)] + var_X(E_Y[X|Y])
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diff changeset
   444
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   445
Proof:
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
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diff changeset
   446
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   447
.. math::
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   448
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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   449
   var(X) = E[X²] - (E[X])² = E[E[X²|Y]] - (E[E[X|Y]])²
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   450
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
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diff changeset
   451
   = E[var(X|Y) + (E[X|Y])²] - (E[E[X|Y]])²
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
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diff changeset
   452
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
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diff changeset
   453
   = E[var(X|Y)] + E[(E[X|Y])²} - (E[E[X|Y]])² = E[var(X|Y)] + var(E[X|Y])
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   454
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   455
* https://en.wikipedia.org/wiki/Law_of_total_variance
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   456
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   457
Law of total covariance
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   458
=======================
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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parents: 10
diff changeset
   459
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   460
* https://en.wikipedia.org/wiki/Law_of_total_covariance
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parents: 10
diff changeset
   461
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
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diff changeset
   462
Sum of normally distributed random variables
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
Oleksandr Gavenko <gavenkoa@gmail.com>
parents: 10
diff changeset
   463
============================================
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   464
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   465
For :math:`X ~ norm(μ_X, σ_X²)` and :math:`Y ~ norm(μ_Y, σ_Y²)` random variable
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   466
:math:`X+Y` is also has normal distribution with parameters:
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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parents: 10
diff changeset
   467
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   468
.. math:: norm(μ_X + μ_Y, σ_X² + σ_Y²)
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parents: 10
diff changeset
   469
c48b0353e055 Add "Law of total expectation", "Law of total variance", proofs for covariance.
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diff changeset
   470
https://en.wikipedia.org/wiki/Sum_of_normally_distributed_random_variables
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diff changeset
   471