Epstein Files Full PDF

CLICK HERE
Technopedia Center
PMB University Brochure
Faculty of Engineering and Computer Science
S1 Informatics S1 Information Systems S1 Information Technology S1 Computer Engineering S1 Electrical Engineering S1 Civil Engineering

faculty of Economics and Business
S1 Management S1 Accountancy

Faculty of Letters and Educational Sciences
S1 English literature S1 English language education S1 Mathematics education S1 Sports Education
teknopedia

  • Registerasi
  • Brosur UTI
  • Kip Scholarship Information
  • Performance
Flag Counter
  1. World Encyclopedia
  2. Rayleigh distribution - Wikipedia
Rayleigh distribution - Wikipedia
From Wikipedia, the free encyclopedia
Probability distribution
Not to be confused with Rayleigh mixture distribution.
Rayleigh
Probability density function
Plot of the Rayleigh PDF
Cumulative distribution function
Plot of the Rayleigh CDF
Notation R a y l e i g h ( σ ) {\displaystyle \mathrm {Rayleigh} (\sigma )} {\displaystyle \mathrm {Rayleigh} (\sigma )}
Parameters scale: σ > 0 {\displaystyle \sigma >0} {\displaystyle \sigma >0}
Support x ∈ [ 0 , ∞ ) {\displaystyle x\in [0,\infty )} {\displaystyle x\in [0,\infty )}
PDF x σ 2 e − x 2 / ( 2 σ 2 ) {\displaystyle {\frac {x}{\sigma ^{2}}}e^{-x^{2}/\left(2\sigma ^{2}\right)}} {\displaystyle {\frac {x}{\sigma ^{2}}}e^{-x^{2}/\left(2\sigma ^{2}\right)}}
CDF 1 − e − x 2 / ( 2 σ 2 ) {\displaystyle 1-e^{-x^{2}/\left(2\sigma ^{2}\right)}} {\displaystyle 1-e^{-x^{2}/\left(2\sigma ^{2}\right)}}
Quantile Q ( F ; σ ) = σ − 2 ln ⁡ ( 1 − F ) {\displaystyle Q(F;\sigma )=\sigma {\sqrt {-2\ln(1-F)}}} {\displaystyle Q(F;\sigma )=\sigma {\sqrt {-2\ln(1-F)}}}
Mean σ π 2 {\displaystyle \sigma {\sqrt {\frac {\pi }{2}}}} {\displaystyle \sigma {\sqrt {\frac {\pi }{2}}}}
Median σ 2 ln ⁡ ( 2 ) {\displaystyle \sigma {\sqrt {2\ln(2)}}} {\displaystyle \sigma {\sqrt {2\ln(2)}}}
Mode σ {\displaystyle \sigma } {\displaystyle \sigma }
Variance 4 − π 2 σ 2 {\displaystyle {\frac {4-\pi }{2}}\sigma ^{2}} {\displaystyle {\frac {4-\pi }{2}}\sigma ^{2}}
Skewness 2 π ( π − 3 ) ( 4 − π ) 3 / 2 {\displaystyle {\frac {2{\sqrt {\pi }}(\pi -3)}{(4-\pi )^{3/2}}}} {\displaystyle {\frac {2{\sqrt {\pi }}(\pi -3)}{(4-\pi )^{3/2}}}}
Excess kurtosis − 6 π 2 − 24 π + 16 ( 4 − π ) 2 {\displaystyle -{\frac {6\pi ^{2}-24\pi +16}{(4-\pi )^{2}}}} {\displaystyle -{\frac {6\pi ^{2}-24\pi +16}{(4-\pi )^{2}}}}
Entropy 1 + ln ⁡ ( σ 2 ) + γ 2 {\displaystyle 1+\ln \left({\frac {\sigma }{\sqrt {2}}}\right)+{\frac {\gamma }{2}}} {\displaystyle 1+\ln \left({\frac {\sigma }{\sqrt {2}}}\right)+{\frac {\gamma }{2}}}
MGF 1 + σ t e σ 2 t 2 / 2 π 2 ( erf ⁡ ( σ t 2 ) + 1 ) {\displaystyle 1+\sigma te^{\sigma ^{2}t^{2}/2}{\sqrt {\frac {\pi }{2}}}\left(\operatorname {erf} \left({\frac {\sigma t}{\sqrt {2}}}\right)+1\right)} {\displaystyle 1+\sigma te^{\sigma ^{2}t^{2}/2}{\sqrt {\frac {\pi }{2}}}\left(\operatorname {erf} \left({\frac {\sigma t}{\sqrt {2}}}\right)+1\right)}
CF 1 − σ t e − σ 2 t 2 / 2 π 2 ( erfi ⁡ ( σ t 2 ) − i ) {\displaystyle 1-\sigma te^{-\sigma ^{2}t^{2}/2}{\sqrt {\frac {\pi }{2}}}\left(\operatorname {erfi} \left({\frac {\sigma t}{\sqrt {2}}}\right)-i\right)} {\displaystyle 1-\sigma te^{-\sigma ^{2}t^{2}/2}{\sqrt {\frac {\pi }{2}}}\left(\operatorname {erfi} \left({\frac {\sigma t}{\sqrt {2}}}\right)-i\right)}

In probability theory and statistics, the Rayleigh distribution is a continuous probability distribution for nonnegative-valued random variables. Up to rescaling, it coincides with the chi distribution with two degrees of freedom. The distribution is named after Lord Rayleigh (/ˈreɪli/).[1]

A Rayleigh distribution is often observed when the overall magnitude of a vector in the plane is related to its directional components. One example where the Rayleigh distribution naturally arises is when wind velocity is analyzed in two dimensions. Assuming that each component is uncorrelated, normally distributed with equal variance, and zero mean, which is infrequent, then the overall wind speed (vector magnitude) will be characterized by a Rayleigh distribution. A second example of the distribution arises in the case of random complex numbers whose real and imaginary components are independently and identically distributed Gaussian with equal variance and zero mean. In that case, the absolute value of the complex number is Rayleigh-distributed.

Definition

[edit]

The probability density function of the Rayleigh distribution is[2]

f ( x ; σ ) = x σ 2 e − x 2 / ( 2 σ 2 ) , x ≥ 0 , {\displaystyle f(x;\sigma )={\frac {x}{\sigma ^{2}}}e^{-x^{2}/(2\sigma ^{2})},\quad x\geq 0,} {\displaystyle f(x;\sigma )={\frac {x}{\sigma ^{2}}}e^{-x^{2}/(2\sigma ^{2})},\quad x\geq 0,}

where σ {\displaystyle \sigma } {\displaystyle \sigma } is the scale parameter of the distribution. The cumulative distribution function is[2]

F ( x ; σ ) = 1 − e − x 2 / ( 2 σ 2 ) {\displaystyle F(x;\sigma )=1-e^{-x^{2}/(2\sigma ^{2})}} {\displaystyle F(x;\sigma )=1-e^{-x^{2}/(2\sigma ^{2})}}

for x ∈ [ 0 , ∞ ) . {\displaystyle x\in [0,\infty ).} {\displaystyle x\in [0,\infty ).}

Relation to random vector length

[edit]

Consider the two-dimensional vector Y = ( U , V ) {\displaystyle Y=(U,V)} {\displaystyle Y=(U,V)} which has components that are bivariate normally distributed, centered at zero, with equal variances σ 2 {\displaystyle \sigma ^{2}} {\displaystyle \sigma ^{2}}, and independent. Then U {\displaystyle U} {\displaystyle U} and V {\displaystyle V} {\displaystyle V} have density functions

f U ( x ; σ ) = f V ( x ; σ ) = e − x 2 / ( 2 σ 2 ) 2 π σ 2 . {\displaystyle f_{U}(x;\sigma )=f_{V}(x;\sigma )={\frac {e^{-x^{2}/(2\sigma ^{2})}}{\sqrt {2\pi \sigma ^{2}}}}.} {\displaystyle f_{U}(x;\sigma )=f_{V}(x;\sigma )={\frac {e^{-x^{2}/(2\sigma ^{2})}}{\sqrt {2\pi \sigma ^{2}}}}.}

Let X {\displaystyle X} {\displaystyle X} be the length of Y {\displaystyle Y} {\displaystyle Y}. That is, X = U 2 + V 2 . {\displaystyle X={\sqrt {U^{2}+V^{2}}}.} {\displaystyle X={\sqrt {U^{2}+V^{2}}}.} Then X {\displaystyle X} {\displaystyle X} has cumulative distribution function

F X ( x ; σ ) = ∬ D x f U ( u ; σ ) f V ( v ; σ ) d A , {\displaystyle F_{X}(x;\sigma )=\iint _{D_{x}}f_{U}(u;\sigma )f_{V}(v;\sigma )\,dA,} {\displaystyle F_{X}(x;\sigma )=\iint _{D_{x}}f_{U}(u;\sigma )f_{V}(v;\sigma )\,dA,}

where D x {\displaystyle D_{x}} {\displaystyle D_{x}} is the disk

D x = { ( u , v ) : u 2 + v 2 ≤ x } . {\displaystyle D_{x}=\left\{(u,v):{\sqrt {u^{2}+v^{2}}}\leq x\right\}.} {\displaystyle D_{x}=\left\{(u,v):{\sqrt {u^{2}+v^{2}}}\leq x\right\}.}

Writing the double integral in polar coordinates, it becomes

F X ( x ; σ ) = 1 2 π σ 2 ∫ 0 2 π ∫ 0 x r e − r 2 / ( 2 σ 2 ) d r d θ = 1 σ 2 ∫ 0 x r e − r 2 / ( 2 σ 2 ) d r . {\displaystyle F_{X}(x;\sigma )={\frac {1}{2\pi \sigma ^{2}}}\int _{0}^{2\pi }\int _{0}^{x}re^{-r^{2}/(2\sigma ^{2})}\,dr\,d\theta ={\frac {1}{\sigma ^{2}}}\int _{0}^{x}re^{-r^{2}/(2\sigma ^{2})}\,dr.} {\displaystyle F_{X}(x;\sigma )={\frac {1}{2\pi \sigma ^{2}}}\int _{0}^{2\pi }\int _{0}^{x}re^{-r^{2}/(2\sigma ^{2})}\,dr\,d\theta ={\frac {1}{\sigma ^{2}}}\int _{0}^{x}re^{-r^{2}/(2\sigma ^{2})}\,dr.}

Finally, the probability density function for X {\displaystyle X} {\displaystyle X} is the derivative of its cumulative distribution function, which by the fundamental theorem of calculus is

f X ( x ; σ ) = d d x F X ( x ; σ ) = x σ 2 e − x 2 / ( 2 σ 2 ) , {\displaystyle f_{X}(x;\sigma )={\frac {d}{dx}}F_{X}(x;\sigma )={\frac {x}{\sigma ^{2}}}e^{-x^{2}/(2\sigma ^{2})},} {\displaystyle f_{X}(x;\sigma )={\frac {d}{dx}}F_{X}(x;\sigma )={\frac {x}{\sigma ^{2}}}e^{-x^{2}/(2\sigma ^{2})},}

which is the Rayleigh distribution. It is straightforward to generalize to vectors of dimension other than 2. There are also generalizations when the components have unequal variance or correlations (Hoyt distribution), or when the vector Y follows a bivariate Student t-distribution (see also: Hotelling's T-squared distribution).[3]

Generalization to bivariate Student's t-distribution

Suppose Y {\displaystyle Y} {\displaystyle Y} is a random vector with components u , v {\displaystyle u,v} {\displaystyle u,v} that follows a multivariate t-distribution. If the components both have mean zero, equal variance and are independent, the bivariate Student's-t distribution takes the form:

f ( u , v ) = 1 2 π σ 2 ( 1 + u 2 + v 2 ν σ 2 ) − ν / 2 − 1 {\displaystyle f(u,v)={1 \over {2\pi \sigma ^{2}}}\left(1+{u^{2}+v^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}} {\displaystyle f(u,v)={1 \over {2\pi \sigma ^{2}}}\left(1+{u^{2}+v^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}}

Let R = U 2 + V 2 {\displaystyle R={\sqrt {U^{2}+V^{2}}}} {\displaystyle R={\sqrt {U^{2}+V^{2}}}} be the magnitude of Y {\displaystyle Y} {\displaystyle Y}. Then the cumulative distribution function (CDF) of the magnitude is:

F ( r ) = 1 2 π σ 2 ∬ D r ( 1 + u 2 + v 2 ν σ 2 ) − ν / 2 − 1 d u d v {\displaystyle F(r)={1 \over {2\pi \sigma ^{2}}}\iint _{D_{r}}\left(1+{u^{2}+v^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}du\;dv} {\displaystyle F(r)={1 \over {2\pi \sigma ^{2}}}\iint _{D_{r}}\left(1+{u^{2}+v^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}du\;dv}

where D r {\displaystyle D_{r}} {\displaystyle D_{r}} is the disk defined by:

D r = { ( u , v ) : u 2 + v 2 ≤ r } {\displaystyle D_{r}=\left\{(u,v):{\sqrt {u^{2}+v^{2}}}\leq r\right\}} {\displaystyle D_{r}=\left\{(u,v):{\sqrt {u^{2}+v^{2}}}\leq r\right\}}

Converting to polar coordinates leads to the CDF becoming:

F ( r ) = 1 2 π σ 2 ∫ 0 r ∫ 0 2 π ρ ( 1 + ρ 2 ν σ 2 ) − ν / 2 − 1 d θ d ρ = 1 σ 2 ∫ 0 r ρ ( 1 + ρ 2 ν σ 2 ) − ν / 2 − 1 d ρ = 1 − ( 1 + r 2 ν σ 2 ) − ν / 2 {\displaystyle {\begin{aligned}F(r)&={1 \over {2\pi \sigma ^{2}}}\int _{0}^{r}\int _{0}^{2\pi }\rho \left(1+{\rho ^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}d\theta \;d\rho \\&={1 \over {\sigma ^{2}}}\int _{0}^{r}\rho \left(1+{\rho ^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}d\rho \\&=1-\left(1+{r^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2}\end{aligned}}} {\displaystyle {\begin{aligned}F(r)&={1 \over {2\pi \sigma ^{2}}}\int _{0}^{r}\int _{0}^{2\pi }\rho \left(1+{\rho ^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}d\theta \;d\rho \\&={1 \over {\sigma ^{2}}}\int _{0}^{r}\rho \left(1+{\rho ^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}d\rho \\&=1-\left(1+{r^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2}\end{aligned}}}

Finally, the probability density function (PDF) of the magnitude may be derived:

f ( r ) = F ′ ( r ) = r σ 2 ( 1 + r 2 ν σ 2 ) − ν / 2 − 1 {\displaystyle f(r)=F'(r)={r \over {\sigma ^{2}}}\left(1+{r^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}} {\displaystyle f(r)=F'(r)={r \over {\sigma ^{2}}}\left(1+{r^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}}

In the limit as ν → ∞ {\displaystyle \nu \rightarrow \infty } {\displaystyle \nu \rightarrow \infty }, the Rayleigh distribution is recovered because:

lim ν → ∞ ( 1 + r 2 ν σ 2 ) − ν / 2 − 1 = e − r 2 / 2 σ 2 {\displaystyle \lim _{\nu \rightarrow \infty }\left(1+{r^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}=e^{-r^{2}/2\sigma ^{2}}} {\displaystyle \lim _{\nu \rightarrow \infty }\left(1+{r^{2} \over {\nu \sigma ^{2}}}\right)^{-\nu /2-1}=e^{-r^{2}/2\sigma ^{2}}}

Properties

[edit]

The raw moments are given by:

μ j = σ j 2 j / 2 Γ ( 1 + j 2 ) , {\displaystyle \mu _{j}=\sigma ^{j}2^{j/2}\,\Gamma \left(1+{\frac {j}{2}}\right),} {\displaystyle \mu _{j}=\sigma ^{j}2^{j/2}\,\Gamma \left(1+{\frac {j}{2}}\right),}

where Γ ( z ) {\displaystyle \Gamma (z)} {\displaystyle \Gamma (z)} is the gamma function.

The mean of a Rayleigh random variable is thus :

μ ( X ) = σ π 2   ≈ 1.253   σ . {\displaystyle \mu (X)=\sigma {\sqrt {\frac {\pi }{2}}}\ \approx 1.253\ \sigma .} {\displaystyle \mu (X)=\sigma {\sqrt {\frac {\pi }{2}}}\ \approx 1.253\ \sigma .}

The standard deviation of a Rayleigh random variable is:

std ⁡ ( X ) = ( 2 − π 2 ) σ ≈ 0.655   σ {\displaystyle \operatorname {std} (X)={\sqrt {\left(2-{\frac {\pi }{2}}\right)}}\sigma \approx 0.655\ \sigma } {\displaystyle \operatorname {std} (X)={\sqrt {\left(2-{\frac {\pi }{2}}\right)}}\sigma \approx 0.655\ \sigma }

The variance of a Rayleigh random variable is :

var ⁡ ( X ) = μ 2 − μ 1 2 = ( 2 − π 2 ) σ 2 ≈ 0.429   σ 2 {\displaystyle \operatorname {var} (X)=\mu _{2}-\mu _{1}^{2}=\left(2-{\frac {\pi }{2}}\right)\sigma ^{2}\approx 0.429\ \sigma ^{2}} {\displaystyle \operatorname {var} (X)=\mu _{2}-\mu _{1}^{2}=\left(2-{\frac {\pi }{2}}\right)\sigma ^{2}\approx 0.429\ \sigma ^{2}}

The mode is σ , {\displaystyle \sigma ,} {\displaystyle \sigma ,} and the maximum pdf is

f max = f ( σ ; σ ) = 1 σ e − 1 / 2 ≈ 0.606 σ . {\displaystyle f_{\max }=f(\sigma ;\sigma )={\frac {1}{\sigma }}e^{-1/2}\approx {\frac {0.606}{\sigma }}.} {\displaystyle f_{\max }=f(\sigma ;\sigma )={\frac {1}{\sigma }}e^{-1/2}\approx {\frac {0.606}{\sigma }}.}

The skewness is given by:

γ 1 = 2 π ( π − 3 ) ( 4 − π ) 3 / 2 ≈ 0.631 {\displaystyle \gamma _{1}={\frac {2{\sqrt {\pi }}(\pi -3)}{(4-\pi )^{3/2}}}\approx 0.631} {\displaystyle \gamma _{1}={\frac {2{\sqrt {\pi }}(\pi -3)}{(4-\pi )^{3/2}}}\approx 0.631}

The excess kurtosis is given by:

γ 2 = − 6 π 2 − 24 π + 16 ( 4 − π ) 2 ≈ 0.245 {\displaystyle \gamma _{2}=-{\frac {6\pi ^{2}-24\pi +16}{(4-\pi )^{2}}}\approx 0.245} {\displaystyle \gamma _{2}=-{\frac {6\pi ^{2}-24\pi +16}{(4-\pi )^{2}}}\approx 0.245}

The characteristic function is given by:

φ ( t ) = 1 − σ t e − 1 2 σ 2 t 2 π 2 [ erfi ⁡ ( σ t 2 ) − i ] {\displaystyle \varphi (t)=1-\sigma te^{-{\frac {1}{2}}\sigma ^{2}t^{2}}{\sqrt {\frac {\pi }{2}}}\left[\operatorname {erfi} \left({\frac {\sigma t}{\sqrt {2}}}\right)-i\right]} {\displaystyle \varphi (t)=1-\sigma te^{-{\frac {1}{2}}\sigma ^{2}t^{2}}{\sqrt {\frac {\pi }{2}}}\left[\operatorname {erfi} \left({\frac {\sigma t}{\sqrt {2}}}\right)-i\right]}

where erfi ⁡ ( z ) {\displaystyle \operatorname {erfi} (z)} {\displaystyle \operatorname {erfi} (z)} is the imaginary error function. The moment generating function is given by

M ( t ) = 1 + σ t e 1 2 σ 2 t 2 π 2 [ erf ⁡ ( σ t 2 ) + 1 ] {\displaystyle M(t)=1+\sigma t\,e^{{\frac {1}{2}}\sigma ^{2}t^{2}}{\sqrt {\frac {\pi }{2}}}\left[\operatorname {erf} \left({\frac {\sigma t}{\sqrt {2}}}\right)+1\right]} {\displaystyle M(t)=1+\sigma t\,e^{{\frac {1}{2}}\sigma ^{2}t^{2}}{\sqrt {\frac {\pi }{2}}}\left[\operatorname {erf} \left({\frac {\sigma t}{\sqrt {2}}}\right)+1\right]}

where erf ⁡ ( z ) {\displaystyle \operatorname {erf} (z)} {\displaystyle \operatorname {erf} (z)} is the error function.

Differential entropy

[edit]

The differential entropy is given by[citation needed]

H = 1 + ln ⁡ ( σ 2 ) + γ 2 {\displaystyle H=1+\ln \left({\frac {\sigma }{\sqrt {2}}}\right)+{\frac {\gamma }{2}}} {\displaystyle H=1+\ln \left({\frac {\sigma }{\sqrt {2}}}\right)+{\frac {\gamma }{2}}}

where γ {\displaystyle \gamma } {\displaystyle \gamma } is the Euler–Mascheroni constant.

Parameter estimation

[edit]

Given a sample of N independent and identically distributed Rayleigh random variables x i {\displaystyle x_{i}} {\displaystyle x_{i}} with parameter σ {\displaystyle \sigma } {\displaystyle \sigma },

σ 2 ^ = 1 2 N ∑ i = 1 N x i 2 {\displaystyle {\widehat {\sigma ^{2}}}=\!\,{\frac {1}{2N}}\sum _{i=1}^{N}x_{i}^{2}} {\displaystyle {\widehat {\sigma ^{2}}}=\!\,{\frac {1}{2N}}\sum _{i=1}^{N}x_{i}^{2}} is the maximum likelihood estimate and also is unbiased.
σ ^ ≈ 1 2 N ∑ i = 1 N x i 2 {\displaystyle {\widehat {\sigma }}\approx {\sqrt {{\frac {1}{2N}}\sum _{i=1}^{N}x_{i}^{2}}}} {\displaystyle {\widehat {\sigma }}\approx {\sqrt {{\frac {1}{2N}}\sum _{i=1}^{N}x_{i}^{2}}}} is a biased estimator that can be corrected via the formula
σ = σ ^ Γ ( N ) N Γ ( N + 1 2 ) = σ ^ 4 N N ! ( N − 1 ) ! N ( 2 N ) ! π {\displaystyle \sigma ={\widehat {\sigma }}{\frac {\Gamma (N){\sqrt {N}}}{\Gamma \left(N+{\frac {1}{2}}\right)}}={\widehat {\sigma }}{\frac {4^{N}N!(N-1)!{\sqrt {N}}}{(2N)!{\sqrt {\pi }}}}} {\displaystyle \sigma ={\widehat {\sigma }}{\frac {\Gamma (N){\sqrt {N}}}{\Gamma \left(N+{\frac {1}{2}}\right)}}={\widehat {\sigma }}{\frac {4^{N}N!(N-1)!{\sqrt {N}}}{(2N)!{\sqrt {\pi }}}}}[4] = σ ^ c 4 ( 2 N + 1 ) {\displaystyle ={\frac {\hat {\sigma }}{c_{4}(2N+1)}}} {\displaystyle ={\frac {\hat {\sigma }}{c_{4}(2N+1)}}}, where c4 is the correction factor used to unbias estimates of standard deviation for normal random variables.

Confidence intervals

[edit]

To find the (1 − α) confidence interval, first find the bounds [ a , b ] {\displaystyle [a,b]} {\displaystyle [a,b]} where:

  P ( χ 2 N 2 ≤ a ) = α / 2 , P ( χ 2 N 2 ≤ b ) = 1 − α / 2 {\displaystyle P\left(\chi _{2N}^{2}\leq a\right)=\alpha /2,\quad P\left(\chi _{2N}^{2}\leq b\right)=1-\alpha /2} {\displaystyle P\left(\chi _{2N}^{2}\leq a\right)=\alpha /2,\quad P\left(\chi _{2N}^{2}\leq b\right)=1-\alpha /2}

then the scale parameter will fall within the bounds

  N x 2 ¯ b ≤ σ 2 ^ ≤ N x 2 ¯ a {\displaystyle {\frac {{N}{\overline {x^{2}}}}{b}}\leq {\widehat {\sigma ^{2}}}\leq {\frac {{N}{\overline {x^{2}}}}{a}}} {\displaystyle {\frac {{N}{\overline {x^{2}}}}{b}}\leq {\widehat {\sigma ^{2}}}\leq {\frac {{N}{\overline {x^{2}}}}{a}}}[5]

Generating random variates

[edit]

Given a random variate U drawn from the uniform distribution in the interval (0, 1), then the variate

X = σ − 2 ln ⁡ U {\displaystyle X=\sigma {\sqrt {-2\ln U}}\,} {\displaystyle X=\sigma {\sqrt {-2\ln U}}\,}

has a Rayleigh distribution with parameter σ {\displaystyle \sigma } {\displaystyle \sigma }. This is obtained by applying the inverse transform sampling-method.

Related distributions

[edit]
  • R ∼ R a y l e i g h ( σ ) {\displaystyle R\sim \mathrm {Rayleigh} (\sigma )} {\displaystyle R\sim \mathrm {Rayleigh} (\sigma )} is Rayleigh distributed if R = X 2 + Y 2 {\displaystyle R={\sqrt {X^{2}+Y^{2}}}} {\displaystyle R={\sqrt {X^{2}+Y^{2}}}}, where X ∼ N ( 0 , σ 2 ) {\displaystyle X\sim N(0,\sigma ^{2})} {\displaystyle X\sim N(0,\sigma ^{2})} and Y ∼ N ( 0 , σ 2 ) {\displaystyle Y\sim N(0,\sigma ^{2})} {\displaystyle Y\sim N(0,\sigma ^{2})} are independent normal random variables.[6] This gives motivation to the use of the symbol σ {\displaystyle \sigma } {\displaystyle \sigma } in the above parametrization of the Rayleigh density.
  • The magnitude | z | {\displaystyle |z|} {\displaystyle |z|} of a standard complex normally distributed variable z is Rayleigh distributed.
  • The chi distribution with v = 2 is equivalent to the Rayleigh Distribution with σ = 1: R ( σ ) ∼ σ χ 2   . {\displaystyle R(\sigma )\sim \sigma \chi _{2}^{\,}\ .} {\displaystyle R(\sigma )\sim \sigma \chi _{2}^{\,}\ .}
  • If R ∼ R a y l e i g h ( 1 ) {\displaystyle R\sim \mathrm {Rayleigh} (1)} {\displaystyle R\sim \mathrm {Rayleigh} (1)}, then R 2 {\displaystyle R^{2}} {\displaystyle R^{2}} has a chi-squared distribution with 2 degrees of freedom: [ Q = R ( σ ) 2 ] ∼ σ 2 χ 2 2   . {\displaystyle [Q=R(\sigma )^{2}]\sim \sigma ^{2}\chi _{2}^{2}\ .} {\displaystyle [Q=R(\sigma )^{2}]\sim \sigma ^{2}\chi _{2}^{2}\ .}
  • If R ∼ R a y l e i g h ( σ ) {\displaystyle R\sim \mathrm {Rayleigh} (\sigma )} {\displaystyle R\sim \mathrm {Rayleigh} (\sigma )}, then ∑ i = 1 N R i 2 {\displaystyle \sum _{i=1}^{N}R_{i}^{2}} {\displaystyle \sum _{i=1}^{N}R_{i}^{2}} has a gamma distribution with integer scale parameter N {\displaystyle N} {\displaystyle N} and rate parameter 1 2 σ 2 {\displaystyle {\frac {1}{2\sigma ^{2}}}} {\displaystyle {\frac {1}{2\sigma ^{2}}}}
    [ Y = ∑ i = 1 N R i 2 ] ∼ Γ ( N , 1 2 σ 2 ) {\displaystyle \left[Y=\sum _{i=1}^{N}R_{i}^{2}\right]\sim \Gamma \left(N,{\frac {1}{2\sigma ^{2}}}\right)} {\displaystyle \left[Y=\sum _{i=1}^{N}R_{i}^{2}\right]\sim \Gamma \left(N,{\frac {1}{2\sigma ^{2}}}\right)} with integer shape parameter N and rate parameter 1 2 σ 2 . {\displaystyle {\frac {1}{2\sigma ^{2}}}.} {\displaystyle {\frac {1}{2\sigma ^{2}}}.}
    [ Y = ∑ i = 1 N R i 2 ] ∼ Γ ( N , 2 σ 2 ) {\displaystyle \left[Y=\sum _{i=1}^{N}R_{i}^{2}\right]\sim \Gamma \left(N,2\sigma ^{2}\right)} {\displaystyle \left[Y=\sum _{i=1}^{N}R_{i}^{2}\right]\sim \Gamma \left(N,2\sigma ^{2}\right)} with integer shape parameter N and scale parameter 2 σ 2 . {\displaystyle 2\sigma ^{2}.} {\displaystyle 2\sigma ^{2}.}
  • The Rice distribution is a noncentral generalization of the Rayleigh distribution: R a y l e i g h ( σ ) = R i c e ( 0 , σ ) {\displaystyle \mathrm {Rayleigh} (\sigma )=\mathrm {Rice} (0,\sigma )} {\displaystyle \mathrm {Rayleigh} (\sigma )=\mathrm {Rice} (0,\sigma )}.
  • The Weibull distribution with the shape parameter k = 2 yields a Rayleigh distribution. Then the Rayleigh distribution parameter σ {\displaystyle \sigma } {\displaystyle \sigma } is related to the Weibull scale parameter according to λ = σ 2 . {\displaystyle \lambda =\sigma {\sqrt {2}}.} {\displaystyle \lambda =\sigma {\sqrt {2}}.}
  • If X {\displaystyle X} {\displaystyle X} has an exponential distribution X ∼ E x p o n e n t i a l ( λ ) {\displaystyle X\sim \mathrm {Exponential} (\lambda )} {\displaystyle X\sim \mathrm {Exponential} (\lambda )}, then Y = X ∼ R a y l e i g h ( 1 / 2 λ ) . {\displaystyle Y={\sqrt {X}}\sim \mathrm {Rayleigh} (1/{\sqrt {2\lambda }}).} {\displaystyle Y={\sqrt {X}}\sim \mathrm {Rayleigh} (1/{\sqrt {2\lambda }}).}
  • The half-normal distribution is the one-dimensional equivalent of the Rayleigh distribution.
  • The Maxwell–Boltzmann distribution is the three-dimensional equivalent of the Rayleigh distribution.

Applications

[edit]

An application of the estimation of σ can be found in magnetic resonance imaging (MRI). As MRI images are recorded as complex images but most often viewed as magnitude images, the background data is Rayleigh distributed. Hence, the above formula can be used to estimate the noise variance in an MRI image from background data.[7][8]

The Rayleigh distribution was also employed in the field of nutrition for linking dietary nutrient levels and human and animal responses. In this way, the parameter σ may be used to calculate nutrient response relationship.[9]

In the field of ballistics, the Rayleigh distribution is used for calculating the circular error probable—a measure of a gun's precision.

In physical oceanography, the distribution of significant wave height approximately follows a Rayleigh distribution.[10][11]

See also

[edit]
  • Circular error probable
  • Rayleigh fading
  • Rayleigh mixture distribution
  • Rice distribution

References

[edit]
  1. ^ "The Wave Theory of Light", Encyclopedic Britannica 1888; "The Problem of the Random Walk", Nature 1905 vol.72 p.318
  2. ^ a b Papoulis, Athanasios; Pillai, S. (2001) Probability, Random Variables and Stochastic Processes p. 169. ISBN 0073660116, ISBN 9780073660110
  3. ^ Röver, C. (2011). "Student-t based filter for robust signal detection". Physical Review D. 84 (12) 122004. arXiv:1109.0442. Bibcode:2011PhRvD..84l2004R. doi:10.1103/physrevd.84.122004.
  4. ^ Siddiqui, M. M. (1964) "Statistical inference for Rayleigh distributions", The Journal of Research of the National Bureau of Standards, Sec. D: Radio Science, Vol. 68D, No. 9, p. 1007
  5. ^ Siddiqui, M. M. (1961) "Some Problems Connected With Rayleigh Distributions", The Journal of Research of the National Bureau of Standards; Sec. D: Radio Propagation, Vol. 66D, No. 2, p. 169
  6. ^ Hogema, Jeroen (2005) "Shot group statistics"
  7. ^ Sijbers, J.; den Dekker, A. J.; Raman, E.; Van Dyck, D. (1999). "Parameter estimation from magnitude MR images". International Journal of Imaging Systems and Technology. 10 (2): 109–114. CiteSeerX 10.1.1.18.1228. doi:10.1002/(sici)1098-1098(1999)10:2<109::aid-ima2>3.0.co;2-r.
  8. ^ den Dekker, A. J.; Sijbers, J. (2014). "Data distributions in magnetic resonance images: a review". Physica Medica. 30 (7): 725–741. doi:10.1016/j.ejmp.2014.05.002. PMID 25059432.
  9. ^ Ahmadi, Hamed (2017-11-21). "A mathematical function for the description of nutrient-response curve". PLOS ONE. 12 (11) e0187292. Bibcode:2017PLoSO..1287292A. doi:10.1371/journal.pone.0187292. ISSN 1932-6203. PMC 5697816. PMID 29161271.
  10. ^ Dean, Robert G.; Dalrymple, Robert A. (1991). Water Wave Mechanics for Engineers and Scientists. Advanced Series on Ocean Engineering - Volume 2. World Scientific. ISBN 9-789810-204211.
  11. ^ "Rayleigh Probability Distribution Applied to Random Wave Heights" (PDF). United States Naval Academy.
  • v
  • t
  • e
Probability distributions (list)
Discrete
univariate
with finite
support
  • Benford
  • Bernoulli
  • Beta-binomial
  • Binomial
  • Categorical
  • Hypergeometric
    • Negative
  • Poisson binomial
  • Rademacher
  • Soliton
  • Discrete uniform
  • Zipf
  • Zipf–Mandelbrot
with infinite
support
  • Beta negative binomial
  • Borel
  • Conway–Maxwell–Poisson
  • Discrete phase-type
  • Delaporte
  • Extended negative binomial
  • Flory–Schulz
  • Gauss–Kuzmin
  • Geometric
  • Logarithmic
  • Mixed Poisson
  • Negative binomial
  • Panjer
  • Parabolic fractal
  • Poisson
  • Skellam
  • Yule–Simon
  • Zeta
Continuous
univariate
supported on a
bounded interval
  • Arcsine
  • ARGUS
  • Balding–Nichols
  • Bates
  • Beta
    • Generalized
  • Beta rectangular
  • Continuous Bernoulli
  • Irwin–Hall
  • Kumaraswamy
  • Logit-normal
  • Noncentral beta
  • PERT
  • Power function
  • Raised cosine
  • Reciprocal
  • Triangular
  • U-quadratic
  • Uniform
  • Wigner semicircle
supported on a
semi-infinite
interval
  • Benini
  • Benktander 1st kind
  • Benktander 2nd kind
  • Beta prime
  • Burr
  • Chi
  • Chi-squared
    • Noncentral
    • Inverse
      • Scaled
  • Dagum
  • Davis
  • Erlang
    • Hyper
  • Exponential
    • Hyperexponential
    • Hypoexponential
    • Logarithmic
  • F
    • Noncentral
  • Folded normal
  • Fréchet
  • Gamma
    • Generalized
    • Inverse
  • gamma/Gompertz
  • Gompertz
    • Shifted
  • Half-logistic
  • Half-normal
  • Hotelling's T-squared
  • Hartman–Watson
  • Inverse Gaussian
    • Generalized
  • Kolmogorov
  • Lévy
  • Log-Cauchy
  • Log-Laplace
  • Log-logistic
  • Log-normal
  • Log-t
  • Lomax
  • Matrix-exponential
  • Maxwell–Boltzmann
  • Maxwell–Jüttner
  • Mittag-Leffler
  • Nakagami
  • Pareto
  • Phase-type
  • Poly-Weibull
  • Rayleigh
  • Relativistic Breit–Wigner
  • Rice
  • Truncated normal
  • type-2 Gumbel
  • Weibull
    • Discrete
  • Wilks's lambda
supported
on the whole
real line
  • Cauchy
  • Exponential power
  • Fisher's z
  • Kaniadakis κ-Gaussian
  • Gaussian q
  • Generalized hyperbolic
  • Generalized logistic (logistic-beta)
  • Generalized normal
  • Geometric stable
  • Gumbel
  • Holtsmark
  • Hyperbolic secant
  • Johnson's SU
  • Landau
  • Laplace
    • Asymmetric
  • Logistic
  • Noncentral t
  • Normal (Gaussian)
  • Normal-inverse Gaussian
  • Skew normal
  • Slash
  • Stable
  • Student's t
  • Tracy–Widom
  • Variance-gamma
  • Voigt
with support
whose type varies
  • Generalized chi-squared
  • Generalized extreme value
  • Generalized Pareto
  • Marchenko–Pastur
  • Kaniadakis κ-exponential
  • Kaniadakis κ-Gamma
  • Kaniadakis κ-Weibull
  • Kaniadakis κ-Logistic
  • Kaniadakis κ-Erlang
  • q-exponential
  • q-Gaussian
  • q-Weibull
  • Shifted log-logistic
  • Tukey lambda
Mixed
univariate
continuous-
discrete
  • Rectified Gaussian
Multivariate
(joint)
  • Discrete:
  • Ewens
  • Multinomial
    • Dirichlet
    • Negative
  • Continuous:
  • Dirichlet
    • Generalized
  • Multivariate Laplace
  • Multivariate normal
  • Multivariate stable
  • Multivariate t
  • Normal-gamma
    • Inverse
  • Matrix-valued:
  • LKJ
  • Matrix beta
  • Matrix F
  • Matrix normal
  • Matrix t
  • Matrix gamma
    • Inverse
  • Wishart
    • Normal
    • Inverse
    • Normal-inverse
    • Complex
  • Uniform distribution on a Stiefel manifold
Directional
Univariate (circular) directional
Circular uniform
Univariate von Mises
Wrapped normal
Wrapped Cauchy
Wrapped exponential
Wrapped asymmetric Laplace
Wrapped Lévy
Bivariate (spherical)
Kent
Bivariate (toroidal)
Bivariate von Mises
Multivariate
von Mises–Fisher
Bingham
Degenerate
and singular
Degenerate
Dirac delta function
Singular
Cantor
Families
  • Circular
  • Compound Poisson
  • Elliptical
  • Exponential
  • Natural exponential
  • Location–scale
  • Maximum entropy
  • Mixture
  • Pearson
  • Tweedie
  • Wrapped
  • Category
  • Commons
Retrieved from "https://teknopedia.ac.id/w/index.php?title=Rayleigh_distribution&oldid=1341236642"
Categories:
  • Continuous distributions
  • Exponential family distributions
Hidden categories:
  • Articles with short description
  • Short description matches Wikidata
  • All articles with unsourced statements
  • Articles with unsourced statements from April 2013

  • indonesia
  • Polski
  • العربية
  • Deutsch
  • English
  • Español
  • Français
  • Italiano
  • مصرى
  • Nederlands
  • 日本語
  • Português
  • Sinugboanong Binisaya
  • Svenska
  • Українська
  • Tiếng Việt
  • Winaray
  • 中文
  • Русский
Sunting pranala
url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url url
Pusat Layanan

UNIVERSITAS TEKNOKRAT INDONESIA | ASEAN's Best Private University
Jl. ZA. Pagar Alam No.9 -11, Labuhan Ratu, Kec. Kedaton, Kota Bandar Lampung, Lampung 35132
Phone: (0721) 702022
Email: pmb@teknokrat.ac.id