Difference between revisions of "Theory of Stochastic Signals/Two-Dimensional Gaussian Random Variables"

From LNTwww
 
(13 intermediate revisions by 3 users not shown)
Line 5: Line 5:
 
|Nächste Seite=Linear Combinations of Random Variables  
 
|Nächste Seite=Linear Combinations of Random Variables  
 
}}
 
}}
==PDF and CDF==
+
==Probability density function and cumulative distribution function==
 
<br>
 
<br>
All previous statements of the fourth main chapter "Random Variables with Statistical Dependence" apply in general.  
+
All previous statements of the fourth main chapter&nbsp; "Random Variables with Statistical Dependence"&nbsp; apply in general.  
  
For the special case&nbsp; '''Gaussian random variables''''&nbsp; - the name goes back to the scientist&nbsp; [https://en.wikipedia.org/wiki/Carl_Friedrich_Gauss Carl Friedrich Gauss]&nbsp; - we can further note:  
+
For the special case&nbsp; &raquo;'''Gaussian random variables'''&laquo;&nbsp; &ndash; the name goes back to the scientist&nbsp; [https://en.wikipedia.org/wiki/Carl_Friedrich_Gauss $\text{Carl Friedrich Gauss}$]&nbsp; &ndash; we can further note:  
*The composite probability density function of a Gaussian 2D random variable&nbsp; $(x, y)$&nbsp; with mean values&nbsp; $m_x = 0$,&nbsp; $m_y = 0$&nbsp; and correlation coefficients&nbsp; $ρ_{xy}$&nbsp; is:  
+
*The joint probability density function of a two-dimensional Gaussian random variable&nbsp; $(x, y)$&nbsp; with mean values&nbsp; $m_x = 0$,&nbsp; $m_y = 0$&nbsp; and correlation coefficient&nbsp; $ρ_{xy}$&nbsp; is:  
: $$f_{xy}(x, y)=\frac{\rm 1}{\rm 2\it\pi \cdot \sigma_x \cdot \sigma_y \sqrt{\rm 1-\rho_{\it xy}^2}}\cdot\exp\Bigg[-\frac{\rm 1}{\rm 2 (1- \it\rho_{xy}^{\rm 2} {\rm)}}\cdot(\frac {\it x^{\rm 2}}{\sigma_x^{\rm 2}}+\frac {\it y^{\rm 2}}{\sigma_y^{\rm 2}}-\rm 2\it\rho_{xy}\cdot\frac{x \cdot y}{\sigma_x \cdot \sigma_y}\rm ) \rm \Bigg].$$
+
: $$f_{xy}(x, y)=\frac{\rm 1}{\rm 2\it\pi \cdot \sigma_x \cdot \sigma_y \sqrt{\rm 1-\rho_{\it xy}^2}}\cdot\exp\Bigg[-\frac{\rm 1}{\rm 2\cdot (1- \it\rho_{xy}^{\rm 2} {\rm)}}\cdot(\frac {\it x^{\rm 2}}{\sigma_x^{\rm 2}}+\frac {\it y^{\rm 2}}{\sigma_y^{\rm 2}}-\rm 2\it\rho_{xy}\cdot\frac{x \cdot y}{\sigma_x \cdot \sigma_y}\rm ) \rm \Bigg].$$
*Replacing&nbsp; $x$&nbsp; by&nbsp; $(x - m_x)$&nbsp; and&nbsp; $y$&nbsp; by&nbsp; $(y- m_y)$, we obtain the more general PDF of a two-dimensional Gaussian random variable with mean.  
+
*Replacing&nbsp; $x$&nbsp; by&nbsp; $(x - m_x)$&nbsp; and&nbsp; $y$&nbsp; by&nbsp; $(y- m_y)$,&nbsp; we obtain the more general PDF of a two-dimensional Gaussian random variable with mean.  
*The two marginal probability density functions $f_{x}(x)$&nbsp; and $f_{y}(y)$&nbsp; of a 2D Gaussian random variable are also Gaussian with rms&nbsp; $σ_x$&nbsp; and $σ_y$, respectively.
+
*The two marginal probability density functions $f_{x}(x)$&nbsp; and $f_{y}(y)$&nbsp; of a two-dimensional Gaussian random variable are also Gaussian with standard deviations&nbsp; $σ_x$&nbsp; and $σ_y$, resp.
 
*For uncorrelated components&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; in the above equation&nbsp; $ρ_{xy} = 0$&nbsp; must be substituted,&nbsp; and then the result is obtained:  
 
*For uncorrelated components&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; in the above equation&nbsp; $ρ_{xy} = 0$&nbsp; must be substituted,&nbsp; and then the result is obtained:  
 
:$$f_{xy}(x,y)=\frac{1}{\sqrt{2\pi}\cdot\sigma_{x}} \cdot\rm e^{-\it {x^{\rm 2}}\hspace{-0.08cm}/{\rm (}{\rm 2\it\sigma_{x}^{\rm 2}} {\rm )}} \cdot\frac{1}{\sqrt{2\pi}\cdot\sigma_{\it y}}\cdot e^{-\it {y^{\rm 2}}\hspace{-0.08cm}/{\rm (}{\rm 2\it\sigma_{y}^{\rm 2}} {\rm )}} = \it f_{x} \rm ( \it x \rm ) \cdot \it f_{y} \rm ( \it y \rm ) .$$
 
:$$f_{xy}(x,y)=\frac{1}{\sqrt{2\pi}\cdot\sigma_{x}} \cdot\rm e^{-\it {x^{\rm 2}}\hspace{-0.08cm}/{\rm (}{\rm 2\it\sigma_{x}^{\rm 2}} {\rm )}} \cdot\frac{1}{\sqrt{2\pi}\cdot\sigma_{\it y}}\cdot e^{-\it {y^{\rm 2}}\hspace{-0.08cm}/{\rm (}{\rm 2\it\sigma_{y}^{\rm 2}} {\rm )}} = \it f_{x} \rm ( \it x \rm ) \cdot \it f_{y} \rm ( \it y \rm ) .$$
  
 
{{BlaueBox|TEXT=   
 
{{BlaueBox|TEXT=   
$\text{Conclusion:}$&nbsp; In the special case of a 2D random variable with Gaussian PDF&nbsp; $f_{xy}(x, y)$&nbsp; ''uncorrelatedness''&nbsp; also directly follows ''statistical independence:''
+
$\text{Conclusion:}$&nbsp; In the special case of a 2D random variable with Gaussian PDF&nbsp; $f_{xy}(x, y)$,&nbsp;
 +
"statistical independence"&nbsp; follows directly from&nbsp; "uncorrelatedness":  
 
:$$f_{xy}(x,y)= f_{x}(x) \cdot f_{y}(y) . $$
 
:$$f_{xy}(x,y)= f_{x}(x) \cdot f_{y}(y) . $$
  
 
Please note:
 
Please note:
*In no other PDF can ''uncorrelatedness''&nbsp; be used to infer ''statistical independence''&nbsp;.  
+
*In no other PDF can&nbsp; "uncorrelatedness"&nbsp; be used to infer&nbsp; "statistical independence".  
*However, one can always &nbsp; ⇒ &nbsp; infer ''uncorrelatedness'' from ''statistical independence''&nbsp; for any 2D PDF&nbsp; $f_{xy}(x, y)$&nbsp; because:  
+
*However,&nbsp; one can always &nbsp; ⇒ &nbsp; for any two-dimensional PDF&nbsp; $f_{xy}(x, y)$&nbsp; infer "uncorrelatedness" from "statistical independence"&nbsp;  because:  
*If two random variables&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; are completely (statistically) independent of each other, then of course there are no ''linear''&nbsp; dependencies between them &nbsp; <br>⇒ &nbsp; they are then also uncorrelated. }}
+
::If two random variables&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; are completely&nbsp; (statistically)&nbsp; independent of each other,&nbsp; <br>then of course there are no&nbsp; "linear dependencies"&nbsp; between them &nbsp; ⇒ &nbsp; they are also uncorrelated. }}
  
  
[[File:EN_Sto_T_4_2_S1.png |right|frame| 2D Gaussian PDF and 2D CDF]]
+
The interactive HTML5/JavaScript applet&nbsp; [[Applets:Two-dimensional_Gaussian_Random_Variables|"Two-dimensional Gaussian Random Variables"]]&nbsp; plots the 2D functions PDF and CDF for arbitrary values of&nbsp; $σ_x, \ σ_y$&nbsp; and&nbsp; $ρ_{xy}$.
{{GraueBox|TEXT=
+
 
$\text{Example 1:}$&nbsp; The two graphs show.
+
{{GraueBox|TEXT=
*the probability density function (left) and
+
[[File:EN_Sto_T_4_2_S1.png |right|frame|Two-dimensional Gaussian PDF and CDF]]  
*distribution function (right)  
+
$\text{Example 1:}$&nbsp; The graphic shows
 +
*the probability density function&nbsp; (left),
 +
*cumulative distribution function&nbsp; (right)  
  
  
of a two-dimensional Gaussian random variable&nbsp; $(x, y)$&nbsp; with relatively strong positive correlation of the individual components: &nbsp; $ρ_{xy} = 0.8$.
+
of a two-dimensional Gaussian random variable&nbsp; $(x, y)$&nbsp; with relatively strong positive correlation of the individual components: &nbsp;  
 +
:$$ρ_{xy} = 0.8.$$  
  
As in the previous examples, the 2D random variable is more extended in&nbsp; $x$ direction than in&nbsp; $y$ direction: &nbsp; $σ_x = 2 - σ_y$.  
+
As in the&nbsp; [[Theory_of_Stochastic_Signals/Two-Dimensional_Random_Variables#Correlation_coefficient|$\text{previous examples}$]],&nbsp; the random variable is more extended in&nbsp; $x$&nbsp; direction than in&nbsp; $y$&nbsp; direction: &nbsp; $σ_x = 2 \cdot σ_y$.  
 
<br clear=all>
 
<br clear=all>
 
These representations can be interpreted as follows:  
 
These representations can be interpreted as follows:  
 
*The PDF here is comparable to a mountain ridge extending from the lower left to the upper right.  
 
*The PDF here is comparable to a mountain ridge extending from the lower left to the upper right.  
*The maximum is at&nbsp; $m_x = 0$&nbsp; and&nbsp; $m_y = 0$.&nbsp; This means that the the 2D random variable is mean-free.  
+
*The maximum is at&nbsp; $m_x = 0$&nbsp; and&nbsp; $m_y = 0$.&nbsp; This means that the the two-dimensional random variable is mean-free.  
*The 2D CDF as the integral in two directions over the 2D PDF increases continuously from lower left to upper right from&nbsp; $0$&nbsp; to&nbsp; $1$&nbsp; . }}
+
*The 2D&ndash;CDF as the integral in two directions over the 2D&ndash;PDF increases continuously from lower left to upper right from&nbsp; $0$&nbsp; to&nbsp; $1$. }}
 +
 
  
  
The interactive applet&nbsp; [[Applets:Two-dimensional_Gaussian_Random_Variables|PDF and CDF for 2D Gaussian random variables]]&nbsp; allows plotting the two-dimensional functions for arbitrary values of&nbsp; $σ_x, \ σ_y$&nbsp; and&nbsp; $ρ_{xy}$.
 
  
 
==Contour lines for uncorrelated random variables==
 
==Contour lines for uncorrelated random variables==
 
<br>
 
<br>
[[File:P_ID318__Sto_T_4_2_S2_ganz_neu.png |frame| Contour lines of 2D PDF with uncorrelated variables | right]]
+
[[File:P_ID318__Sto_T_4_2_S2_ganz_neu.png |frame| Contour lines of 2D&ndash;PDF with uncorrelated variables | right]]
 
From the conditional equation&nbsp; $f_{xy}(x, y) = \rm const.$&nbsp; the contour lines of the PDF can be calculated.  
 
From the conditional equation&nbsp; $f_{xy}(x, y) = \rm const.$&nbsp; the contour lines of the PDF can be calculated.  
  
If the components&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; are uncorrelated&nbsp; $(ρ_{xy} = 0)$, the equation obtained for the contour lines is:  
+
If the components&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; are uncorrelated&nbsp; $(ρ_{xy} = 0)$,&nbsp; the equation obtained for the contour lines is:  
  
 
:$$\frac{x^{\rm 2}}{\sigma_{x}^{\rm 2}}+\frac{y^{\rm 2}}{\sigma_{y}^{\rm 2}} =\rm const.$$
 
:$$\frac{x^{\rm 2}}{\sigma_{x}^{\rm 2}}+\frac{y^{\rm 2}}{\sigma_{y}^{\rm 2}} =\rm const.$$
In this case, the contour lines describe the following figures:  
+
In this case,&nbsp; the contour lines describe the following figures:  
*'''Circles'''&nbsp; $($falls&nbsp; $σ_x = σ_y$, &nbsp; green curve$)$, or  
+
*"Circles"&nbsp; $($for&nbsp; $σ_x = σ_y$, &nbsp; green curve$)$, or  
*'''Ellipses'''&nbsp; $($for&nbsp; $σ_x ≠ σ_y$, &nbsp; blue curve$)$ in alignment of the two axes.
+
*"Ellipses"&nbsp; $($for&nbsp; $σ_x ≠ σ_y$, &nbsp; blue curve$)$ in alignment of the two axes.  
<br clear=all>
 
[[File:P_ID2911__Sto_T_4_2_S2_unten.png |right|frame| Screen capture of tutorial video "Gaussian 2D random variables"]]
 
{{GraueBox|TEXT= 
 
$\text{Example 2:}$&nbsp;
 
*More information on this topic with signal examples is provided in the first part "Gaussian random variables without statistical bindings" of the learning video (German).
 
::[[Gaußsche_2D-Zufallsgrößen_(Lernvideo)|Gaussian 2D random variables]].  
 
  
*The graphic shows a snapshot of this learning video.
 
  
 +
More information on this topic with signal examples is provided in the first part&nbsp; "Gaussian random variables without statistical bindings"&nbsp; of the&nbsp; (German language)&nbsp; learning video
 +
::[[Gaußsche_2D-Zufallsgrößen_(Lernvideo)|"Gaußsche 2D-Zufallsgrößen"]] &nbsp; &rArr; &nbsp; "Two-dimensional Gaussian random variables".
 +
<br clear=all>
 +
{{GraueBox|TEXT=
 +
[[File:P_ID2911__Sto_T_4_2_S2_unten.png |right|frame| Screen capture of the video "2D Gaussian random variables"]] 
 +
$\text{Example 2:}$&nbsp;
 +
<br><br><br>
 +
*The graphic shows a snapshot of the first part video&nbsp; "Gaussian random variables without statistical bindings".
  
*The second part covers "Gaussian random variables with statistical bindings" according to the following section}}.
+
*The second video part covers&nbsp; "Gaussian random variables with statistical bindings"&nbsp; according to the following section.
 +
}}  
  
  
 
==Contour lines for correlated random variables==
 
==Contour lines for correlated random variables==
 
<br>
 
<br>
For correlated components&nbsp; $(ρ_{xy} ≠ 0)$&nbsp; the PDF contour lines are always elliptic, thus also for the special case&nbsp; $σ_x = σ_y$.&nbsp;  
+
For correlated components&nbsp; $(ρ_{xy} ≠ 0)$&nbsp; the PDF contour lines are always elliptic,&nbsp; thus also for the special case&nbsp; $σ_x = σ_y$:&nbsp;
 
 
Here the equation of determination of the PDF contour lines is:
 
 
:$$f_{xy}(x, y) = {\rm const.} \hspace{0.5cm} \rightarrow \hspace{0.5cm} \frac{x^{\rm 2} }{\sigma_{x}^{\rm 2}}+\frac{y^{\rm 2} }{\sigma_{y}^{\rm 2} }-{\rm 2}\cdot\rho_{xy}\cdot\frac{x\cdot y}{\sigma_x\cdot \sigma_y}={\rm const.}$$
 
:$$f_{xy}(x, y) = {\rm const.} \hspace{0.5cm} \rightarrow \hspace{0.5cm} \frac{x^{\rm 2} }{\sigma_{x}^{\rm 2}}+\frac{y^{\rm 2} }{\sigma_{y}^{\rm 2} }-{\rm 2}\cdot\rho_{xy}\cdot\frac{x\cdot y}{\sigma_x\cdot \sigma_y}={\rm const.}$$
The following graph shows in lighter blue two contour lines for different parameter sets, each with&nbsp; $ρ_{xy} ≠ 0$.  
+
The following graph shows in lighter blue two contour lines for different parameter sets,&nbsp; each with&nbsp; $ρ_{xy} ≠ 0$.  
[[File:P_ID408__Sto_T_4_2_S3_neu.png|right|frame|height lines of 2D PDF at correlated sizes]]
+
[[File:EN_Sto_T_4_2_S3_neu1.png|right|frame|Contour lines of the 2D&ndash;PDF at correlated quantities]]
 
*The ellipse major axis is dashed in dark blue.  
 
*The ellipse major axis is dashed in dark blue.  
*The correlation line&nbsp; $K(x)$&nbsp; is drawn in red throughout.  
+
*The correlation line or&nbsp; "regression line" &nbsp; $(RL)$&nbsp; is drawn in solid red.  
  
  
Based on this plot, the following statements can be made:  
+
Based on this plot,&nbsp; the following statements can be made:  
*The ellipse shape depends not only on the correlation coefficient&nbsp; $ρ_{xy}$&nbsp; but also on the ratio of the two standard deviations&nbsp; $σ_x$&nbsp; and&nbsp; $σ_y$&nbsp; .   
+
*The ellipse shape depends not only on the correlation coefficient&nbsp; $ρ_{xy}$&nbsp; but also on the ratio of the two standard deviations&nbsp; $σ_x$&nbsp; and&nbsp; $σ_y$.   
*The angle of inclination&nbsp; $α$&nbsp; of the ellipse major axis&nbsp; (dashed straight line)&nbsp; with respect to&nbsp; $x$&ndash;axis also depends on&nbsp; $σ_x$,&nbsp; $σ_y$&nbsp; and&nbsp; $ρ_{xy}$&nbsp; :  
+
*The angle of inclination&nbsp; $α$&nbsp; of the ellipse major axis&nbsp; (blue dashed straight line)&nbsp; with respect to the&nbsp; $x$&ndash;axis also depends on&nbsp; $σ_x$,&nbsp; $σ_y$&nbsp; and&nbsp; $ρ_{xy}$:  
 
:$$\alpha = {1}/{2} \cdot {\rm arctan } \ ( 2 \cdot \rho_{xy} \cdot \frac {\sigma_x \cdot \sigma_y}{\sigma_x^2 - \sigma_y^2}).$$
 
:$$\alpha = {1}/{2} \cdot {\rm arctan } \ ( 2 \cdot \rho_{xy} \cdot \frac {\sigma_x \cdot \sigma_y}{\sigma_x^2 - \sigma_y^2}).$$
*The (red) correlation line&nbsp; $y = K(x)$&nbsp; of a Gaussian 2D random variable always lies below the (blue dashed) ellipse major axis.  
+
*The&nbsp; (red solid)&nbsp; correlation line&nbsp; $y = K(x)$&nbsp; of a Gaussian random variable always lies below the&nbsp; (blue dashed)&nbsp; ellipse major axis.  
* $K(x)$&nbsp; can also be constructed geometrically from the intersection of the contour lines and their vertical tangents, as indicated in green in the sketches above.  
+
* $K(x)$&nbsp; can also be constructed geometrically from the intersection of the contour lines and their vertical tangents,&nbsp; as indicated in green in the sketches above.  
  
  
For more information on this topic, see the learning video (German)&nbsp; [[Gaußsche_2D-Zufallsgrößen_(Lernvideo)|Gaussian 2D Random Variables]]:
+
More information on this topic is provided in the&nbsp; (German language)&nbsp; learning video
 +
::[[Gaußsche_2D-Zufallsgrößen_(Lernvideo)|"Gaußsche 2D-Zufallsgrößen"]] &nbsp; &rArr; &nbsp; "Two-dimensional Gaussian random variables".
 +
 
 
*Part 1: &nbsp; Gaussian random variables without statistical bindings,   
 
*Part 1: &nbsp; Gaussian random variables without statistical bindings,   
 
*Part 2: &nbsp; Gaussian random variables with statistical bindings.  
 
*Part 2: &nbsp; Gaussian random variables with statistical bindings.  
Line 96: Line 102:
 
==Rotation of the coordinate system==
 
==Rotation of the coordinate system==
 
<br>
 
<br>
For some tasks it is advantageous to rotate the coordinate system, as indicated in the following graphic:  
+
For some tasks it is advantageous to rotate the coordinate system,&nbsp; as indicated in the following graphic:  
  
 
[[File:EN_Sto_T_4_2_S4.png |frame| To rotate the coordinate system | right]]
 
[[File:EN_Sto_T_4_2_S4.png |frame| To rotate the coordinate system | right]]
*The&nbsp; $(ξ, η)$ coordinate system is rotated with respect to the original&nbsp; $(x, y)$ system by the angle&nbsp; $β$&nbsp; .  
+
*The&nbsp; $(ξ, η)$&nbsp; coordinate system is rotated with respect to the original&nbsp; $(x, y)$&nbsp; system by the angle&nbsp; $β$.  
*In contrast&nbsp; $α$&nbsp; denotes the angle between the ellipse major axis and the&nbsp; $x$ axis.  
+
*In contrast,&nbsp; $α$&nbsp; denotes the angle between the ellipse major axis and the&nbsp; $x$&ndash;axis.  
  
  
Line 108: Line 114:
  
  
If&nbsp; $(x, y)$&nbsp; is a 2D Gaussian random variable, then the random variable&nbsp; $(ξ, η)$&nbsp; is also Gaussian distributed.  
+
If&nbsp; $(x, y)$&nbsp; is a Gaussian random variable,&nbsp; then the random variable&nbsp; $(ξ, η)$&nbsp; is also Gaussian distributed.  
  
Substituting the above equations into the 2D PDF $f_{xy}(x, y)$&nbsp; and comparing the coefficients, we obtain the following governing equations for&nbsp; $σ_x$,&nbsp; $σ_y$&nbsp; and&nbsp; $ρ_{xy}$&nbsp; respectively&nbsp; $σ_ξ,&nbsp; σ_η$&nbsp; and&nbsp; $ρ_{ξη}$:
+
Substituting the above equations into the 2D&ndash;PDF $f_{xy}(x, y)$&nbsp; and comparing the coefficients,&nbsp; we obtain the following governing equations for&nbsp; $σ_x$,&nbsp; $σ_y$&nbsp; and&nbsp; $ρ_{xy}$&nbsp; respectively&nbsp; $σ_ξ,&nbsp; σ_η$ &nbsp; and&nbsp; $ρ_{ξη}$:
  
 
:$$\frac {1}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi^2} = \frac {1}{(1 - \rho_{xy}^2) }  \left[ \frac {\cos^2 (\beta)}{\sigma_{x}^2 } + \frac {\sin^2 (\beta)}{\sigma_{y}^2 } - 2 \rho_{xy} \cdot \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{x} \cdot \sigma_{y}}\right ] ,$$
 
:$$\frac {1}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi^2} = \frac {1}{(1 - \rho_{xy}^2) }  \left[ \frac {\cos^2 (\beta)}{\sigma_{x}^2 } + \frac {\sin^2 (\beta)}{\sigma_{y}^2 } - 2 \rho_{xy} \cdot \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{x} \cdot \sigma_{y}}\right ] ,$$
Line 116: Line 122:
 
:$$\frac {\rho_{\xi \eta}}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi\cdot \sigma_\eta}= \frac {1}{(1 - \rho_{xy}^2) }  \left[ \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{x}^2 } - \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{y}^2 } + \frac {\rho_{xy}}{\sigma_{x} \cdot \sigma_{y}} \cdot ( \cos^2( \beta) -\sin^2( \beta)) \right ] .$$
 
:$$\frac {\rho_{\xi \eta}}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi\cdot \sigma_\eta}= \frac {1}{(1 - \rho_{xy}^2) }  \left[ \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{x}^2 } - \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{y}^2 } + \frac {\rho_{xy}}{\sigma_{x} \cdot \sigma_{y}} \cdot ( \cos^2( \beta) -\sin^2( \beta)) \right ] .$$
  
With these three equations the in each case three parameters of the two coordinate systems can be converted directly, which is possible however only in special cases without substantial computational expenditure &nbsp; Following an example with justifiable computational expenditure.  
+
With these three equations,&nbsp; in each case three parameters of the two coordinate systems can be converted directly,&nbsp; which is possible however only in special cases without substantial computational expenditure.&nbsp; Following an example with justifiable computational expenditure.  
 +
 
  
  
[[File: EN_Sto_T_4_2_S4.png|right|frame]]
 
 
{{GraueBox|TEXT=  
 
{{GraueBox|TEXT=  
$\text{Example 3:}$&nbsp; We consider a Gaussian 2D PDF with the following properties:  
+
[[File: EN_Sto_T_4_2_S4.png|right|frame|To rotate the coordinate system]]
 +
$\text{Example 3:}$&nbsp; We consider a two-dimensional Gaussian PDF with the following properties:  
 +
 
 +
#The variances of the two components are equal: &nbsp; $σ_x^2 = σ_y^2 = 1$.
 +
#The correlation coefficient between&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; is&nbsp; $ρ_{xy} = 0.5$.
 +
#The angle of the ellipse major axis with respect to the&nbsp; $x$&ndash;axis is thus&nbsp; $α = 45^\circ$.
 +
 
  
*The variances of the two components are equal: &nbsp; $σ_x^2 = σ_y^2 = 1$.
+
Notes:
*The correlation coefficient between&nbsp; $x$&nbsp; and&nbsp; $y$&nbsp; is&nbsp; $ρ_{xy} = 0.5$.
+
*If the coordinate system were also rotated by&nbsp; $β =45^\circ$,&nbsp; there would be uncorrelated components because of&nbsp; $σ_x = σ_y$&nbsp; and because of&nbsp; $\sin(β) = \cos(β) = 1/\sqrt{2}$&nbsp; for the new correlation coefficient &nbsp; &rArr; &nbsp; $ρ_{ξη} = 0$ .  
*The angle of the ellipse major axis with respect to&nbsp; $x$&ndash;axis is thus&nbsp; $α = 45^\circ$.  
 
  
 +
*The two standard deviations&nbsp; &ndash; related to the new coordinate system &ndash;&nbsp; would then result according to the first two equations to&nbsp; $σ_ξ = \sqrt{1.5}$&nbsp; and&nbsp; $σ_η = \sqrt{0.5}$.
  
If the coordinate system were also rotated by&nbsp; $β =45^\circ$&nbsp; , there would be uncorrelated components because of&nbsp; $σ_x = σ_y$&nbsp; and because of&nbsp; $\sin(β) = \cos(β) = 1/\sqrt{2}$&nbsp; for the new correlation coefficient&nbsp; $ρ_{ξη} = 0$ &nbsp; &rArr; &nbsp; .
 
  
The two standard deviations - related to the new coordinate system - would then result according to the first two equations to&nbsp; $σ_ξ = \sqrt{1.5}$&nbsp; and&nbsp; $σ_η = \sqrt{0.5}$.  
+
However,&nbsp; the above sketch is not based on&nbsp; $β = α$&nbsp; but on&nbsp; $β = α/2$.
  
However, the above sketch is not based on&nbsp; $β = α$&nbsp; but on&nbsp; $β = α/2$.
+
With the parameters and equations
+
# $σ_x = σ_y = 1$,&nbsp; $ρ_{xy} = 0.5$,  
*With&nbsp; $σ_x = σ_y = 1$,&nbsp; $ρ_{xy} = 0.5$,  
+
#$α = 45^\circ$,&nbsp; $\sin(β) - \cos(β) = \sin(2β)/2 = \sin(α)/2$,&nbsp; and  
*as well as&nbsp; $α = 45^\circ$,&nbsp; $\sin(β) - \cos(β) = \sin(2β)/2 = \sin(α)/2$&nbsp; and  
+
#$\cos^2(β) - \sin^2(β) = \cos(2β)= \cos(α)$
*$\cos^2(β) - \sin^2(β) = \cos(2β)= \cos(α)$
 
  
  
Line 146: Line 156:
 
:$${\rm (III)}\hspace{0.54cm}\frac {\rho_{\xi \eta} }{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi\cdot \sigma_\eta}= \frac {\rho_{\xi \eta} }{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi^2 \cdot 0.691}=\frac {2}{3}\cdot \cos( \alpha) = 0.471.$$
 
:$${\rm (III)}\hspace{0.54cm}\frac {\rho_{\xi \eta} }{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi\cdot \sigma_\eta}= \frac {\rho_{\xi \eta} }{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi^2 \cdot 0.691}=\frac {2}{3}\cdot \cos( \alpha) = 0.471.$$
  
Dividing now the equation&nbsp; $\rm (III)$&nbsp; by the equation&nbsp; $\rm (I)$, we get:  
+
Dividing now the equation&nbsp; $\rm (III)$&nbsp; by the equation&nbsp; $\rm (I)$,&nbsp; we get:  
 
:$$ \frac {\rho_{\xi \eta} }{0.691}=\frac {0.471}{0.862}\hspace{0.5cm}\Rightarrow\hspace{0.5cm}{\rho_{\xi \eta} }= 0.378.$$
 
:$$ \frac {\rho_{\xi \eta} }{0.691}=\frac {0.471}{0.862}\hspace{0.5cm}\Rightarrow\hspace{0.5cm}{\rho_{\xi \eta} }= 0.378.$$
  
Line 152: Line 162:
 
==Exercises for the chapter==
 
==Exercises for the chapter==
 
<br>
 
<br>
[[Aufgaben:4.4 Gaußsche 2D-WDF|Aufgabe 4.4: Gaußsche 2D-WDF]]
+
[[Aufgaben:Exercise_4.4:_Two-dimensional_Gaussian_PDF|Exercise 4.4: Two-dimensional Gaussian PDF]]
  
[[Aufgaben:4.4Z Höhenlinien der 2D-WDF|Aufgabe 4.4Z: Höhenlinien der 2D-WDF]]
+
[[Aufgaben:Exercise_4.4Z:_Contour_Lines_of_the_"2D-PDF"|Exercise 4.4Z: Contour Lines of the "2D-PDF"]]
  
[[Aufgaben:4.5 2D-Prüfungsauswertung|Aufgabe 4.5: 2D-Prüfungsauswertung]]
+
[[Aufgaben:Exercise_4.5:_Two-dimensional_Examination_Evaluation|Exercise 4.5: Two-dimensional Examination Evaluation]]
  
[[Aufgaben:4.6 Koordinatendrehung|Aufgabe 4.6: Koordinatendrehung]]
+
[[Aufgaben:Exercise_4.6:_Coordinate_Rotation|Exercise 4.6: Coordinate Rotation]]
  
  
 
{{Display}}
 
{{Display}}

Latest revision as of 14:44, 21 December 2022

Probability density function and cumulative distribution function


All previous statements of the fourth main chapter  "Random Variables with Statistical Dependence"  apply in general.

For the special case  »Gaussian random variables«  – the name goes back to the scientist  $\text{Carl Friedrich Gauss}$  – we can further note:

  • The joint probability density function of a two-dimensional Gaussian random variable  $(x, y)$  with mean values  $m_x = 0$,  $m_y = 0$  and correlation coefficient  $ρ_{xy}$  is:
$$f_{xy}(x, y)=\frac{\rm 1}{\rm 2\it\pi \cdot \sigma_x \cdot \sigma_y \sqrt{\rm 1-\rho_{\it xy}^2}}\cdot\exp\Bigg[-\frac{\rm 1}{\rm 2\cdot (1- \it\rho_{xy}^{\rm 2} {\rm)}}\cdot(\frac {\it x^{\rm 2}}{\sigma_x^{\rm 2}}+\frac {\it y^{\rm 2}}{\sigma_y^{\rm 2}}-\rm 2\it\rho_{xy}\cdot\frac{x \cdot y}{\sigma_x \cdot \sigma_y}\rm ) \rm \Bigg].$$
  • Replacing  $x$  by  $(x - m_x)$  and  $y$  by  $(y- m_y)$,  we obtain the more general PDF of a two-dimensional Gaussian random variable with mean.
  • The two marginal probability density functions $f_{x}(x)$  and $f_{y}(y)$  of a two-dimensional Gaussian random variable are also Gaussian with standard deviations  $σ_x$  and $σ_y$, resp.
  • For uncorrelated components  $x$  and  $y$  in the above equation  $ρ_{xy} = 0$  must be substituted,  and then the result is obtained:
$$f_{xy}(x,y)=\frac{1}{\sqrt{2\pi}\cdot\sigma_{x}} \cdot\rm e^{-\it {x^{\rm 2}}\hspace{-0.08cm}/{\rm (}{\rm 2\it\sigma_{x}^{\rm 2}} {\rm )}} \cdot\frac{1}{\sqrt{2\pi}\cdot\sigma_{\it y}}\cdot e^{-\it {y^{\rm 2}}\hspace{-0.08cm}/{\rm (}{\rm 2\it\sigma_{y}^{\rm 2}} {\rm )}} = \it f_{x} \rm ( \it x \rm ) \cdot \it f_{y} \rm ( \it y \rm ) .$$

$\text{Conclusion:}$  In the special case of a 2D random variable with Gaussian PDF  $f_{xy}(x, y)$,  "statistical independence"  follows directly from  "uncorrelatedness":

$$f_{xy}(x,y)= f_{x}(x) \cdot f_{y}(y) . $$

Please note:

  • In no other PDF can  "uncorrelatedness"  be used to infer  "statistical independence".
  • However,  one can always   ⇒   for any two-dimensional PDF  $f_{xy}(x, y)$  infer "uncorrelatedness" from "statistical independence"  because:
If two random variables  $x$  and  $y$  are completely  (statistically)  independent of each other, 
then of course there are no  "linear dependencies"  between them   ⇒   they are also uncorrelated.


The interactive HTML5/JavaScript applet  "Two-dimensional Gaussian Random Variables"  plots the 2D functions PDF and CDF for arbitrary values of  $σ_x, \ σ_y$  and  $ρ_{xy}$.

Two-dimensional Gaussian PDF and CDF

$\text{Example 1:}$  The graphic shows

  • the probability density function  (left),
  • cumulative distribution function  (right)


of a two-dimensional Gaussian random variable  $(x, y)$  with relatively strong positive correlation of the individual components:  

$$ρ_{xy} = 0.8.$$

As in the  $\text{previous examples}$,  the random variable is more extended in  $x$  direction than in  $y$  direction:   $σ_x = 2 \cdot σ_y$.
These representations can be interpreted as follows:

  • The PDF here is comparable to a mountain ridge extending from the lower left to the upper right.
  • The maximum is at  $m_x = 0$  and  $m_y = 0$.  This means that the the two-dimensional random variable is mean-free.
  • The 2D–CDF as the integral in two directions over the 2D–PDF increases continuously from lower left to upper right from  $0$  to  $1$.



Contour lines for uncorrelated random variables


Contour lines of 2D–PDF with uncorrelated variables

From the conditional equation  $f_{xy}(x, y) = \rm const.$  the contour lines of the PDF can be calculated.

If the components  $x$  and  $y$  are uncorrelated  $(ρ_{xy} = 0)$,  the equation obtained for the contour lines is:

$$\frac{x^{\rm 2}}{\sigma_{x}^{\rm 2}}+\frac{y^{\rm 2}}{\sigma_{y}^{\rm 2}} =\rm const.$$

In this case,  the contour lines describe the following figures:

  • "Circles"  $($for  $σ_x = σ_y$,   green curve$)$, or
  • "Ellipses"  $($for  $σ_x ≠ σ_y$,   blue curve$)$ in alignment of the two axes.


More information on this topic with signal examples is provided in the first part  "Gaussian random variables without statistical bindings"  of the  (German language)  learning video

"Gaußsche 2D-Zufallsgrößen"   ⇒   "Two-dimensional Gaussian random variables".


Screen capture of the video "2D Gaussian random variables"

$\text{Example 2:}$ 


  • The graphic shows a snapshot of the first part video  "Gaussian random variables without statistical bindings".
  • The second video part covers  "Gaussian random variables with statistical bindings"  according to the following section.


Contour lines for correlated random variables


For correlated components  $(ρ_{xy} ≠ 0)$  the PDF contour lines are always elliptic,  thus also for the special case  $σ_x = σ_y$: 

$$f_{xy}(x, y) = {\rm const.} \hspace{0.5cm} \rightarrow \hspace{0.5cm} \frac{x^{\rm 2} }{\sigma_{x}^{\rm 2}}+\frac{y^{\rm 2} }{\sigma_{y}^{\rm 2} }-{\rm 2}\cdot\rho_{xy}\cdot\frac{x\cdot y}{\sigma_x\cdot \sigma_y}={\rm const.}$$

The following graph shows in lighter blue two contour lines for different parameter sets,  each with  $ρ_{xy} ≠ 0$.

Contour lines of the 2D–PDF at correlated quantities
  • The ellipse major axis is dashed in dark blue.
  • The correlation line or  "regression line"   $(RL)$  is drawn in solid red.


Based on this plot,  the following statements can be made:

  • The ellipse shape depends not only on the correlation coefficient  $ρ_{xy}$  but also on the ratio of the two standard deviations  $σ_x$  and  $σ_y$.
  • The angle of inclination  $α$  of the ellipse major axis  (blue dashed straight line)  with respect to the  $x$–axis also depends on  $σ_x$,  $σ_y$  and  $ρ_{xy}$:
$$\alpha = {1}/{2} \cdot {\rm arctan } \ ( 2 \cdot \rho_{xy} \cdot \frac {\sigma_x \cdot \sigma_y}{\sigma_x^2 - \sigma_y^2}).$$
  • The  (red solid)  correlation line  $y = K(x)$  of a Gaussian random variable always lies below the  (blue dashed)  ellipse major axis.
  • $K(x)$  can also be constructed geometrically from the intersection of the contour lines and their vertical tangents,  as indicated in green in the sketches above.


More information on this topic is provided in the  (German language)  learning video

"Gaußsche 2D-Zufallsgrößen"   ⇒   "Two-dimensional Gaussian random variables".
  • Part 1:   Gaussian random variables without statistical bindings,
  • Part 2:   Gaussian random variables with statistical bindings.

Rotation of the coordinate system


For some tasks it is advantageous to rotate the coordinate system,  as indicated in the following graphic:

To rotate the coordinate system
  • The  $(ξ, η)$  coordinate system is rotated with respect to the original  $(x, y)$  system by the angle  $β$.
  • In contrast,  $α$  denotes the angle between the ellipse major axis and the  $x$–axis.


The following relationships exist between the coordinates of the two reference frames:

$$\xi = \hspace{0.4cm} \cos (\beta) \cdot x + \sin (\beta) \cdot y \hspace{0.55cm}{\rm resp. }\hspace{0.5cm} x = \cos (\beta) \cdot \xi - \sin (\beta) \cdot \eta ,$$
$$\eta = - \sin (\beta) \cdot x + \cos (\beta) \cdot y \hspace{0.5cm}{\rm resp. }\hspace{0.5cm} y = \sin (\beta) \cdot \xi + \cos (\beta) \cdot \eta .$$


If  $(x, y)$  is a Gaussian random variable,  then the random variable  $(ξ, η)$  is also Gaussian distributed.

Substituting the above equations into the 2D–PDF $f_{xy}(x, y)$  and comparing the coefficients,  we obtain the following governing equations for  $σ_x$,  $σ_y$  and  $ρ_{xy}$  respectively  $σ_ξ,  σ_η$   and  $ρ_{ξη}$:

$$\frac {1}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi^2} = \frac {1}{(1 - \rho_{xy}^2) } \left[ \frac {\cos^2 (\beta)}{\sigma_{x}^2 } + \frac {\sin^2 (\beta)}{\sigma_{y}^2 } - 2 \rho_{xy} \cdot \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{x} \cdot \sigma_{y}}\right ] ,$$
$$\frac {1}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\eta^2} = \frac {1}{(1 - \rho_{xy}^2) } \left[ \frac {\sin^2 (\beta)}{\sigma_{x}^2 } + \frac {\cos^2 (\beta)}{\sigma_{y}^2 } + 2 \rho_{xy} \cdot \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{x} \cdot \sigma_{y}}\right ] ,$$
$$\frac {\rho_{\xi \eta}}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi\cdot \sigma_\eta}= \frac {1}{(1 - \rho_{xy}^2) } \left[ \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{x}^2 } - \frac {\sin (\beta) \cdot \cos (\beta)}{\sigma_{y}^2 } + \frac {\rho_{xy}}{\sigma_{x} \cdot \sigma_{y}} \cdot ( \cos^2( \beta) -\sin^2( \beta)) \right ] .$$

With these three equations,  in each case three parameters of the two coordinate systems can be converted directly,  which is possible however only in special cases without substantial computational expenditure.  Following an example with justifiable computational expenditure.


To rotate the coordinate system

$\text{Example 3:}$  We consider a two-dimensional Gaussian PDF with the following properties:

  1. The variances of the two components are equal:   $σ_x^2 = σ_y^2 = 1$.
  2. The correlation coefficient between  $x$  and  $y$  is  $ρ_{xy} = 0.5$.
  3. The angle of the ellipse major axis with respect to the  $x$–axis is thus  $α = 45^\circ$.


Notes:

  • If the coordinate system were also rotated by  $β =45^\circ$,  there would be uncorrelated components because of  $σ_x = σ_y$  and because of  $\sin(β) = \cos(β) = 1/\sqrt{2}$  for the new correlation coefficient   ⇒   $ρ_{ξη} = 0$ .
  • The two standard deviations  – related to the new coordinate system –  would then result according to the first two equations to  $σ_ξ = \sqrt{1.5}$  and  $σ_η = \sqrt{0.5}$.


However,  the above sketch is not based on  $β = α$  but on  $β = α/2$.

With the parameters and equations

  1. $σ_x = σ_y = 1$,  $ρ_{xy} = 0.5$,
  2. $α = 45^\circ$,  $\sin(β) - \cos(β) = \sin(2β)/2 = \sin(α)/2$,  and
  3. $\cos^2(β) - \sin^2(β) = \cos(2β)= \cos(α)$


the system of equations can be represented as follows:

$${\rm (I)}\hspace{0.8cm}\frac {1}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi^2} = \frac {4}{3} \left[ 1 - \frac {1}{2}\cdot {\sin (\alpha) }\right ] = 0.862 ,$$
$${\rm (II)}\hspace{0.68cm}\frac {1}{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\eta^2} = \frac {4}{3} \left[ 1 + \frac {1}{2}\cdot {\sin (\alpha) }\right ] = 1.805 ,\hspace{0.28cm}\frac {\rm (I)}{\rm (II)}: \frac {\sigma_\eta}{\sigma_\xi} = \sqrt{\frac{0.862}{1.805} }= 0.691,$$
$${\rm (III)}\hspace{0.54cm}\frac {\rho_{\xi \eta} }{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi\cdot \sigma_\eta}= \frac {\rho_{\xi \eta} }{(1 - \rho_{\xi \eta}^2) \cdot \sigma_\xi^2 \cdot 0.691}=\frac {2}{3}\cdot \cos( \alpha) = 0.471.$$

Dividing now the equation  $\rm (III)$  by the equation  $\rm (I)$,  we get:

$$ \frac {\rho_{\xi \eta} }{0.691}=\frac {0.471}{0.862}\hspace{0.5cm}\Rightarrow\hspace{0.5cm}{\rho_{\xi \eta} }= 0.378.$$

The other two parameters of the new coordinate system now result in  $σ_ξ ≈ 1$  and  $σ_η ≈ 0.7$.

Exercises for the chapter


Exercise 4.4: Two-dimensional Gaussian PDF

Exercise 4.4Z: Contour Lines of the "2D-PDF"

Exercise 4.5: Two-dimensional Examination Evaluation

Exercise 4.6: Coordinate Rotation