Difference between revisions of "Aufgaben:Exercise 4.15: PDF and Covariance Matrix"

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{{quiz-Header|Buchseite=Stochastische Signaltheorie/Verallgemeinerung auf N-dimensionale Zufallsgrößen
+
{{quiz-Header|Buchseite=Theory_of_Stochastic_Signals/Generalization_to_N-Dimensional_Random_Variables
 
}}
 
}}
  
[[File:P_ID669__Sto_A_4_15.png |right|]]
+
[[File:P_ID669__Sto_A_4_15.png |right|frame|Two covariance matrices]]
:Wir betrachten hier die dreidimensionale Zufallsgröße <b>x</b>, deren allgemein dargestellte Kovarianzmatrix <b>K<sub>x</sub></b> in der Grafik oben angegeben ist. Die Zufallsgröße besitzt folgende Eigenschaften:
+
We consider here the three-dimensional random variable &nbsp; $\mathbf{x}$,&nbsp; whose commonly represented covariance matrix &nbsp; $\mathbf{K}_{\mathbf{x}}$ &nbsp; is given in the upper graph.&nbsp; The random variable has the following properties:
  
:* Die drei Komponenten sind gaußverteilt und es gilt für die Elemente der Kovarianzmatrix:
+
* The three components are Gaussian distributed and it holds for the elements of the covariance matrix:
 
:$$K_{ij} = \sigma_i \cdot \sigma_j \cdot \rho_{ij}.$$
 
:$$K_{ij} = \sigma_i \cdot \sigma_j \cdot \rho_{ij}.$$
 +
* Let the elements on the main diagonal be known:
 +
:$$ K_{11} =1, \ K_{22} =0, \ K_{33} =0.25.$$
 +
* The correlation coefficient between the coefficients&nbsp; $x_1$&nbsp; and&nbsp; $x_3$&nbsp; is&nbsp; $\rho_{13} = 0.8$.
  
:* Die Elemente auf der Hauptdiagonalen seien bekannt:
 
:$$ K_{11} =1, K_{22} =0, K_{33} =0.25.$$
 
  
:* Der Korrelationskoeffizient zwischen den Koeffizienten <i>x</i><sub>1</sub> und <i>x</i><sub>3</sub> beträgt 0.8.
+
In the second part of the exercise, consider the random variable&nbsp; $\mathbf{y}$&nbsp; with the two components&nbsp; $y_1$&nbsp; and&nbsp; $y_2$&nbsp; whose covariance matrix&nbsp; $\mathbf{K}_{\mathbf{y}}$&nbsp; is determined by the given numerical values &nbsp;$(1, \ 0.4, \ 0.25)$&nbsp; .
  
:Im zweiten Teil der Aufgabe soll die Zufallsgröße <b>y</b> mit den beiden Komponenten <i>y</i><sub>1</sub> und <i>y</i><sub>2</sub> betrachtet werden, deren Kovarianzmatrix <b>K<sub>y</sub></b> durch die angegebenen Zahlenwerte (1, 0.4 und 0.25) bestimmt ist.
+
The probability density function&nbsp; $\rm (PDF)$&nbsp; of a zero mean Gaussian two-dimensional random variable&nbsp; $\mathbf{y}$&nbsp; is as specified on page&nbsp; [[Theory_of_Stochastic_Signals/Generalization_to_N-Dimensional_Random_Variables#Relationship_between_covariance_matrix_and_PDF|"Relationship between covariance matrix and PDF"]]&nbsp; with&nbsp; $N = 2$:
 +
:$$\mathbf{f_y}(\mathbf{y})  =  \frac{1}{{2 \pi \cdot
 +
\sqrt{|\mathbf{K_y}|}}}\cdot {\rm e}^{-{1}/{2} \hspace{0.05cm}\cdot\hspace{0.05cm} \mathbf{y} ^{\rm T}\hspace{0.05cm}\cdot\hspace{0.05cm}\mathbf{K_y}^{-1} \hspace{0.05cm}\cdot\hspace{0.05cm} \mathbf{y}  }=  C \cdot  {\rm e}^{-\gamma_1 \hspace{0.05cm}\cdot\hspace{0.05cm} y_1^2 \hspace{0.1cm}+\hspace{0.1cm} \gamma_2 \hspace{0.05cm}\cdot\hspace{0.05cm} y_2^2 \hspace{0.1cm}+\hspace{0.1cm}\gamma_{12} \hspace{0.05cm}\cdot\hspace{0.05cm} y_1 \hspace{0.05cm}\cdot\hspace{0.05cm} y_2 }.$$
  
:Die Wahrscheinlichkeitsdichtefunktion einer mittelwertfreien Gaußschen zweidimensionalen Zufallsgröße <b>y</b> lautet gemäß den Angaben auf der Seite Kovarianzmatrix und WDF mit <i>N = 2</i>:
+
*In the subtasks&nbsp; '''(5)'''&nbsp; and&nbsp; '''(6)'''&nbsp; the prefactor&nbsp; $C$&nbsp; and the further PDF coefficients&nbsp; $\gamma_1$,&nbsp; $\gamma_2$&nbsp; and&nbsp; $\gamma_{12}$&nbsp; are to be calculated according to this vector representation.  
:$$\mathbf{f_y}(\mathbf{y})   =  \frac{1}{{(2 \pi) \cdot
+
*In contrast,&nbsp; the corresponding equation in &nbsp;conventional approach according to the chapter&nbsp; [[Theory_of_Stochastic_Signals/Two-Dimensional_Gaussian_Random_Variables#Probability_density_function_and_cumulative_distribution_function|"Two-dimensional Gaussian Random Variables"]]&nbsp; would be:
\sqrt{|\mathbf{K_y}|}}}\cdot {\rm exp}{\left(-\frac{1}{2}\cdot \mathbf{y} ^{\rm T}\cdot\mathbf{K_y}^{-1} \cdot \mathbf{y}  \right)}= \\  =  C \cdot  {\rm exp}{\left(-\gamma_1 \cdot y_1^2 + \gamma_2 \cdot y_2^2 +\gamma_{12} \cdot y_1 \cdot y_2 \right)}.$$
 
 
 
:In den Teilaufgaben (5) und (6) sollen der Vorfaktor <i>C</i> und die weiteren WDF-Koeffizienten <i>&gamma;</i><sub>1</sub>, <i>&gamma;</i><sub>2</sub> und <i>&gamma;</i><sub>12</sub> gemäß dieser Vektordarstellung berechnet werden. Dagegen würde die entsprechende Gleichung bei herkömmlicher Vorgehensweise entsprechend Kapitel 4.2 lauten:
 
 
:$$f_{y_1,\hspace{0.1cm}y_2}(y_1,y_2)=\frac{\rm 1}{\rm 2\pi \sigma_1
 
:$$f_{y_1,\hspace{0.1cm}y_2}(y_1,y_2)=\frac{\rm 1}{\rm 2\pi \sigma_1
 
\sigma_2 \sqrt{\rm 1-\rho^2}}\cdot\exp\Bigg[-\frac{\rm 1}{\rm 2
 
\sigma_2 \sqrt{\rm 1-\rho^2}}\cdot\exp\Bigg[-\frac{\rm 1}{\rm 2
Line 27: Line 27:
 
y}_1{\it y}_2}{\sigma_1 \cdot \sigma_2}) \rm \Bigg].$$
 
y}_1{\it y}_2}{\sigma_1 \cdot \sigma_2}) \rm \Bigg].$$
  
:<b>Hinweis:</b> Die Aufgabe bezieht sich auf die theoretischen Grundlagen von Kapitel 4.7. Einige Grundlagen zur Anwendung von Vektoren und Matrizen finden sich auf den folgenden Seiten:<br> &nbsp;&nbsp;&nbsp;&nbsp; Determinante einer Matrix,<br> &nbsp;&nbsp;&nbsp;&nbsp; Inverse einer Matrix.
 
  
  
===Fragebogen===
+
 
 +
 
 +
Hints:
 +
*The exercise belongs to the chapter &nbsp;[[Theory_of_Stochastic_Signals/Generalization_to_N-Dimensional_Random_Variables|Generalization to N-Dimensional Random Variables]].
 +
*Some basics on the application of vectors and matrices can be found in the sections &nbsp;[[Theory_of_Stochastic_Signals/Generalization_to_N-Dimensional_Random_Variables#Basics_of_matrix_operations:_Determinant_of_a_matrix|"Determinant of a Matrix"]]&nbsp; and &nbsp;[[Theory_of_Stochastic_Signals/Generalization_to_N-Dimensional_Random_Variables#Basics_of_matrix_operations:_Inverse_of_a_matrix|Inverse of a Matrix]]&nbsp;.
 +
*Reference is also made to the chapter &nbsp;[[Theory_of_Stochastic_Signals/Two-Dimensional_Gaussian_Random_Variables|"Two-Dimensional Gaussian Random Variables"]].
 +
 +
 
 +
 
 +
 
 +
===Questions===
  
 
<quiz display=simple>
 
<quiz display=simple>
{Welche der nachfolgenden Aussagen sind zutreffend?
+
{Which of the following statements are true?
 
|type="[]"}
 
|type="[]"}
- Die Zufallsgröße <b>x</b> ist mit Sicherheit mittelwertfrei.
+
- The random variable&nbsp; $\mathbf{x}$&nbsp; is zero mean with certainty.
+ Die Matrixelemente <i>K</i><sub>12</sub>, <i>K</i><sub>21</sub>, <i>K</i><sub>23</sub> und <i>K</i><sub>32</sub> sind 0.
+
+ The matrix elements&nbsp; $K_{12}$,&nbsp; $K_{21}$,&nbsp; $K_{23}$&nbsp; and&nbsp; $K_{32}$&nbsp; are zero.
- Es gilt <i>K</i><sub>31</sub> = &ndash;<i>K</i><sub>13</sub>.
+
- It holds that $K_{31} = -K_{13}$.
  
  
{Berechnen Sie das Matrixelement der letzten Zeile und ersten Spalte.
+
{Calculate the matrix element of the last row and first column.
 
|type="{}"}
 
|type="{}"}
$K_\text{31}$ = { 0.4 3% }
+
$K_\text{31} \ = \ $ { 0.4 3% }
  
  
{Berechnen Sie die Determinante |<b>K<sub>y</sub></b>|.
+
{Calculate the determinant&nbsp; $|\mathbf{K}_{\mathbf{y}}|$.
 
|type="{}"}
 
|type="{}"}
$|K_y|$ = { 0.09 3% }
+
$|\mathbf{K}_{\mathbf{y}}| \ = \ $ { 0.09 3% }
  
  
{Berechnen Sie die inverse Matrix <b>I<sub>y</sub></b> =  
+
{Calculate the inverse matrix&nbsp; $\mathbf{I}_{\mathbf{y}} = \mathbf{K}_{\mathbf{y}}^{-1}$&nbsp; with matrix elements.
<b>K<sub>y</sub></b><sup>&ndash;1</sup> mit den Matrixelementen
+
$I_{ij}$ :
<i>I<sub>ij</sub></i>:
 
 
|type="{}"}
 
|type="{}"}
$I_\text{11}$ = { 2.777 3% }
+
$I_\text{11} \ = \ $ { 2.777 3% }
$I_\text{12}$ = { 4.444 3% }
+
$I_\text{12} \ = \ $ { -4.454--4.434 }
$I_\text{21}$ = { 4.444 3% }
+
$I_\text{21} \ = \ $ { -4.454--4.434 }
$I_\text{22}$ = { 11.111 3% }
+
$I_\text{22} \ = \ $ { 11.111 3% }
  
  
{Berechnen Sie den Vorfaktor <i>C</i> der 2D-WDF und vergleichen Sie das Ergebnis
+
{Calculate the prefactor&nbsp; $C$&nbsp; of the two-dimensional probability density function.&nbsp; Compare the result
mit der entsprechenden Formel gemäß Kapitel 4.2.
+
with the formula given in the theory section.
 
|type="{}"}
 
|type="{}"}
$C$ = { 0.531 3% }
+
$C\ = \ $ { 0.531 3% }
  
  
{Bestimmen Sie die Koeffizienten im Argument der Exponentialfunktion. Vergleichen Sie das Ergebnis mit der 2D&ndash;WDF&ndash;Gleichung.
+
{Determine the coefficients in the argument of the exponential function.&nbsp; Compare the result with the two-dimensional PDF equation.
 
|type="{}"}
 
|type="{}"}
$\gamma_1$ = { 1.389 3% }
+
$\gamma_1 \ = \ $ { 1.389 3% }
$\gamma_2$ = { 5.556 3% }
+
$\gamma_2 \ = \ $ { 5.556 3% }
$\gamma_12$ = - { 4.444 3% }
+
$\gamma_{12}\ = \ $ { -4.454--4.434 }
  
  
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</quiz>
 
</quiz>
  
===Musterlösung===
+
===Solution===
 
{{ML-Kopf}}
 
{{ML-Kopf}}
:<b>1.</b>&nbsp;&nbsp;Anhand der Kovarianzmatrix <b>K<sub>x</sub></b> ist keine Aussage darüber möglich, ob die zugrunde liegende Zufallsgröße <b>x</b> mittelwertfrei oder mittelwertbehaftet ist, da ein eventueller Mittelwert <b>m</b> herausgerechnet wird. Um Aussagen über den Mittelwert machen zu können, müsste die Korrelationsmatrix <b>R<sub>x</sub></b> bekannt sein. Aus <i>K</i><sub>22</sub> = (<i>&sigma;</i><sub>2</sub>)<sup>2</sup> = 0 folgt zwingend, dass alle Elemente in der zweiten Zeile (<i>K</i><sub>21</sub>, <i>K</i><sub>23)</sub> und der zweiten Spalte (<i>K</i><sub>12</sub>, <i>K</i><sub>32)</sub> ebenfalls 0 sind. Dagegen ist die dritte Aussage falsch: Die Elemente sind symmetrisch zur Hauptdiagonalen, so dass stets <i>K</i><sub>31</sub> = <i>K</i><sub>13</sub> gelten muss. Richtig ist nur <u>der Vorschlag 2</u>.
+
'''(1)'''&nbsp; Only&nbsp; <u>the proposed solution 2</u>&nbsp; is correct:
[[File:P_ID2915__Sto_A_4_15a.png|right|]]
+
*On the basis of the covariance matrix&nbsp; $\mathbf{K}_{\mathbf{x}}$&nbsp; it is not possible to make any statement about whether the underlying random variable&nbsp; $\mathbf{x}$&nbsp; is zero mean or mean-invariant,&nbsp; since any mean value&nbsp; $\mathbf{m}$&nbsp; is factored out.  
 +
*To make statements about the mean,&nbsp; the correlation matrix&nbsp; $\mathbf{R}_{\mathbf{x}}$&nbsp; would have to be known.  
 +
*From&nbsp; $K_{22} = \sigma_2^2 = 0$&nbsp; it follows necessarily that all other elements in the second row&nbsp; $(K_{21}, K_{23})$&nbsp; and the second column&nbsp; $(K_{12}, K_{32})$&nbsp; are also zero.  
 +
*On the other hand,&nbsp; the third statement is false: &nbsp; The elements are symmetric about the main diagonal,&nbsp; so that always&nbsp; $K_{31} = K_{13}$&nbsp; must hold.  
 +
 
  
:<b>2.</b>&nbsp;&nbsp;Aus <i>K</i><sub>11</sub> = 1 und <i>K</i><sub>33</sub> = 0.25 folgen direkt <i>&sigma;</i><sub>1</sub> = 1 und <i>&sigma;</i><sub>3</sub> = 0.5. Zusammen mit dem Korrelationskoeffizienten <i>&rho;</i><sub>13</sub> = 0.8 (siehe Angabenblatt) erhält man somit:
 
:$$K_{13} =  K_{31} = \sigma_1 \cdot \sigma_2 \cdot \rho_{13}\hspace{0.15cm}\underline{= 0.4}.$$
 
  
:<b>3.</b>&nbsp;&nbsp;Die Determinante der Matrix <b>K<sub>y</sub></b> lautet:
+
[[File:P_ID2915__Sto_A_4_15a.png|right|frame|Complete covariance matrix]]
 +
'''(2)'''&nbsp; From&nbsp; $K_{11} = 1$&nbsp; and&nbsp; $K_{33} = 0.25$&nbsp; follow directly&nbsp; $\sigma_1 = 1$&nbsp; and&nbsp; $\sigma_3 = 0.5$.
 +
*Taken together with the correlation coefficient&nbsp; $\rho_{13} = 0.8$&nbsp; (see specification sheet),&nbsp; we thus obtain:
 +
:$$K_{13} = K_{31} = \sigma_1 \cdot \sigma_2 \cdot \rho_{13}\hspace{0.15cm}\underline{= 0.4}.$$
 +
 
 +
 
 +
 
 +
'''(3)'''&nbsp; The determinant of the matrix&nbsp; $\mathbf{K_y}$&nbsp; is:
 
:$$|{\mathbf{K_y}}| = 1 \cdot 0.25 - 0.4 \cdot 0.4 \hspace{0.15cm}\underline{= 0.09}.$$
 
:$$|{\mathbf{K_y}}| = 1 \cdot 0.25 - 0.4 \cdot 0.4 \hspace{0.15cm}\underline{= 0.09}.$$
  
:<b>4.</b>&nbsp;&nbsp;Entsprechend den Angaben auf der Seite &bdquo;Determinante und inverse Matrix&rdquo; gilt:
+
 
 +
'''(4)'''&nbsp; According to the statements on the pages "Determinant of a Matrix" and "Inverse of a Matrix" holds:
 
:$${\mathbf{I_y}} = {\mathbf{K_y}}^{-1} =
 
:$${\mathbf{I_y}} = {\mathbf{K_y}}^{-1} =
 
\frac{1}{|{\mathbf{K_y}}|}\cdot \left[
 
\frac{1}{|{\mathbf{K_y}}|}\cdot \left[
Line 95: Line 113:
 
\end{array} \right].$$
 
\end{array} \right].$$
  
:Mit <b>|K<sub>y</sub>|</b> = 0.09 gilt deshalb weiter:
+
*With&nbsp; $|\mathbf{K_y}|= 0.09$&nbsp; therefore holds further:
:$$I_{11} = \frac{25}{9}\hspace{0.15cm}\underline{ = 2.777};\hspace{0.3cm} I_{12} = I_{21}
+
:$$I_{11} = {25}/{9}\hspace{0.15cm}\underline{ = 2.777};\hspace{0.3cm} I_{12} = I_{21} = -40/9 \hspace{0.15cm}\underline{ = -4.447};\hspace{0.3cm}I_{22} = {100}/{9} \hspace{0.15cm}\underline{=
=-\frac{40}{9} \hspace{0.15cm}\underline{ = -4.447};\hspace{0.3cm}I_{22} = \frac{100}{9} \hspace{0.15cm}\underline{=
 
 
11.111}.$$
 
11.111}.$$
  
:<b>5.</b>&nbsp;&nbsp;Ein Vergleich der Matrizen <b>K<sub>y</sub></b> und <b>K<sub>x</sub></b> unter der Nebenbedingung <i>K</i><sub>22</sub> = 0 zeigt, dass <b>x</b> und <b>y</b> identische Zufallsgrößen sind, wenn man <i>y</i><sub>1</sub> = <i>x</i><sub>1</sub> und <i>y</i><sub>2 </sub> = <i>x</i><sub>3</sub> setzt. Somit gilt für die WDF-Parameter:
 
:$$\sigma_1 =1, \hspace{0.3cm} \sigma_2 =0.5, \hspace{0.3cm} \rho =
 
0.8.$$
 
  
:Der Vorfaktor entsprechend Kapitel 4.2 ist somit:
+
 
:$$C =\frac{\rm 1}{\rm 2\pi \sigma_1 \sigma_2 \sqrt{\rm 1-\rho^2}}=
+
'''(5)'''&nbsp; A comparison of&nbsp; $\mathbf{K_y}$&nbsp; and&nbsp; $\mathbf{K_x}$&nbsp; with constraint&nbsp; $K_{22} = 0$&nbsp; shows that&nbsp; $\mathbf{x}$&nbsp; and&nbsp; $\mathbf{y}$&nbsp; are identical random variables if one sets&nbsp; $y_1 = x_1$&nbsp; and&nbsp; $y_2 = x_3$&nbsp; .
 +
*Thus, for the PDF parameters:
 +
:$$\sigma_1 =1, \hspace{0.3cm} \sigma_2 =0.5, \hspace{0.3cm} \rho =0.8.$$
 +
 
 +
*The prefactor according to the general PDF definition is thus:
 +
:$$C =\frac{\rm 1}{\rm 2\pi \cdot \sigma_1 \cdot \sigma_2 \cdot \sqrt{\rm 1-\rho^2}}=
 
\frac{\rm 1}{\rm 2\pi \cdot 1 \cdot 0.5 \cdot 0.6}= \frac{1}{0.6
 
\frac{\rm 1}{\rm 2\pi \cdot 1 \cdot 0.5 \cdot 0.6}= \frac{1}{0.6
 
\cdot \pi} \hspace{0.15cm}\underline{\approx 0.531}.$$
 
\cdot \pi} \hspace{0.15cm}\underline{\approx 0.531}.$$
  
:Mit der in der Teilaufgabe 3) berechneten Determinante ergibt sich das gleiche Ergebnis:
+
*With the determinant calculated in subtask&nbsp; '''(3)'''&nbsp; we get the same result:
 
:$$C =\frac{\rm 1}{\rm 2\pi \sqrt{|{\mathbf{K_y}}|}}= \frac{\rm
 
:$$C =\frac{\rm 1}{\rm 2\pi \sqrt{|{\mathbf{K_y}}|}}= \frac{\rm
 
1}{\rm 2\pi \sqrt{0.09}} = \frac{1}{0.6 \cdot \pi}.$$
 
1}{\rm 2\pi \sqrt{0.09}} = \frac{1}{0.6 \cdot \pi}.$$
  
:<b>6.</b>&nbsp;&nbsp;Die unter Punkt 4) berechnete inverse Matrix kann auch wie folgt geschrieben werden:
+
 
 +
 
 +
'''(6)'''&nbsp; The inverse matrix computed in subtask&nbsp; '''(4)'''&nbsp; can also be written as follows:
 
:$${\mathbf{I_y}} = \frac{5}{9}\cdot \left[
 
:$${\mathbf{I_y}} = \frac{5}{9}\cdot \left[
 
\begin{array}{cc}
 
\begin{array}{cc}
Line 120: Line 141:
 
\end{array} \right].$$
 
\end{array} \right].$$
  
:Somit lautet das Argument <i>A</i> der Exponentialfunktion:
+
*So the argument&nbsp; $A$&nbsp; of the exponential function is:
 
:$$A = \frac{5}{18}\cdot{\mathbf{y}}^{\rm T}\cdot \left[
 
:$$A = \frac{5}{18}\cdot{\mathbf{y}}^{\rm T}\cdot \left[
 
\begin{array}{cc}
 
\begin{array}{cc}
Line 128: Line 149:
 
y_2\right).$$
 
y_2\right).$$
  
:Durch Koeffizientenvergleich ergibt sich:
+
*By comparing coefficients,&nbsp; we get:
 
:$$\gamma_1 = \frac{25}{18} \approx 1.389; \hspace{0.3cm} \gamma_2 =
 
:$$\gamma_1 = \frac{25}{18} \approx 1.389; \hspace{0.3cm} \gamma_2 =
 
\frac{100}{18} \approx 5.556; \hspace{0.3cm} \gamma_{12} = -
 
\frac{100}{18} \approx 5.556; \hspace{0.3cm} \gamma_{12} = -
\frac{80}{18} \approx -4.444.$$
+
\frac{80}{18} \approx -4,444.$$
  
:Entsprechend der herkömmlichen Vorgehensweise ergeben sich die gleichen Zahlenwerte:
+
*According to the conventional procedure,&nbsp; the same numerical values result:
 
:$$\gamma_1 =\frac{\rm 1}{\rm 2\cdot \sigma_1^2 \cdot ({\rm
 
:$$\gamma_1 =\frac{\rm 1}{\rm 2\cdot \sigma_1^2 \cdot ({\rm
 
1-\rho^2})}=
 
1-\rho^2})}=
Line 139: Line 160:
 
1 \cdot 0.36} \hspace{0.15cm}\underline{ \approx 1.389},$$
 
1 \cdot 0.36} \hspace{0.15cm}\underline{ \approx 1.389},$$
 
:$$\gamma_2 =\frac{\rm 1}{\rm 2 \cdot\sigma_2^2 \cdot ({\rm
 
:$$\gamma_2 =\frac{\rm 1}{\rm 2 \cdot\sigma_2^2 \cdot ({\rm
1-\rho^2})}= \frac{\rm 1}{\rm 2 \cdot 0.25 \cdot 0.36} =
+
1-\rho^2})}= \frac{\rm 1}{\rm 2 \cdot 0.25 \cdot 0.36} =
4 \cdot \gamma_1 \hspace{0.15cm}\underline{\approx 5.556},$$
+
4 \cdot \gamma_1 \hspace{0.15cm}\underline{\approx 5.556},$$
:$$\gamma_{12} =-\frac{\rho}{ \sigma_1 \cdot \sigma_2 \cdot ({\rm 1-\rho^2})}=
+
:$$\gamma_{12} =-\frac{\rho}{ \sigma_1 \cdot \sigma_2 \cdot ({\rm 1-\rho^2})}=
 
-\frac{\rm 0.8}{\rm 1 \cdot 0.5 \cdot 0.36} \hspace{0.15cm}\underline{ \approx -4.444}.$$
 
-\frac{\rm 0.8}{\rm 1 \cdot 0.5 \cdot 0.36} \hspace{0.15cm}\underline{ \approx -4.444}.$$
 
{{ML-Fuß}}
 
{{ML-Fuß}}
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[[Category:Aufgaben zu Stochastische Signaltheorie|^4.7 N-dimensionale Zufallsgrößen^]]
+
[[Category:Theory of Stochastic Signals: Exercises|^4.7 N-dimensionale Zufallsgrößen^]]

Latest revision as of 12:20, 28 March 2022

Two covariance matrices

We consider here the three-dimensional random variable   $\mathbf{x}$,  whose commonly represented covariance matrix   $\mathbf{K}_{\mathbf{x}}$   is given in the upper graph.  The random variable has the following properties:

  • The three components are Gaussian distributed and it holds for the elements of the covariance matrix:
$$K_{ij} = \sigma_i \cdot \sigma_j \cdot \rho_{ij}.$$
  • Let the elements on the main diagonal be known:
$$ K_{11} =1, \ K_{22} =0, \ K_{33} =0.25.$$
  • The correlation coefficient between the coefficients  $x_1$  and  $x_3$  is  $\rho_{13} = 0.8$.


In the second part of the exercise, consider the random variable  $\mathbf{y}$  with the two components  $y_1$  and  $y_2$  whose covariance matrix  $\mathbf{K}_{\mathbf{y}}$  is determined by the given numerical values  $(1, \ 0.4, \ 0.25)$  .

The probability density function  $\rm (PDF)$  of a zero mean Gaussian two-dimensional random variable  $\mathbf{y}$  is as specified on page  "Relationship between covariance matrix and PDF"  with  $N = 2$:

$$\mathbf{f_y}(\mathbf{y}) = \frac{1}{{2 \pi \cdot \sqrt{|\mathbf{K_y}|}}}\cdot {\rm e}^{-{1}/{2} \hspace{0.05cm}\cdot\hspace{0.05cm} \mathbf{y} ^{\rm T}\hspace{0.05cm}\cdot\hspace{0.05cm}\mathbf{K_y}^{-1} \hspace{0.05cm}\cdot\hspace{0.05cm} \mathbf{y} }= C \cdot {\rm e}^{-\gamma_1 \hspace{0.05cm}\cdot\hspace{0.05cm} y_1^2 \hspace{0.1cm}+\hspace{0.1cm} \gamma_2 \hspace{0.05cm}\cdot\hspace{0.05cm} y_2^2 \hspace{0.1cm}+\hspace{0.1cm}\gamma_{12} \hspace{0.05cm}\cdot\hspace{0.05cm} y_1 \hspace{0.05cm}\cdot\hspace{0.05cm} y_2 }.$$
  • In the subtasks  (5)  and  (6)  the prefactor  $C$  and the further PDF coefficients  $\gamma_1$,  $\gamma_2$  and  $\gamma_{12}$  are to be calculated according to this vector representation.
  • In contrast,  the corresponding equation in  conventional approach according to the chapter  "Two-dimensional Gaussian Random Variables"  would be:
$$f_{y_1,\hspace{0.1cm}y_2}(y_1,y_2)=\frac{\rm 1}{\rm 2\pi \sigma_1 \sigma_2 \sqrt{\rm 1-\rho^2}}\cdot\exp\Bigg[-\frac{\rm 1}{\rm 2 (1-\rho^{\rm 2})}\cdot(\frac { y_1^{\rm 2}}{\sigma_1^{\rm 2}}+\frac { y_2^{\rm 2}}{\sigma_2^{\rm 2}}-\rm 2\rho \frac{{\it y}_1{\it y}_2}{\sigma_1 \cdot \sigma_2}) \rm \Bigg].$$



Hints:



Questions

1

Which of the following statements are true?

The random variable  $\mathbf{x}$  is zero mean with certainty.
The matrix elements  $K_{12}$,  $K_{21}$,  $K_{23}$  and  $K_{32}$  are zero.
It holds that $K_{31} = -K_{13}$.

2

Calculate the matrix element of the last row and first column.

$K_\text{31} \ = \ $

3

Calculate the determinant  $|\mathbf{K}_{\mathbf{y}}|$.

$|\mathbf{K}_{\mathbf{y}}| \ = \ $

4

Calculate the inverse matrix  $\mathbf{I}_{\mathbf{y}} = \mathbf{K}_{\mathbf{y}}^{-1}$  with matrix elements. $I_{ij}$ :

$I_\text{11} \ = \ $

$I_\text{12} \ = \ $

$I_\text{21} \ = \ $

$I_\text{22} \ = \ $

5

Calculate the prefactor  $C$  of the two-dimensional probability density function.  Compare the result with the formula given in the theory section.

$C\ = \ $

6

Determine the coefficients in the argument of the exponential function.  Compare the result with the two-dimensional PDF equation.

$\gamma_1 \ = \ $

$\gamma_2 \ = \ $

$\gamma_{12}\ = \ $


Solution

(1)  Only  the proposed solution 2  is correct:

  • On the basis of the covariance matrix  $\mathbf{K}_{\mathbf{x}}$  it is not possible to make any statement about whether the underlying random variable  $\mathbf{x}$  is zero mean or mean-invariant,  since any mean value  $\mathbf{m}$  is factored out.
  • To make statements about the mean,  the correlation matrix  $\mathbf{R}_{\mathbf{x}}$  would have to be known.
  • From  $K_{22} = \sigma_2^2 = 0$  it follows necessarily that all other elements in the second row  $(K_{21}, K_{23})$  and the second column  $(K_{12}, K_{32})$  are also zero.
  • On the other hand,  the third statement is false:   The elements are symmetric about the main diagonal,  so that always  $K_{31} = K_{13}$  must hold.


Complete covariance matrix

(2)  From  $K_{11} = 1$  and  $K_{33} = 0.25$  follow directly  $\sigma_1 = 1$  and  $\sigma_3 = 0.5$.

  • Taken together with the correlation coefficient  $\rho_{13} = 0.8$  (see specification sheet),  we thus obtain:
$$K_{13} = K_{31} = \sigma_1 \cdot \sigma_2 \cdot \rho_{13}\hspace{0.15cm}\underline{= 0.4}.$$


(3)  The determinant of the matrix  $\mathbf{K_y}$  is:

$$|{\mathbf{K_y}}| = 1 \cdot 0.25 - 0.4 \cdot 0.4 \hspace{0.15cm}\underline{= 0.09}.$$


(4)  According to the statements on the pages "Determinant of a Matrix" and "Inverse of a Matrix" holds:

$${\mathbf{I_y}} = {\mathbf{K_y}}^{-1} = \frac{1}{|{\mathbf{K_y}}|}\cdot \left[ \begin{array}{cc} 0.25 & -0.4 \\ -0.4 & 1 \end{array} \right].$$
  • With  $|\mathbf{K_y}|= 0.09$  therefore holds further:
$$I_{11} = {25}/{9}\hspace{0.15cm}\underline{ = 2.777};\hspace{0.3cm} I_{12} = I_{21} = -40/9 \hspace{0.15cm}\underline{ = -4.447};\hspace{0.3cm}I_{22} = {100}/{9} \hspace{0.15cm}\underline{= 11.111}.$$


(5)  A comparison of  $\mathbf{K_y}$  and  $\mathbf{K_x}$  with constraint  $K_{22} = 0$  shows that  $\mathbf{x}$  and  $\mathbf{y}$  are identical random variables if one sets  $y_1 = x_1$  and  $y_2 = x_3$  .

  • Thus, for the PDF parameters:
$$\sigma_1 =1, \hspace{0.3cm} \sigma_2 =0.5, \hspace{0.3cm} \rho =0.8.$$
  • The prefactor according to the general PDF definition is thus:
$$C =\frac{\rm 1}{\rm 2\pi \cdot \sigma_1 \cdot \sigma_2 \cdot \sqrt{\rm 1-\rho^2}}= \frac{\rm 1}{\rm 2\pi \cdot 1 \cdot 0.5 \cdot 0.6}= \frac{1}{0.6 \cdot \pi} \hspace{0.15cm}\underline{\approx 0.531}.$$
  • With the determinant calculated in subtask  (3)  we get the same result:
$$C =\frac{\rm 1}{\rm 2\pi \sqrt{|{\mathbf{K_y}}|}}= \frac{\rm 1}{\rm 2\pi \sqrt{0.09}} = \frac{1}{0.6 \cdot \pi}.$$


(6)  The inverse matrix computed in subtask  (4)  can also be written as follows:

$${\mathbf{I_y}} = \frac{5}{9}\cdot \left[ \begin{array}{cc} 5 & -8 \\ -8 & 20 \end{array} \right].$$
  • So the argument  $A$  of the exponential function is:
$$A = \frac{5}{18}\cdot{\mathbf{y}}^{\rm T}\cdot \left[ \begin{array}{cc} 5 & -8 \\ -8 & 20 \end{array} \right]\cdot{\mathbf{y}} =\frac{5}{18}\left( 5 \cdot y_1^2 + 20 \cdot y_2^2 -16 \cdot y_1 \cdot y_2\right).$$
  • By comparing coefficients,  we get:
$$\gamma_1 = \frac{25}{18} \approx 1.389; \hspace{0.3cm} \gamma_2 = \frac{100}{18} \approx 5.556; \hspace{0.3cm} \gamma_{12} = - \frac{80}{18} \approx -4,444.$$
  • According to the conventional procedure,  the same numerical values result:
$$\gamma_1 =\frac{\rm 1}{\rm 2\cdot \sigma_1^2 \cdot ({\rm 1-\rho^2})}= \frac{\rm 1}{\rm 2 \cdot 1 \cdot 0.36} \hspace{0.15cm}\underline{ \approx 1.389},$$
$$\gamma_2 =\frac{\rm 1}{\rm 2 \cdot\sigma_2^2 \cdot ({\rm 1-\rho^2})}= \frac{\rm 1}{\rm 2 \cdot 0.25 \cdot 0.36} = 4 \cdot \gamma_1 \hspace{0.15cm}\underline{\approx 5.556},$$
$$\gamma_{12} =-\frac{\rho}{ \sigma_1 \cdot \sigma_2 \cdot ({\rm 1-\rho^2})}= -\frac{\rm 0.8}{\rm 1 \cdot 0.5 \cdot 0.36} \hspace{0.15cm}\underline{ \approx -4.444}.$$