Difference between revisions of "Aufgaben:Exercise 3.5Z: Kullback-Leibler Distance again"

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{{quiz-Header|Buchseite=Informationstheorie/3.1 Einige Vorbemerkungen zu zweidimensionalen Zufallsgrößen}}
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{{quiz-Header|Buchseite=Information_Theory/Some_Preliminary_Remarks_on_Two-Dimensional_Random_Variables
 +
}}
  
[[File:|right|]]
+
[[File:P_ID2762__Inf_Z_3_4.png|right|frame|Determined probability mass functions]]
 +
The probability mass function is:
 +
:$$P_X(X) = \big[\hspace{0.03cm}0.25\hspace{0.03cm}, \hspace{0.15cm} 0.25\hspace{0.15cm},\hspace{0.15cm} 0.25 \hspace{0.03cm}, \hspace{0.15cm} 0.25\hspace{0.03cm}\big]\hspace{0.05cm}.$$
 +
The random variable&nbsp; $X$&nbsp; is thus characterised by
 +
* the symbol set size&nbsp; $M=4$,
 +
* equal probabilities&nbsp; $P_X(1) = P_X(2) = P_X(3) = P_X(4) = 1/4$ .
  
  
===Fragebogen===
+
The random variable&nbsp; $Y$&nbsp; is always an approximation for&nbsp; $X$:
 +
*It was obtained by simulation from a uniform distribution, whereby only&nbsp; $N$&nbsp; random numbers were evaluated in each case.&nbsp; This means: &nbsp;
 +
*$P_Y(1)$, ... , $P_Y(4)$&nbsp; are not probabilities in the conventional sense.&nbsp; Rather, they describe&nbsp; [[Theory_of_Stochastic_Signals/Wahrscheinlichkeit_und_relative_H%C3%A4ufigkeit#Bernoullisches_Gesetz_der_gro.C3.9Fen_Zahlen| relative frequencies]].
 +
 
 +
 
 +
The result of the sixth test series&nbsp; (with&nbsp;  $N=1000)$&nbsp; is thus summarised by the following probability function:
 +
 
 +
:$$P_Y(X) = \big [\hspace{0.05cm}0.225\hspace{0.15cm}, \hspace{0.05cm} 0.253\hspace{0.05cm},\hspace{0.15cm} 0.250 \hspace{0.05cm}, \hspace{0.15cm} 0.272\hspace{0.05cm}\big]
 +
\hspace{0.05cm}.$$
 +
This notation already takes into account that the random variables&nbsp; $X$&nbsp; and&nbsp; $Y$&nbsp; are based on the same alphabet&nbsp; $X = \{1,\ 2,\ 3,\ 4\}$.
 +
 
 +
With these preconditions, the&nbsp; '''informational divergence'''&nbsp; between the two probability functions&nbsp;  $P_X(.)$&nbsp; and&nbsp; $P_Y(.)$ :
 +
 
 +
:$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) =  {\rm E}_X \hspace{-0.1cm}\left [ {\rm log}_2 \hspace{0.1cm} \frac{P_X(X)}{P_Y(X)}\right ] \hspace{0.2cm}=\hspace{0.2cm} \sum_{\mu = 1}^{M}  P_X(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_X(\mu)}{P_Y(\mu)} \hspace{0.05cm}.$$
 +
 
 +
One calls&nbsp;  $D( P_X\hspace{0.05cm} || \hspace{0.05cm}P_Y)$&nbsp;  the (first)&nbsp; '''Kullback-Leibler distance'''.
 +
*This is a measure of the similarity between the two probability mass functions&nbsp; $P_X(.)$&nbsp; and&nbsp; $P_Y(.)$. 
 +
*The expected value formation occurs here with regard to the&nbsp; (actually equally distributed)&nbsp; random variable&nbsp; $X$.&nbsp; This is indicated by the nomenclature&nbsp;  ${\rm E}_X\big[.\big]$.
 +
 
 +
 
 +
A second form of Kullback-Leibler distance results from the formation of expected values with respect to the random variable&nbsp; $Y$ &nbsp; &rArr; &nbsp;  ${\rm E}_Y\big [.\big ]$:
 +
 
 +
:$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) =  {\rm E}_Y \hspace{-0.1cm} \left [ {\rm log}_2 \hspace{0.1cm} \frac{P_Y(X)}{P_X(X)}\right ] \hspace{0.2cm}=\hspace{0.2cm} \sum_{\mu = 1}^M  P_Y(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_Y(\mu)}{P_X(\mu)} \hspace{0.05cm}.$$
 +
 
 +
 
 +
 
 +
 
 +
 
 +
Hints:
 +
*The exercise belongs to the chapter&nbsp; [[Information_Theory/Some_Preliminary_Remarks_on_Two-Dimensional_Random_Variables|Some preliminary remarks on two-dimensional random variables]].
 +
*In particular, reference is made to the page&nbsp; [[Information_Theory/Some_Preliminary_Remarks_on_Two-Dimensional_Random_Variables#Informational_divergence_-_Kullback-Leibler_distance|Relative entropy &ndash; Kullback-Leibler distance]].
 +
*The entropy&nbsp;  $H(Y)$&nbsp; and the Kullback-Leibler distance&nbsp;  $D( P_X \hspace{0.05cm}|| \hspace{0.05cm}P_Y)$&nbsp;  in the above graph are to be understood in&nbsp; "bit".
 +
* The fields marked with&nbsp; "???"&nbsp; in the graph are to be completed by you in this task.
 +
 +
 
 +
 
 +
===Questions===
  
 
<quiz display=simple>
 
<quiz display=simple>
{Multiple-Choice Frage
 
|type="[]"}
 
- Falsch
 
+ Richtig
 
  
 +
{What is the entropy of the random variable&nbsp; $X$ ?
 +
|type="{}"}
 +
$H(X)\ = \ $ { 2 1% } $\ \rm bit$
 +
 +
{What are the entropies of the random variables&nbsp; $Y$&nbsp; $($approximations for&nbsp; $X)$?
 +
|type="{}"}
 +
$N=10^3\text{:} \hspace{0.5cm} H(Y) \ = \ $ { 1.9968 1% } $\ \rm bit$
 +
$N=10^2\text{:} \hspace{0.5cm} H(Y) \ = \ $ { 1.941 1% } $\ \rm bit$
 +
$N=10^1\text{:} \hspace{0.5cm} H(Y) \ = \ $ { 1.6855 1%  } $\ \rm bit$
  
{Input-Box Frage
+
{Calculate the following Kullback-Leibler distances.
 
|type="{}"}
 
|type="{}"}
$\alpha$ = { 0.3 }
+
$N=10^3\text{:} \hspace{0.5cm} D( P_X \hspace{0.05cm}|| \hspace{0.05cm}  P_Y) \ = \ $ { 0.00328 1% } $\ \rm bit$
 +
$N=10^2\text{:} \hspace{0.5cm} D( P_X \hspace{0.05cm}|| \hspace{0.05cm}  P_Y) \ = \ $  { 0.0442 1% } $\ \rm bit$
 +
$N=10^1\text{:} \hspace{0.5cm} D( P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y)  \ = \ $  { 0.345 1% } $\ \rm bit$
 +
 
 +
{Does&nbsp; $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$&nbsp; give exactly the same result in each case?
 +
|type="()"}
 +
- Yes.
 +
+ No.
 +
 
 +
{Which statements are true for the Kullback-Leibler distances with&nbsp; $N = 4$?
 +
|type="[]"}
 +
- &nbsp; $D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0$&nbsp; is true.
 +
- &nbsp; $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0.5 \ \rm  bit$&nbsp; is true.
 +
+ &nbsp; $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$&nbsp; is infinitely large.
 +
- &nbsp; $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0$&nbsp; holds.
 +
+ &nbsp; $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0.5 \ \rm bit$&nbsp; holds.
 +
- &nbsp; $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$&nbsp; is infinitely large.
  
 +
{Do both&nbsp; $H(Y)$&nbsp; and&nbsp;  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$&nbsp; change monotonically with&nbsp; $N$?
 +
|type="()"}
 +
- Yes,
 +
+ No.
  
  
 
</quiz>
 
</quiz>
  
===Musterlösung===
+
===Solution===
 
{{ML-Kopf}}
 
{{ML-Kopf}}
'''1.'''
+
 
'''2.'''
+
'''(1)'''&nbsp; With equal probabilities, and with&nbsp; $M = 4$:
'''3.'''
+
:$$H(X) = {\rm log}_2 \hspace{0.1cm} M
'''4.'''
+
\hspace{0.15cm} \underline {= 2\,{\rm (bit)}}  \hspace{0.05cm}.$$
'''5.'''
+
 
'''6.'''
+
 
'''7.'''
+
 
 +
'''(2)'''&nbsp; The probabilities for the empirically determined random variables&nbsp; $Y$&nbsp; generally&nbsp; (not always!)&nbsp; deviate from the uniform distribution the more the parameter&nbsp; $N$&nbsp; is smaller.&nbsp; One obtains for
 +
* $N = 1000 \ \ \Rightarrow \ \ P_Y(Y) =  \big [0.225, \ 0.253, \ 0.250, \ 0.272 \big ]$:
 +
:$$H(Y) =
 +
0.225 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.225} +
 +
0.253 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.253} +
 +
0.250 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.250} +
 +
0.272 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.272}
 +
\hspace{0.15cm} \underline {= 1.9968\ {\rm (bit)}}  \hspace{0.05cm},$$
 +
* $N = 100 \ \ \Rightarrow \ \  P_Y(Y) = \big[0.24, \ 0.16, \ 0.30,  \ 0.30\big]$:
 +
:$$H(Y) = \hspace{0.05cm}\text{...} \hspace{0.15cm} \underline {= 1.9410\ {\rm (bit)}}  \hspace{0.05cm},$$
 +
* $N = 10 \ \ \Rightarrow \ \  P_Y(Y) =  \big[0.5, \ 0.1, \ 0.3, \ 0.1 \big]$:
 +
:$$H(Y) = \hspace{0.05cm}\text{...} \hspace{0.15cm} \underline {= 1.6855\ {\rm (bit)}}  \hspace{0.05cm}.$$
 +
 
 +
 
 +
 
 +
'''(3)'''&nbsp; The equation for the Kullback-Leibler distance we are looking for is:
 +
 
 +
:$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \sum_{\mu = 1}^{4}  P_X(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_X(\mu)}{P_Y(\mu)}
 +
=  \frac{1/4}{{\rm lg} \hspace{0.1cm}(2)} \cdot
 +
\left [ {\rm lg} \hspace{0.1cm} \frac{0.25}{P_Y(1)} + \frac{0.25}{P_Y(2)} + \frac{0.25}{P_Y(3)} + \frac{0.25}{P_Y(4)}
 +
\right ] $$
 +
:$$\Rightarrow \hspace{0.3cm} D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y)  =  \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot
 +
\left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{P_Y(1) \cdot P_Y(2)\cdot P_Y(3)\cdot P_Y(4)}
 +
\right ] \hspace{0.05cm}.$$
 +
 
 +
The logarithm to the base&nbsp; $ 2$&nbsp; &rArr;  &nbsp; $\log_2(.)$&nbsp; was replaced by the logarithm to the base&nbsp; $ 10$ &nbsp; &rArr;  &nbsp; $\lg(.)$ for easy use of the calculator.
 +
 
 +
The following numerical results are obtained:
 +
* for $N=1000$:
 +
:$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot
 +
\left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{0.225 \cdot 0.253\cdot 0.250\cdot 0.272}
 +
\right ] \hspace{0.15cm} \underline {= 0.00328 \,{\rm (bit)}}  \hspace{0.05cm},$$
 +
* for $N=100$:
 +
:$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot
 +
\left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{0.24 \cdot 0.16\cdot 0.30\cdot 0.30}
 +
\right ] \hspace{0.15cm} \underline {= 0.0442 \,{\rm (bit)}}  \hspace{0.05cm},$$
 +
* for $N=10$:
 +
:$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot
 +
\left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{0.5 \cdot 0.1\cdot 0.3\cdot 0.1}
 +
\right ] \hspace{0.15cm} \underline {= 0.345 \,{\rm (bit)}}  \hspace{0.05cm}.$$
 +
 
 +
 
 +
 
 +
'''(4)'''&nbsp; Correct is&nbsp; <u>'''No'''</u>,&nbsp; as will be shown by the example&nbsp; $N = 100$&nbsp;:
 +
:$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) =  \sum_{\mu = 1}^M  P_Y(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_Y(\mu)}{P_X(\mu)} = 0.24\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.24}{0.25} + 0.16\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.16}{0.25} +2 \cdot 0.30\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.30}{0.25}  = 0.0407\ {\rm (bit)}\hspace{0.05cm}.$$
 +
 
 +
*In subtask&nbsp; '''(3)'''&nbsp; we got&nbsp; $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0.0442$&nbsp; instead.
 +
*This also means: &nbsp; The designation „distance” is somewhat misleading.
 +
*According to this, one would actually expect&nbsp; $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X) = D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$&nbsp;.
 +
 
 +
 
 +
 
 +
[[File:P_ID2763__Inf_Z_3_4e.png|right|frame|Probability function, entropy and Kullback-Leibler distance]]
 +
'''(5)'''&nbsp; With&nbsp; $P_Y(X) = \big [0, \ 0.25, \ 0.5, \ 0.25 \big ]$&nbsp; one obtains:
 +
:$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0} + 2 \cdot 0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0.25}+0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0.50}\hspace{0.05cm}.$$
 +
 
 +
*Because of the first term, the value of&nbsp; $D(P_X\hspace{0.05cm}|| \hspace{0.05cm}P_Y)$&nbsp; is infinitely large.
 +
*For the second Kullback-Leibler distance holds:
 +
:$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0\cdot {\rm log}_2 \hspace{0.1cm} \frac{0}{0.25} + 2 \cdot 0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0.25}+
 +
0.50\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.5}{0.25}
 +
\hspace{0.05cm}.$$
 +
 
 +
*After looking at the limits, one can see that the first term yields the result&nbsp; $0$&nbsp;.&nbsp; The second term also yields zero, and one obtains as the final result:
 +
:$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0.50\cdot {\rm log}_2 \hspace{0.1cm} (2) \hspace{0.15cm} \underline {= 0.5\,{\rm (bit)}} \hspace{0.05cm}.$$
 +
 
 +
&nbsp; <u>Statements 3 and 5</u> are therefore correct:
 +
*From this extreme example it is clear that&nbsp; $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$&nbsp; is always different from&nbsp; $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$&nbsp;.
 +
*Only for the special case&nbsp; $P_Y \equiv P_X$&nbsp; are both Kullback-Leibler distances equal, namely zero.
 +
*The adjacent table shows the complete result of this task.
 +
 
 +
 
 +
 
 +
 
 +
'''(6)'''&nbsp; Correct is again&nbsp; <u>'''No'''</u>. &nbsp; Although the tendency is clear: &nbsp; The larger&nbsp; $N$&nbsp; is,
 +
* the more&nbsp; $H(Y)$&nbsp; approaches in principle the final value&nbsp; $H(X) = 2 \ \rm bit$,
 +
* the smaller the distances&nbsp; $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$&nbsp; and&nbsp; $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$ become.
 +
 
 +
 
 +
However, one can also see from the table that there are exceptions:
 +
* The entropy&nbsp; $H(Y)$&nbsp; is smaller for&nbsp; $N = 1000$&nbsp; than for&nbsp; $N = 400$.
 +
* The distance&nbsp; $D(P_X\hspace{0.05cm}|| \hspace{0.05cm}P_Y)$&nbsp; is greater for&nbsp; $N = 1000$&nbsp; than for&nbsp; $N = 400$.
 +
* The reason for this is that the experiment documented here with&nbsp; $N = 400$&nbsp; was more likely to lead to a uniform distribution than the experiment with&nbsp; $N = 1000$.
 +
*If, on the other hand, one were to start a very (infinitely) large number of experiments with&nbsp; $N = 400$&nbsp; and&nbsp; $N = 1000$&nbsp; and average over all of them, the actually expected monotonic course would actually result.
 +
 
 
{{ML-Fuß}}
 
{{ML-Fuß}}
  
  
  
[[Category:Aufgaben zu Informationstheorie|^3.1 Einige Vorbemerkungen zu zweidimensionalen Zufallsgrößen^]
+
[[Category:Information Theory: Exercises|^3.1 General Information on 2D Random Variables^]]

Latest revision as of 10:14, 24 September 2021

Determined probability mass functions

The probability mass function is:

$$P_X(X) = \big[\hspace{0.03cm}0.25\hspace{0.03cm}, \hspace{0.15cm} 0.25\hspace{0.15cm},\hspace{0.15cm} 0.25 \hspace{0.03cm}, \hspace{0.15cm} 0.25\hspace{0.03cm}\big]\hspace{0.05cm}.$$

The random variable  $X$  is thus characterised by

  • the symbol set size  $M=4$,
  • equal probabilities  $P_X(1) = P_X(2) = P_X(3) = P_X(4) = 1/4$ .


The random variable  $Y$  is always an approximation for  $X$:

  • It was obtained by simulation from a uniform distribution, whereby only  $N$  random numbers were evaluated in each case.  This means:  
  • $P_Y(1)$, ... , $P_Y(4)$  are not probabilities in the conventional sense.  Rather, they describe  relative frequencies.


The result of the sixth test series  (with  $N=1000)$  is thus summarised by the following probability function:

$$P_Y(X) = \big [\hspace{0.05cm}0.225\hspace{0.15cm}, \hspace{0.05cm} 0.253\hspace{0.05cm},\hspace{0.15cm} 0.250 \hspace{0.05cm}, \hspace{0.15cm} 0.272\hspace{0.05cm}\big] \hspace{0.05cm}.$$

This notation already takes into account that the random variables  $X$  and  $Y$  are based on the same alphabet  $X = \{1,\ 2,\ 3,\ 4\}$.

With these preconditions, the  informational divergence  between the two probability functions  $P_X(.)$  and  $P_Y(.)$ :

$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = {\rm E}_X \hspace{-0.1cm}\left [ {\rm log}_2 \hspace{0.1cm} \frac{P_X(X)}{P_Y(X)}\right ] \hspace{0.2cm}=\hspace{0.2cm} \sum_{\mu = 1}^{M} P_X(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_X(\mu)}{P_Y(\mu)} \hspace{0.05cm}.$$

One calls  $D( P_X\hspace{0.05cm} || \hspace{0.05cm}P_Y)$  the (first)  Kullback-Leibler distance.

  • This is a measure of the similarity between the two probability mass functions  $P_X(.)$  and  $P_Y(.)$.
  • The expected value formation occurs here with regard to the  (actually equally distributed)  random variable  $X$.  This is indicated by the nomenclature  ${\rm E}_X\big[.\big]$.


A second form of Kullback-Leibler distance results from the formation of expected values with respect to the random variable  $Y$   ⇒   ${\rm E}_Y\big [.\big ]$:

$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) = {\rm E}_Y \hspace{-0.1cm} \left [ {\rm log}_2 \hspace{0.1cm} \frac{P_Y(X)}{P_X(X)}\right ] \hspace{0.2cm}=\hspace{0.2cm} \sum_{\mu = 1}^M P_Y(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_Y(\mu)}{P_X(\mu)} \hspace{0.05cm}.$$



Hints:


Questions

1

What is the entropy of the random variable  $X$ ?

$H(X)\ = \ $

$\ \rm bit$

2

What are the entropies of the random variables  $Y$  $($approximations for  $X)$?

$N=10^3\text{:} \hspace{0.5cm} H(Y) \ = \ $

$\ \rm bit$
$N=10^2\text{:} \hspace{0.5cm} H(Y) \ = \ $

$\ \rm bit$
$N=10^1\text{:} \hspace{0.5cm} H(Y) \ = \ $

$\ \rm bit$

3

Calculate the following Kullback-Leibler distances.

$N=10^3\text{:} \hspace{0.5cm} D( P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) \ = \ $

$\ \rm bit$
$N=10^2\text{:} \hspace{0.5cm} D( P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) \ = \ $

$\ \rm bit$
$N=10^1\text{:} \hspace{0.5cm} D( P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) \ = \ $

$\ \rm bit$

4

Does  $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$  give exactly the same result in each case?

Yes.
No.

5

Which statements are true for the Kullback-Leibler distances with  $N = 4$?

  $D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0$  is true.
  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0.5 \ \rm bit$  is true.
  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$  is infinitely large.
  $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0$  holds.
  $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0.5 \ \rm bit$  holds.
  $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$  is infinitely large.

6

Do both  $H(Y)$  and  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$  change monotonically with  $N$?

Yes,
No.


Solution

(1)  With equal probabilities, and with  $M = 4$:

$$H(X) = {\rm log}_2 \hspace{0.1cm} M \hspace{0.15cm} \underline {= 2\,{\rm (bit)}} \hspace{0.05cm}.$$


(2)  The probabilities for the empirically determined random variables  $Y$  generally  (not always!)  deviate from the uniform distribution the more the parameter  $N$  is smaller.  One obtains for

  • $N = 1000 \ \ \Rightarrow \ \ P_Y(Y) = \big [0.225, \ 0.253, \ 0.250, \ 0.272 \big ]$:
$$H(Y) = 0.225 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.225} + 0.253 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.253} + 0.250 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.250} + 0.272 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.272} \hspace{0.15cm} \underline {= 1.9968\ {\rm (bit)}} \hspace{0.05cm},$$
  • $N = 100 \ \ \Rightarrow \ \ P_Y(Y) = \big[0.24, \ 0.16, \ 0.30, \ 0.30\big]$:
$$H(Y) = \hspace{0.05cm}\text{...} \hspace{0.15cm} \underline {= 1.9410\ {\rm (bit)}} \hspace{0.05cm},$$
  • $N = 10 \ \ \Rightarrow \ \ P_Y(Y) = \big[0.5, \ 0.1, \ 0.3, \ 0.1 \big]$:
$$H(Y) = \hspace{0.05cm}\text{...} \hspace{0.15cm} \underline {= 1.6855\ {\rm (bit)}} \hspace{0.05cm}.$$


(3)  The equation for the Kullback-Leibler distance we are looking for is:

$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \sum_{\mu = 1}^{4} P_X(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_X(\mu)}{P_Y(\mu)} = \frac{1/4}{{\rm lg} \hspace{0.1cm}(2)} \cdot \left [ {\rm lg} \hspace{0.1cm} \frac{0.25}{P_Y(1)} + \frac{0.25}{P_Y(2)} + \frac{0.25}{P_Y(3)} + \frac{0.25}{P_Y(4)} \right ] $$
$$\Rightarrow \hspace{0.3cm} D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot \left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{P_Y(1) \cdot P_Y(2)\cdot P_Y(3)\cdot P_Y(4)} \right ] \hspace{0.05cm}.$$

The logarithm to the base  $ 2$  ⇒   $\log_2(.)$  was replaced by the logarithm to the base  $ 10$   ⇒   $\lg(.)$ for easy use of the calculator.

The following numerical results are obtained:

  • for $N=1000$:
$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot \left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{0.225 \cdot 0.253\cdot 0.250\cdot 0.272} \right ] \hspace{0.15cm} \underline {= 0.00328 \,{\rm (bit)}} \hspace{0.05cm},$$
  • for $N=100$:
$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot \left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{0.24 \cdot 0.16\cdot 0.30\cdot 0.30} \right ] \hspace{0.15cm} \underline {= 0.0442 \,{\rm (bit)}} \hspace{0.05cm},$$
  • for $N=10$:
$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = \frac{1}{4 \cdot {\rm lg} \hspace{0.1cm}(2)} \cdot \left [ {\rm lg} \hspace{0.1cm} \frac{0.25^4}{0.5 \cdot 0.1\cdot 0.3\cdot 0.1} \right ] \hspace{0.15cm} \underline {= 0.345 \,{\rm (bit)}} \hspace{0.05cm}.$$


(4)  Correct is  No,  as will be shown by the example  $N = 100$ :

$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) = \sum_{\mu = 1}^M P_Y(\mu) \cdot {\rm log}_2 \hspace{0.1cm} \frac{P_Y(\mu)}{P_X(\mu)} = 0.24\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.24}{0.25} + 0.16\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.16}{0.25} +2 \cdot 0.30\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.30}{0.25} = 0.0407\ {\rm (bit)}\hspace{0.05cm}.$$
  • In subtask  (3)  we got  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0.0442$  instead.
  • This also means:   The designation „distance” is somewhat misleading.
  • According to this, one would actually expect  $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X) = D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$ .


Probability function, entropy and Kullback-Leibler distance

(5)  With  $P_Y(X) = \big [0, \ 0.25, \ 0.5, \ 0.25 \big ]$  one obtains:

$$D(P_X \hspace{0.05cm}|| \hspace{0.05cm} P_Y) = 0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0} + 2 \cdot 0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0.25}+0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0.50}\hspace{0.05cm}.$$
  • Because of the first term, the value of  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm}P_Y)$  is infinitely large.
  • For the second Kullback-Leibler distance holds:
$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0\cdot {\rm log}_2 \hspace{0.1cm} \frac{0}{0.25} + 2 \cdot 0.25\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.25}{0.25}+ 0.50\cdot {\rm log}_2 \hspace{0.1cm} \frac{0.5}{0.25} \hspace{0.05cm}.$$
  • After looking at the limits, one can see that the first term yields the result  $0$ .  The second term also yields zero, and one obtains as the final result:
$$D(P_Y \hspace{0.05cm}|| \hspace{0.05cm} P_X) = 0.50\cdot {\rm log}_2 \hspace{0.1cm} (2) \hspace{0.15cm} \underline {= 0.5\,{\rm (bit)}} \hspace{0.05cm}.$$

  Statements 3 and 5 are therefore correct:

  • From this extreme example it is clear that  $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$  is always different from  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$ .
  • Only for the special case  $P_Y \equiv P_X$  are both Kullback-Leibler distances equal, namely zero.
  • The adjacent table shows the complete result of this task.



(6)  Correct is again  No.   Although the tendency is clear:   The larger  $N$  is,

  • the more  $H(Y)$  approaches in principle the final value  $H(X) = 2 \ \rm bit$,
  • the smaller the distances  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm} P_Y)$  and  $D(P_Y\hspace{0.05cm}|| \hspace{0.05cm} P_X)$ become.


However, one can also see from the table that there are exceptions:

  • The entropy  $H(Y)$  is smaller for  $N = 1000$  than for  $N = 400$.
  • The distance  $D(P_X\hspace{0.05cm}|| \hspace{0.05cm}P_Y)$  is greater for  $N = 1000$  than for  $N = 400$.
  • The reason for this is that the experiment documented here with  $N = 400$  was more likely to lead to a uniform distribution than the experiment with  $N = 1000$.
  • If, on the other hand, one were to start a very (infinitely) large number of experiments with  $N = 400$  and  $N = 1000$  and average over all of them, the actually expected monotonic course would actually result.