Difference between revisions of "Aufgaben:Exercise 3.7: Some Entropy Calculations"
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− | {{quiz-Header|Buchseite= | + | {{quiz-Header|Buchseite=Information_Theory/Different_Entropy_Measures_of_Two-Dimensional_Random_Variables |
}} | }} | ||
− | [[File:P_ID2766__Inf_A_3_6.png|right| | + | [[File:P_ID2766__Inf_A_3_6.png|right|frame|Diagram: Entropies and information]] |
− | + | We consider the two random variables $XY$ and $UV$ with the following two-dimensional probability mass functions: | |
:$$P_{XY}(X, Y) = \begin{pmatrix} 0.18 & 0.16\\ 0.02 & 0.64 \end{pmatrix}\hspace{0.05cm} \hspace{0.05cm}$$ | :$$P_{XY}(X, Y) = \begin{pmatrix} 0.18 & 0.16\\ 0.02 & 0.64 \end{pmatrix}\hspace{0.05cm} \hspace{0.05cm}$$ | ||
:$$P_{UV}(U, V) \hspace{0.05cm}= \begin{pmatrix} 0.068 & 0.132\\ 0.272 & 0.528 \end{pmatrix}\hspace{0.05cm}$$ | :$$P_{UV}(U, V) \hspace{0.05cm}= \begin{pmatrix} 0.068 & 0.132\\ 0.272 & 0.528 \end{pmatrix}\hspace{0.05cm}$$ | ||
− | + | For the random variable $XY$ the following are to be calculated in this exercise: | |
− | * | + | * the joint entropy: |
− | :$$H(XY) = -{\rm E}[\log_2 P_{ XY }( X,Y)],$$ | + | :$$H(XY) = -{\rm E}\big [\log_2 P_{ XY }( X,Y) \big ],$$ |
− | * | + | * the two individual entropies: |
− | :$$H(X) = -{\rm E}[\log_2 P_X( X)],$$ | + | :$$H(X) = -{\rm E}\big [\log_2 P_X( X)\big ],$$ |
− | :$$H(Y) = -{\rm E}[\log_2 P_Y( Y)].$$ | + | :$$H(Y) = -{\rm E}\big [\log_2 P_Y( Y)\big ].$$ |
− | + | From this, the following descriptive variables can also be determined very easily according to the above scheme – shown for the random variable $XY$: | |
− | * | + | * the conditional entropies: |
− | :$$H(X \hspace{0.05cm}|\hspace{0.05cm} Y) = -{\rm E}[\log_2 P_{ X \hspace{0.05cm}|\hspace{0.05cm} }( X \hspace{0.05cm}|\hspace{0.05cm} Y)],$$ | + | :$$H(X \hspace{0.05cm}|\hspace{0.05cm} Y) = -{\rm E}\big [\log_2 P_{ X \hspace{0.05cm}|\hspace{0.05cm}Y }( X \hspace{0.05cm}|\hspace{0.05cm} Y)\big ],$$ |
− | :$$H(Y \hspace{0.05cm}|\hspace{0.05cm} | + | :$$H(Y \hspace{0.05cm}|\hspace{0.05cm} X) = -{\rm E}\big [\log_2 P_{ Y \hspace{0.05cm}|\hspace{0.05cm} X }( Y \hspace{0.05cm}|\hspace{0.05cm} X)\big ],$$ |
− | * | + | * the mutual information between $X$ and $Y$: |
− | :$$I(X;Y) = {\rm E}[\ | + | :$$I(X;Y) = {\rm E} \hspace{-0.08cm}\left [ \hspace{0.02cm}{\rm log}_2 \hspace{0.1cm} \frac{P_{XY}(X, Y)} |
+ | {P_{X}(X) \cdot P_{Y}(Y) }\right ] \hspace{0.05cm}.$$ | ||
− | + | Finally, verify qualitative statements regarding the second random variable $UV$ . | |
− | |||
− | |||
− | |||
− | |||
− | === | + | |
+ | |||
+ | |||
+ | |||
+ | Hints: | ||
+ | *The exercise belongs to the chapter [[Information_Theory/Different_Entropy_Measures_of_Two-Dimensional_Random_Variables|Different entropy measures of two-dimensional random variables]]. | ||
+ | *In particular, reference is made to the pages <br> [[Information_Theory/Different_Entropy_Measures_of_Two-Dimensional_Random_Variables#Conditional_probability_and_conditional_entropy|Conditional probability and conditional entropy]] as well as <br> [[Information_Theory/Different_Entropy_Measures_of_Two-Dimensional_Random_Variables#Mutual_information_between_two_random_variables|Mutual information between two random variables]]. | ||
+ | |||
+ | |||
+ | |||
+ | ===Questions=== | ||
<quiz display=simple> | <quiz display=simple> | ||
− | { | + | {Calculate the joint entropy. |
|type="{}"} | |type="{}"} | ||
− | $H(XY)$ | + | $H(XY) \ = \ $ { 1.393 3% } $\ \rm bit$ |
− | { | + | {What are the entropies of the one-dimensional random variables $X$ and $Y$ ? |
|type="{}"} | |type="{}"} | ||
− | $H(X)$ | + | $H(X) \ = \ $ { 0.722 3% } $\ \rm bit$ |
− | $H(Y)$ | + | $H(Y) \ = \ $ { 0.925 3% } $\ \rm bit$ |
− | { | + | {How large is the mutual information between the random variables $X$ and $Y$? |
|type="{}"} | |type="{}"} | ||
− | $I(X; Y)$ | + | $I(X; Y) \ = \ $ { 0.254 3% } $\ \rm bit$ |
− | { | + | {Calculate the two conditional entropies. |
|type="{}"} | |type="{}"} | ||
− | $H(X|Y)$ | + | $H(X|Y) \ = \ $ { 0.468 3% } $\ \rm bit$ |
− | $H(Y|X)$ | + | $H(Y|X) \ = \ $ { 0.671 3% } $\ \rm bit$ |
− | { | + | {Which of the following statements are true for the two-dimensional random variable $UV$? |
|type="[]"} | |type="[]"} | ||
− | + | + | + The one-dimensional random variables $U$ and $V$ are statistically independent. |
− | + | + | + The mutual information of $U$ and $V$ is $I(U; V) = 0$. |
− | - | + | - For the compound entropy $H(UV) = H(XY)$ holds. |
− | + | + | + The relations $H(U|V) = H(U)$ and $H(V|U) = H(V)$. |
</quiz> | </quiz> | ||
− | === | + | ===Solution=== |
{{ML-Kopf}} | {{ML-Kopf}} | ||
− | '''1 | + | '''(1)''' From the given composite probability we obtain |
+ | |||
+ | :$$H(XY) = 0.18 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.18} + 0.16\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.16}+ | ||
+ | 0.02\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.02}+ | ||
+ | 0.64\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.64} | ||
+ | \hspace{0.15cm} \underline {= 1.393\,{\rm (bit)}} | ||
+ | \hspace{0.05cm}.$$ | ||
+ | |||
− | |||
− | $$ | + | '''(2)''' The one-dimensional probability functions are $P_X(X) = \big [0.2, \ 0.8 \big ]$ and $P_Y(Y) = \big [0.34, \ 0.66 \big ]$. From this follows: |
+ | :$$H(X) = 0.2 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.2} + 0.8\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.8}\hspace{0.15cm} \underline {= 0.722\,{\rm (bit)}} \hspace{0.05cm},$$ | ||
+ | :$$H(Y) =0.34 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.34} + 0.66\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.66}\hspace{0.15cm} \underline {= 0.925\,{\rm (bit)}} \hspace{0.05cm}.$$ | ||
− | |||
− | $H(X) = 0 | + | '''(3)''' From the graph on the information page you can see the relationship: |
+ | :$$I(X;Y) = H(X) + H(Y) - H(XY) = 0.722\,{\rm (bit)} + 0.925\,{\rm (bit)}- 1.393\,{\rm (bit)}\hspace{0.15cm} \underline {= 0.254\,{\rm (bit)}} \hspace{0.05cm}.$$ | ||
− | |||
− | |||
− | $$ | + | '''(4)''' Similarly, according to the graph on the information page: |
− | $$ | + | :$$H(X \hspace{-0.1cm}\mid \hspace{-0.08cm} Y) = H(XY) - H(Y) = 1.393- 0.925\hspace{0.15cm} \underline {= 0.468\,{\rm (bit)}} \hspace{0.05cm},$$ |
+ | :$$H(Y \hspace{-0.1cm}\mid \hspace{-0.08cm} X) = H(XY) - H(X) = 1.393- 0.722\hspace{0.15cm} \underline {= 0.671\,{\rm (bit)}} \hspace{0.05cm}$$ | ||
+ | [[File:P_ID2767__Inf_A_3_6d.png|right|frame|Entropy values for the random variables $XY$ and $UV$]] | ||
− | '''4 | + | *The left diagram summarises the results of subtasks '''(1)''', ... , '''(4)''' true to scale. |
+ | *The joint entropy is highlighted in grey and the mutual information in yellow. | ||
+ | *A red background refers to the random variable $X$, and a green one to $Y$. Hatched fields indicate a conditional entropy. | ||
− | |||
− | |||
− | + | The right graph describes the same situation for the random variable $UV$ ⇒ subtask '''(5)'''. | |
− | |||
− | |||
− | '''5 | + | '''(5)''' According to the diagram on the right, <br>statements 1, 2 and 4 are correct: |
− | + | *One recognises the validity of $P_{ UV } = P_U · P_V$ ⇒ mutual information $I(U; V) = 0$ by the fact that the second row of the $P_{ UV }$ matrix differs from the first row only by a constant factor $(4)$ . | |
− | + | *This results in the same one-dimensional probability mass functions as for the random variable $XY$ ⇒ $P_U(U) = \big [0.2, \ 0.8 \big ]$ and $P_V(V) = \big [0.34, \ 0.66 \big ]$. | |
− | + | *Therefore $H(U) = H(X) = 0.722\ \rm bit$ and $H(V) = H(Y) = 0.925 \ \rm bit$. | |
+ | *Here, however, the following now applies for the joint entropy: $H(UV) = H(U) + H(V) ≠ H(XY)$. | ||
{{ML-Fuß}} | {{ML-Fuß}} | ||
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− | [[Category: | + | [[Category:Information Theory: Exercises|^3.2 Entropies of 2D Random Variables^]] |
Latest revision as of 09:15, 24 September 2021
We consider the two random variables $XY$ and $UV$ with the following two-dimensional probability mass functions:
- $$P_{XY}(X, Y) = \begin{pmatrix} 0.18 & 0.16\\ 0.02 & 0.64 \end{pmatrix}\hspace{0.05cm} \hspace{0.05cm}$$
- $$P_{UV}(U, V) \hspace{0.05cm}= \begin{pmatrix} 0.068 & 0.132\\ 0.272 & 0.528 \end{pmatrix}\hspace{0.05cm}$$
For the random variable $XY$ the following are to be calculated in this exercise:
- the joint entropy:
- $$H(XY) = -{\rm E}\big [\log_2 P_{ XY }( X,Y) \big ],$$
- the two individual entropies:
- $$H(X) = -{\rm E}\big [\log_2 P_X( X)\big ],$$
- $$H(Y) = -{\rm E}\big [\log_2 P_Y( Y)\big ].$$
From this, the following descriptive variables can also be determined very easily according to the above scheme – shown for the random variable $XY$:
- the conditional entropies:
- $$H(X \hspace{0.05cm}|\hspace{0.05cm} Y) = -{\rm E}\big [\log_2 P_{ X \hspace{0.05cm}|\hspace{0.05cm}Y }( X \hspace{0.05cm}|\hspace{0.05cm} Y)\big ],$$
- $$H(Y \hspace{0.05cm}|\hspace{0.05cm} X) = -{\rm E}\big [\log_2 P_{ Y \hspace{0.05cm}|\hspace{0.05cm} X }( Y \hspace{0.05cm}|\hspace{0.05cm} X)\big ],$$
- the mutual information between $X$ and $Y$:
- $$I(X;Y) = {\rm E} \hspace{-0.08cm}\left [ \hspace{0.02cm}{\rm log}_2 \hspace{0.1cm} \frac{P_{XY}(X, Y)} {P_{X}(X) \cdot P_{Y}(Y) }\right ] \hspace{0.05cm}.$$
Finally, verify qualitative statements regarding the second random variable $UV$ .
Hints:
- The exercise belongs to the chapter Different entropy measures of two-dimensional random variables.
- In particular, reference is made to the pages
Conditional probability and conditional entropy as well as
Mutual information between two random variables.
Questions
Solution
(1) From the given composite probability we obtain
- $$H(XY) = 0.18 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.18} + 0.16\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.16}+ 0.02\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.02}+ 0.64\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.64} \hspace{0.15cm} \underline {= 1.393\,{\rm (bit)}} \hspace{0.05cm}.$$
(2) The one-dimensional probability functions are $P_X(X) = \big [0.2, \ 0.8 \big ]$ and $P_Y(Y) = \big [0.34, \ 0.66 \big ]$. From this follows:
- $$H(X) = 0.2 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.2} + 0.8\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.8}\hspace{0.15cm} \underline {= 0.722\,{\rm (bit)}} \hspace{0.05cm},$$
- $$H(Y) =0.34 \cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.34} + 0.66\cdot {\rm log}_2 \hspace{0.1cm} \frac{1}{0.66}\hspace{0.15cm} \underline {= 0.925\,{\rm (bit)}} \hspace{0.05cm}.$$
(3) From the graph on the information page you can see the relationship:
- $$I(X;Y) = H(X) + H(Y) - H(XY) = 0.722\,{\rm (bit)} + 0.925\,{\rm (bit)}- 1.393\,{\rm (bit)}\hspace{0.15cm} \underline {= 0.254\,{\rm (bit)}} \hspace{0.05cm}.$$
(4) Similarly, according to the graph on the information page:
- $$H(X \hspace{-0.1cm}\mid \hspace{-0.08cm} Y) = H(XY) - H(Y) = 1.393- 0.925\hspace{0.15cm} \underline {= 0.468\,{\rm (bit)}} \hspace{0.05cm},$$
- $$H(Y \hspace{-0.1cm}\mid \hspace{-0.08cm} X) = H(XY) - H(X) = 1.393- 0.722\hspace{0.15cm} \underline {= 0.671\,{\rm (bit)}} \hspace{0.05cm}$$
- The left diagram summarises the results of subtasks (1), ... , (4) true to scale.
- The joint entropy is highlighted in grey and the mutual information in yellow.
- A red background refers to the random variable $X$, and a green one to $Y$. Hatched fields indicate a conditional entropy.
The right graph describes the same situation for the random variable $UV$ ⇒ subtask (5).
(5) According to the diagram on the right,
statements 1, 2 and 4 are correct:
- One recognises the validity of $P_{ UV } = P_U · P_V$ ⇒ mutual information $I(U; V) = 0$ by the fact that the second row of the $P_{ UV }$ matrix differs from the first row only by a constant factor $(4)$ .
- This results in the same one-dimensional probability mass functions as for the random variable $XY$ ⇒ $P_U(U) = \big [0.2, \ 0.8 \big ]$ and $P_V(V) = \big [0.34, \ 0.66 \big ]$.
- Therefore $H(U) = H(X) = 0.722\ \rm bit$ and $H(V) = H(Y) = 0.925 \ \rm bit$.
- Here, however, the following now applies for the joint entropy: $H(UV) = H(U) + H(V) ≠ H(XY)$.