Questions tagged [information-theory]

The science of compressing and communicating information. It is a branch of applied mathematics and electrical engineering. Though originally the focus was on digital communications and computing, it now finds wide use in biology, physics and other sciences.

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Validity of a proof of the Fisher Information Data Processing inequality, $I(f(X)) \le I(X)$.

I'm trying to prove that taking a function of a random variable never creates a better estimator (in the terms of Fisher information) than using the original random variable directly. I have a proof (...
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Out-of-distribution Slepian-Wolf coding

Background The standard way in which source coding theorem is formulated is $\forall_{D} \forall_{\epsilon>0} \exists_N$ exists a code that encodes N i.i.d. variables with distribution $D$ in $N(H(...
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Interpreting Gaussian measurements in terms of information theory

I have a quantity that I want to measure, and I have obtained three sets of measurements A, B, and C, each represented by their mean $\mu_A$, $\mu_B$, $\mu_C$, and standard deviation $\sigma_A$, $\...
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Why does the common information $C\equiv X\wedge Y$ give $H(X)=H(CX)$?

Given two random variables $X,Y$, their common information $X\wedge Y$ is defined in (Wolf and Wultschleger 2004) as the random variable $X\wedge Y=f_X(X)=f_Y(Y)$ constructed as follows: Let $G$ be ...
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Finding efficient encoding scheme for combinatorial problem

An online store is selling rings, necklaces, bracelets, and pendants. Suppose there are $m$ different types of each of these four commodities. A typical customer wants to buy one item of each of the ...
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Finding binary vectors with guaranteed Hamming distance

Let $n > 10^6$ be a large square. Bob knows $n$ pairs $(x_1, y_1),(x_2, y_2), \ldots ,(x_n, y_n)$ of binary vectors. Each vector $x_i$ and $y_i$ is length $n$ and for each $i$, the Hamming distance ...
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KL divergence for distribution representing sums of iid random variables

Sorry if my description is inaccurate, I hope it's understandable. Given $X_1,...,X_n$, a series of $n$ iid Bernoulli RVs with means $p$, and a similar series $Y_1,...,Y_n$ with means $q$, we know ...
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Min-Sum Belief Propagation not working on a chain model with equal unary potentials

Given is a chain factor graph as presented in the image below with the following properties: Each node can take values 0 or 1 All unary potentials are equal (e.g. $U(a) = 0$ for every node) All ...
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How is this formula on Stirling's approximation derived?

The following paragraph (equation 1.41) is from the book "Information theory, Inference, and Learning Algorithms" I don't quite understand how the first approximation in 1.41 is derived. Can ...
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How do you find the exact minimum descriptive length?

My friend asked me how to find the exact minimum dimensionality of a manifold that can embed a dataset, in a rigorous lossless way. I'm pretty sure this is impossible, but I wanted to ask you guys &...
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How many unique solutions are there to the coin-weighing problem from Cover and Thomas?

The coin weighing problem in question: Suppose that one has $n$ coins, among which there may or may not be one counterfeit coin. If there is a counterfeit coin, it may be either heavier or lighter ...
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Joint entropy of sum and difference of random variables

Let $X$~$U\left\{1,8 \right\}$ , $Y$~ $\begin{pmatrix} 1 & 2 & 3 & \dots \\ \frac{1}{2} & \frac{1}{4} & \frac{1}{8} & \dots \end{pmatrix}$. I need to calculate $H(X+Y,X-Y)$. ...
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Generalization of Shannon's Reconstruction Theorem

Suppose $f$ is of moderate decrease and that its Fourier transform $\hat{f}$ is supported in $I=[-1/2, 1/2]$, $\lambda > 1$. Show that: $$ f(x)=\sum_{n=-\infty}^{\infty}\frac{1}{\lambda}f(\frac{n}{\...
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Prove KL Divergence $\displaystyle \int_{\chi}p(\textbf x) \text{log}\frac{p(\textbf x)}{q\left(\textbf x, V\right)}d\textbf x$ is Convex w.r.t. V

Problem: I have two kernel density estimates of distributions, call these $p(\textbf x)=\displaystyle \frac{1}{|X|} \sum_{\textbf x_i \in X} K_H(\textbf{x}-\textbf{x}_i)$ and $q(\textbf x)=\frac{1}{|W ...
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Upper bound on relative entropy variance

Consider a finite alphabet $\mathcal{X}$ and probability distributions $p(\mathrm{X})$ and $q(\mathrm{X})$ respectively. The relative entropy variance is defined as $$V(p \| q):=\operatorname{Var}\...
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Maximum value of $-\sum_{i=1}^{n}p_i \log_2(p_i)$ for $\sum_{i=1}^{n}p_i=P<1$ [duplicate]

It is known that the entropy $$H=-\sum_{i=1}^{n}p_i \log_2(p_i)$$ Is maximized when $p_i=1/n$. However, this is under the assumption that $\sum_{i=1}^{n}p_i=1$. Does this still hold true if the sum of ...
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Is the average Shannon entropy of a process equal to that of its time-reversed process?

Consider an infinite sequence of characters $\ldots, x_{t-1}, x_t, x_{t+1}, \ldots$ which each belong to a finite alphabet and are generated according to an arbitrary stochastic process. For example, ...
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Directed Acyclic Graph Complexity Measures

I have many (millions) of collider-less directed acyclic graphs (DAGs) (they're actually causal graphs, but that's unimportant for this question) I am using to model a process, and I would like to ...
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Information Geometry and Divergences

I've been reading Amari's Information Geometry book and, on page $10$ he defines what a divergence is. It goes as follows: Let us consider two points $P$ and $Q$ in a manifold $M$, of which ...
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"A New Outlook on Shannon’s Information Measures" abstract clarification

I was curious about the paper A New Outlook on Shannon’s Information Measures by Yeung. However, I don't really understand the abstract Let. $X_i,i = 1,. . .,n$, be discrete random variables, and $\...
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Wallis' derivation of information entropy

In Wallis' combinatorial derivation of the information entropy (see here or wiki, the text is copied down below), I don't understand what the information $I$ is in If it happens to conform to the ...
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Optimal variable-time sampling of a real-time data stream

Crossposted from stats stackexchange Here's a signal processing/information theory problem that I've encountered in a software engineering context: Say I have a logging utility in my application that ...
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Why is relative entropy negative in this computation?

I am running some tests using relative entropy on physical systems in equilibrium, and I am seeing some strange results. I wonder if this is an issue in Mathematica itself, but here goes. I have two ...
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Under what conditions is the $f$-divergence a distance?

It is well known that the total variation is a distance, whereas the KL-divergence is not. I am wondering under what conditions on $f$, the induced $f$-divergence is a distance? Or consider a weaker ...
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Beginning algorithmic information theory

I was wondering if the stack-exchange community could provide me with some resources for beginning studies in algorithmic information theory, with a focus on how it intersects with computability, ...
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Number of bits from entropy calculations

To calculate the entropy for a an event of a uniform distribution of this kind Events: "red" or "blue" Probabilities: P(red) = 0.5, P(blue) = 0.5 We just do $e = -\log_2(0.5)$ In ...
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How to show this equivalence between two definitions of channel capacity

Let us consider a random variable $X$ on alphabet $\mathcal{X}$ with probability distribution $p_X$ and a conditional probability distribution (channel) $W_{Y|X}$ that generates a random variable $Y$ ...
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Textbook on information theory with solutions to exercises for self-study

Currently, I'm self-studying information theory through an online course taught by R. W. Yeung. The goal is to eventually understand and do research on algorithmic (Kolmogorov) complexity and the MDL ...
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Unique minimum of Kullback-Leibler-Information

The K-L-information, for the 'true' density $g$ and candidate approximating densities $\{ f( \cdot | \theta) \}_{\theta \in \Theta} $, is defined as $ I(f(\cdot | \theta),g) := \mathbb{E}_{X \sim g} [...
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Rewriting linear code representation (coding theory).

Linear codes: In coding theory, we have a linear codes where a message is passed through an encoder to get a code. A linear code is the situation where a message $u=(u_1,\dots,u_k)\in\{0,1\}^k$ (...
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Could you help me prove this information theory inequality

Greetings and many thanks in advance. Let $h(p)=-p\log_2 p-\bar{p}\log_2 \bar{p}$ be the binary entropy function, where $\bar{p}=1-p$. Prove that $$(1-h(p))h(x)-h(p*x)+h(p)\geq 0,\forall x\in [0,1],$$ ...
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Is there a chain rule for Sibson's mutual information?

Mutual Information satisfies the chain rule: $$I(X,Y;Z) = I(X;Z) + I(Y;Z|X).$$ The chain rule is useful and the proof is simply linearity of expectations. Sometimes we want something stronger than ...
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Finding a continuous distribution that maximizes differential entropy

Continuous distribution (known mean $\mu$ and variance $\sigma^2$) - Maximum Entropy: Given mean $\mu$ and variance $\sigma^2$, what is the continuous distribution that maximizes differential entropy $...
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How is it the Kullback-Leibler divergence is always non-negative but differential entropy can be positive or negative?

According to wikipedia, we have $$ D_{KL}(f ||g ) \geq 0 $$ always, but if $f$ is the pdf of a random variable $X$ and $g$ is the density of the un-normalized Lebesgue measure i.e. the constant ...
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Upper Bounding the Discrete Entropy by the Expectation

Let $\mathcal P$ be the set of probability mass functions (pmfs) on $\mathbb Z_{>0}$, i.e. for $p=(p(x))_{x\in\mathbb Z_{>0}}\in\mathcal P$ we have $p\ge 0$ and $\sum_{x=1}^\infty p(x)=1$. Let $...
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Entropy calculation of splitted experiment

Let's say, that we have a set of probabilities $X = \{0.4, 0.3, 0.2, 0.1\}$, each for some event of an experiment. The entropy for this set is equal to $H(X) = 1.2798$. Now, if we divide $X$ into two ...
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Optimal messages's probability problem

https://i.stack.imgur.com/gb9SD.png Translation: Set of two messages m1, m2 is given. Those messages are coded as follows: C(m1) = 01, C(m2) = 101 Find a probabilities those messages in such a way, ...
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Maximum Entropy with Inequality Constraints

It is well known that, maximizing the entropy of the joint distribution $P(x_1,...,x_n)$ of a random vector $(X_1,...,X_n)$ subject to equality constraints for the mean vector ($\mu$) and the variance ...
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Rewriting channel transition probability

I have a channel transition probability for the Mixture-of-Experts (MoE) model in machine learning: \begin{align*} &\mathbb{P}\Big[y_i\Big|\langle X_i,\beta^{(1)}\rangle,\dots,\langle X_i,\beta^{(...
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Derivation of the analytical solution for conditional mutual information

I am aware of the derivation of the mutual information's closed form solution when data is (multivariate-)Gaussian from an existing post and Wikipedia. And some academic papers say that conditional ...
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Finding the rate distortion function

Let $\mathcal{X}=\{0,1,...,k-1\}=\mathcal{\hat{X}}$ for $k\geq 3$ and let $X$ be uniformly distributed over the source alphabet. Consider a distortion function given by \begin{align*} d(x,\hat{x}) = \...
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Maximum Expected Long Term Utility.

I have the following question in Dynamic Games where the first player completely knows the state over all the period $T$ and tries to send signals to the second player (second player only knows the ...
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Solve an inequality involving entropy of random variable X [closed]

Im working through Elements of Information Theory and came across a question which is stumping me. The problem states Let $p(x)$ be a probability mass function. Prove, for all $d\ge0$ that $$\text{Pr}(...
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Is there a standard term for the log cardinality, or entropy, of the pre-image of an element with respect to a function?

Suppose $h: X \to Y$ where $X$ and $Y$ are finite, i.e., $|X|, |Y| < \infty$. Is there a standard name for the quantity: $$S_h(y) \equiv \log_2 |\text{Pre-image}_h(y)|?$$ For example, if the ...
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Upper bound on the mutual information for a mixture distribution

Assume we have two random variables $X$ and $Y$. Suppose further that $X$ is generated from a mixture distribution $P$ with $n$ components $P_i$ with corresponding weights $w_1,\dots,w_n$. Is it the ...
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Is there a lower bound on the rate of growth of distinct algorithms (vs. description size) in a Turing-complete system?

...where a "distinct algorithm" is approximately defined as an algorithm that returns a value distinct from all others thus far. I would think not, because you can always construct some ...
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Show that the entropy with repetition is greater than the entropy without repetition

Let $n\in\mathbb Z_{>0}$ and $k\in\{0,\dots,n\}$. Consider $n$ iid Bernoulli variables $X=(X_1,\dots,X_n)\in\{0,1\}^n$ with success probability $p=k/n$ and let $Y\in\{0,1\}^n$ have the same law as $...
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How do I calculate conditional entropy?

Consider the events X = {Raining, Not raining}, Y = {Cloudy, Not cloudy} and the following probabilities. cloudy not cloudy raining 24/100 1/100 not raining 25/100 50/100 What is the entropy of ...
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Complete Codes and Kraft Inequality

Li and Vitanyi define a complete code as a uniquely decodable code to which no codeword can be added while keeping it uniquely decodable. They claim that this is easily seen to be equivalent to ...
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Is there a way to approximate a posterior distribution over markov matrix with restricted information capacity?

Let a matirx $M^\ast$ is a stochastic matrix with its steady state distribution $\mu(s)$ where the row of $M^\ast$ is a probability of transition to next state $s \in S$ among a finite set of states $...
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