Questions tagged [measure-theory]

A field of mathematics concerning measures, which are functions mapping sets to real numbers that generalize the idea of area and volume. Measure theory underlies modern treatments of probability. Questions about measure theory with a weak connection to probability or statistics may be more suitable for math.stackexchange.com than this site.

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Confirmation of MGF of Shifted Exponential Distribution

Consider the probability distribution $D \sim X - a$ where $X \sim \text{Exp}(\lambda)$. My task is to find the MGF of probability distribution $D$. I think I have a solution but it contradicts what I ...
2 votes
2 answers
242 views

Two Different Proofs of Continuous Mapping Theorem

The theorem to prove is that if $X_n$ converges weakly to $X$, and $P(X \in D_g) = 0$ where $D_g$ is the set of discontinuity of $g$, then $g(X_n)$ converges weakly to $g(X)$. In Durrett, this is ...
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Inverting a characteristic function if the integral of the modulus of the cf is infinity

I'm reading a lecture slide that starts by asking if there's a way to invert a characteristic function $\psi_X$ if $\int|\psi_X(t)|~\mathrm{d}t = \infty$. From my reading, the slide then provides a ...
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How do we define the pdf in the multi-variate case and compute expectations?

Apologies if this is a very simple question but trying to work through a result in a paper made me realize I missed something a bit fundamental in my undergrad probability and analysis courses. Lets ...
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Interchange of integral and differentiation [migrated]

Say I have 2 continuous Bivariate distributions( for example bivariate log normal and bivariate weibull) which have joint density functions as: $f_1(x,y,\theta)$ and $f_2(x,y,\alpha).$ Now I want to ...
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4 votes
2 answers
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Expectations as integrals with respect to a joint distribution

As part of self-study, I'm trying to learn about conditional expectation. Example 5 here presents the problem: "Let $X_1, X_2$ be independent with $U(0, \theta)$ distribution for some known $\...
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3 votes
1 answer
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How to think of a sub-sigma algebra as a collection of random variables?

Where $\mathcal{H}$ is a $\sigma$-algebra on $\Omega$, section 9.1 here discusses thinking of a sub-$\sigma$-algebra $\mathcal{G}$ of $\mathcal{H}$ "as the collection of all numerical random ...
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Proof of inequality $P(X \geq \lambda) \leq \frac{\sigma^2}{\sigma^2 + \lambda^2}$

Hello I have the assumptions that $E(X) = 0$ and $\operatorname{Var}(X) = {\sigma}^{2}$ . Why does this inequality hold $P(X \geq \lambda) \leq \frac{{\sigma}^{2}}{{\sigma}^{2} + {\lambda}^{2}}$ for $ ...
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Equivalence of Tightness of Seqeuence of CDFs

In Durrett, a sequence of cdf $\{F_n\}$ is called tight if for all $\epsilon > 0$< there exists $M_\epsilon$ such that $\limsup 1-F_n(M_\epsilon)+F_n(-M_\epsilon) \leq \epsilon$. In Rosenthal, a ...
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What does it mean to condition on a sub-sigma-field? [duplicate]

I am studying measure-theoretic probability independently. An earlier course on probability dealt with conditioning on an event and on a random variable. These lecture notes discuss $P(A|C)$ where $C$ ...
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Prove that smallest $\sigma$-field of subsets of $A$ containing the open sets in $A$ is $\{B \in \mathcal{B}(\mathbb{R}) \mid B \subseteq A\}$ [duplicate]

Let $A$ be a Borel set of $\mathbb{R}$. Then show that the smallest $\sigma$-field of subsets of $A$ containing the open sets in $A$ is $\{B \in \mathcal{B}(\mathbb{R}) \mid B \subseteq A\}$. I am ...
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Prove that smallest $\sigma$-field of subsets of $A$ containing the open sets in $A$ is $\{B \in \mathcal{B}(\mathbb{R}) \mid B \subseteq A\}$

Let $A$ be a Borel set of $\mathbb{R}$. Then show that the smallest $\sigma$-field of subsets of $A$ containing the open sets in $A$ is $\{B \in \mathcal{B}(\mathbb{R}) \mid B \subseteq A\}$. I am ...
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1 answer
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Density from characteristic function: Durrett example 3.3.8 and 3.3.9

Letting $\varphi(t)$ be the characteristic function for the probability measure $\mu$, we know if $\int \left|\varphi(t)\right|dt < \infty$, then $\mu$ has density function $$f(y) = \frac{1}{2\pi} \...
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1 answer
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Support of a continuous distribution

Suppose I have a continuous random variable $X$ on $\mathcal{R}^1$, with CDF $F(\cdot)$ and pdf $f(\cdot)$. My understanding is that there are three equivalent definitions of the support of the random ...
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From pointwise convergence to uniform: metrics

Let $\mu_\theta$ be the limit of an empirical measure $\mu_{n, \theta}$. $\theta \in \Theta$ and $\Theta$ is a compact set. Morever, the maps $\theta \rightarrow \mu_{n, \theta}$ and $\theta \...
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Intuition about conditional probability given a $\sigma$-algebra [duplicate]

I've been studying some statistics by the ways of measure theory, and came up with a problem in understanding conditional probability. The book gives the following definitions: Let $(\Omega,\mathcal{...
2 votes
0 answers
35 views

How to (dis)prove $\lim_{k\to\infty}\lim_{n\to\infty}E(Y_{n,K}) = E(\min(X_n, K))$?

Here is the problem: Given $X, X_1, X_2, \ldots$, non-negative random variable with finite expectation and $X_n \to X$ pointwise and $Y_{n,K} = \min(X_n,K)$, we are asked to see if a) $\lim_{K \to \...
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Interpretation of the inner product and projection between two density functions

Suppose I have two general density (discrete or continuous) functions $g, h \in L^2 $ defined and supported on the same domain $R\subseteq \mathbb R$. Is the inner product $\int_R g(x) h(x) \mathrm d ...
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What's the transform that relates measures on $[0,1]$ to beta distributions?

I'm looking for something that I think is called "[somebody]'s transform", but I can't remember its name. The idea is that if I have a measure on $[0,1]$ representing the bias of an unknown ...
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1 vote
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How to connect the intuitions to the math of adaptive processes?

Formal Definition Wikipedia gives the following definition of a process adapted to a filtration: Let $(\Omega, \mathcal{F}, \mathbb{P})$ be a probability space; $I$ be an index set with total order $\...
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3 votes
2 answers
146 views

Absolute Continuity of an Univariate Normal Random Variable

Consider a normally distributed random variable $X\sim N(\mu,\sigma^2)$ and a Lebesgue measure $\lambda$ on $\mathbb{R}$. Here, the value of the distribution at $\mu$, $F_X(\mu)$, is strictly positive,...
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Sigularity of the Covariance Matrix and Absolute Continuity of the Distribution [duplicate]

Suppose that X is a multivariate normal vector with the covariance matrix $\Omega$. As we know, if $\Omega$ is singular, the density of X is not defined in the usual way (because the denominator is ...
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1 vote
1 answer
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Mathematical knowledge needed for learning upper level statistics

im a math student who wants to study statistics in depth for a master degree(maybe doctor degree). And I was wondering what kind of math knowledge might be needed for upper level statistics. I wanna ...
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2 votes
1 answer
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If $F_X, F_Y$ agree for all $x \in \mathbb{R}$, Do their distributions $\mu_X, \mu_Y$ agree on $\mathcal{B}$?

Let random variables X and Y be defined on the same probability space $(\Omega, \mathcal{F}, \mathbb{P})$. Assume their distribution functions $F_X$ and $F_Y$ agree for all $x \in \mathbb{R}$. How ...
2 votes
1 answer
61 views

Is $Y=Y(\omega) = \inf_{0 \leq t \leq 1}X_t(\omega) = 1_A(\omega)$ not measurable if $A \notin \mathcal{B}[0,1]?$

Consider the probability space $([0,1], \mathcal{B}[0,1],\lambda)$ where $\lambda$ is the Lebesgue measure. Let $A \subset [0,1] $ and define $ X_t(\omega) = \begin{cases} 0 \;\; if \; \; t = \omega \...
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15 views

How should we interpret random vectors in the context of statistical inference?

I am reading the book "Mathematical Statistics" from Jun Shao and I got some questions. Here is the part of the book that I am struggling with "In statistical inference and decision ...
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1 vote
1 answer
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Kolmogorov axioms consequences

Earlier today in my stochastic processes lecture, the prof mentioned that there does not exist a probability measure P(A) defined for all subsets of [0,1] which would satisfy all the 3 Kolmogorov ...
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Why does $P_0^{(n)}(\phi_n) \leq e^{-Cn}$ implies that $\sum_{n\geq 1} P_0^{(n)}(\phi_n > e^{-Cn}) < \infty$?

In the proof of Schwartz's Theorem, the author makes the following statement By Markov’s inequality, the assumption $P_0^{(n)}(\phi_n) \leq e^{-Cn}$ implies that $\sum_{n\geq 1} P_0^{(n)}(\phi_n > ...
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3 votes
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What is the measure-theoretic definition of the condition probability?

Let $(S, \mathcal{S}, \Pr)$ be a probability space. Let $(\mathcal{X}, \mathcal{B})$ be a standard Borel space and a measurable map $X : S \to \mathcal{X}$. Let $(\Omega, \tau)$ be a standard Borel ...
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1 vote
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Singular distribution via push forward

Suppose $X$ is a multivariate normal distribution in $\mathbb{R}^3$ with a covariance matrix whose rank is 2. Therefore, it is a singular distribution. Is it possible to represent it as a push forward ...
4 votes
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What is the conditional probability $P(A|B)$ in measure theory?

In Schervish's Theory of Statistics (1995) and again in A Measure Theoretic Formulation of Bayes' Theorem by @ArtemMavrin, the following equation was proved in detail $$ \mu_{\Theta \mid X}(A \...
2 votes
0 answers
64 views

How do we choose the sigma algebra for a specific experiment?

I am trying to understand the connect between probability and measure theory. I get some basic things about measure theory. But what I still don't get is how do we choose the sigma algebra for our ...
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54 views

Quick question about density with respect to product measure

Suppose we got 2 non indepenendent random variables $X_1:(\Omega,\mathcal{A})\rightarrow (\mathcal{X}_1,\mathcal{B}_1)$ and $X_2:(\Omega,\mathcal{A})\rightarrow (\mathcal{X}_2,\mathcal{B}_2)$ with ...
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Continuity of conditional expectations?

An elementary result in probability theory is the so-called continuity of probability. Specifically, let $E_1\supseteq E_2\supseteq\cdots$ be a sequence of nested events. Then $P(\cap_n E_n) = \lim_{n\...
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How to build a Poisson random measure according a Levy Process

Let $(\Omega, \mathcal{F}, P)$ and $(\Theta, \mathcal{B}, \rho)$. A Poisson random measure (PRM) with intensity $\rho$ is a kernel $\mathcal{N}: \Omega \times \mathcal{B} \to \mathbb{R}$ such that: $\...
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Correct conditional expectation with respect to a different measurable space

Suppose we've got random variables $X_1:(\Omega_1,\mathcal{A}_1)\rightarrow(\mathbb{R},\mathcal{B}(\mathbb{R})),X_2:(\Omega_2,\mathcal{A}_2)\rightarrow(\mathbb{R},\mathcal{B}(\mathbb{R}))$ on a ...
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2 votes
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integral related to a general bivariate copula C(u,v) of |u-v|

I'm trying to compute the following integral over the unit square $I^2=[0,1]^2$: $$ \int_0^1\int_0^1 |u-v|dC(u,v), $$ where $C(u,v)$ is a generic bivariate copula, which should be equal to $$ 1-2\...
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0 answers
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Strict and Real example of Random variable and distribution [duplicate]

Now I'm studying elementary probability thoery. And It changes every abstract notions to strict text. I mean, when I was in middle school, the probability of two times coin toss is like below. $$P(HH) ...
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An extremely basic question about statistics

We do statistics on data which we assume to be outcome of random trials. The question however, is -- are we assuming that the outcome can be represented as a random variable? The outcome of an ...
1 vote
0 answers
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Precise Definition of $\mathbb{E}[X\mid \sigma(A)]$ Conditional Expectation of Random Variable given Sigma Algebra generated by a set

I want to define precisely, exhaustively and constructively the conditional expectation of a random variable given the sigma algebra generated by a set. This question has some discussion on it but the ...
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Conditional Expectation of Random Variable given an event

Suppose $(\Omega, \mathcal{H}, \mathbb{P})$ is a probability space, $(\mathsf{E}, \mathcal{E})$ a measurable space and $X:\Omega\to \mathsf{E}$ a random variable with well-defined expectation $\mathbb{...
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1 vote
0 answers
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Product of kernels vs Composition of kernels

According to Wikipedia there are two main operations between two kernels: product and composition. They look almost identical to me and I cannot figure out what's the intuition between these different ...
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1 vote
0 answers
36 views

Visualization of $L(X)$

Let $L^2_+$ the set of all $2$-dimensional nonnegative random vectors $X = (X_1, X_2)^⊤$ with finite and positive marginal expectations, and let $Ψ^{(2)}$ the class of all measurable functions from $\...
1 vote
0 answers
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Computing certain integrals with a particular distribution function

Let $(\xi_n, n \in \mathbb{N})$ be a sequence of random vector such that $G_n$ is the distribution function of $\xi_n$. Let $\big(\psi_{j}^n \big)_{(j,n) \in \mathbb{N}^2} $ be a double sequence such ...
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2 votes
1 answer
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How to formally define a conditional distribution conditioning on an event of probability zero?

Given $[X,Y]\sim N(0,I_2)$, a intuitive guess of the value of $P(X=x|\{X,Y\}=\{x,y\})$, where $\{\}$ means unordered set, is $1/2$ by symmetry. This type of notations is typically applied in ...
2 votes
1 answer
314 views

What is the difference between a probability measure and a probability density function? [duplicate]

During my research, I have repeatedly come across the terms probability measure and probability density function (pdf). I am familiar with the concept of a pdf, but I am not entirely sure how ...
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15 votes
7 answers
3k views

Difference in Probability Measure vs. Probability Distribution

I am trying to better understand the Difference in "Probability Measure" and "Probability Distribution" I came across the following link : https://math.stackexchange.com/questions/...
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1 vote
0 answers
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$L^2$ convergence of inverse

Let $h$ be some bounded non-negative function. Assume that some random quantity $\mu^N (h)$ be some random quantity with almost sure limit $\mu(h) > 0$. For instance we could have $\mu^N(h) = N^{-1}...
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9 votes
3 answers
1k views

Confidence interval / p-value duality: don't they use different distributions?

Idea: p-value is less than the level of significance if and only if the corresponding CI does not include the null value; and vica versa, the p-value is greater than the level of significance if and ...
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0 votes
1 answer
172 views

If every event is trivial (0 or 1 probability), then every random variable is (a.s.) degenerate/constant. Maybe Lebesgue decomposition?

There are these: 1, 2, 3, but I wanna try different ways. Let $(\Omega, \mathfrak{F}, \mathbb P)$ be such probability space with each (event) $E \in \mathfrak F$ having trivial probability. Consider a ...
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