Questions tagged [bayesian]

The approach and interpretation of probability associated with Bayes' theorem; usually used as opposed to the frequentist approach. It can be seen as an extension of logic that enables reasoning with propositions whose truth or falsity is uncertain. A Bayesian probabilist starts with some prior probability, and evaluates the evidence in favour of a hypothesis by combining the prior with the likelihood function of the observed data.

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Using Bayesian statistics in time series forecasting

I would like to forecast demand count time series of taxi fleets at different locations on the map at different points in time. I.e. multivariate demand Time series forecasting. Given hierarchinal ...
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Bayesian statistics - explanation of evidence

Despite trying to read multiple resources about Bayesian statistics, I cannot find a (free) resource which explains what is exactly $P(D)$. Most of the resources explain it somehow conceptually ...
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Monty Hall problem with no guarantee

There 's an 80% chance a ball is in a chest of drawers with 4 drawers. If we open 3 and find they're empty ,what is the probability it s in the 4th (all drawers have an identical chance of having the ...
user159729's user avatar
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Deriving the expression for the posterior predictive distribution.

We have $Y \mid \Theta=\theta \sim \operatorname{Po}(\theta)$ and $\Theta \sim \operatorname{Gamma}\left(\alpha_0, \lambda_0\right)$, the expression for the posterior predictive distribution is ...
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About the notation $\mathbb{E}_t [\text{d} s_t]$

My knowledge on stochastic calculus tells me that the notation $\text{d} X_t = \mu(X_t) \text{d} t + \sigma(X_t)\text{d} B_t$ is just an abbreviation of $X_t = X_0 + \int_0^t \mu(X_s) \text{d} s + \...
Rubén Fernández-Fuertes's user avatar
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Show that the equivalence of MAP in Bayesian estimation to Structural Risk Minimization (SRM)

I'm sorry that I didn't explain my problem clearly😭I would like to add something. I saw this problem in Machine Learning Method written by Li Hang(p16). The book states the problem as below: "...
chenqile's user avatar
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For any chaotic system such as a chaotic attractor does there exist a higher dimensional representation in which the system is no longer chaotic? [closed]

For a given n dimensional chaotic system such as a chaotic attractor or really a time dependent chaotic dynamic system does there exist a higher dimensional representation where the behavior is in ...
Matthew Wander's user avatar
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Is there a better way to describe statistical "chance" on TV? [closed]

Something I've noticed a lot on TV is hosts/announcers using statistics incorrectly by converting past performances into present odds. For instance: A football announcer says a kicker has "a 16%...
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Marginal Posterior Distribution for Multinomial/Dirichlet Variables

Suppose that some data $(y_{1},\ldots,y_{J})$ are distributed multinomially with parameters $(\theta_{1},\ldots,\theta_{J})$ and that $\theta = (\theta_{1},\ldots,\theta_{J})$ has Dirichlet prior ...
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Confusion with Complex Gaussian process with Auto-covariance

I have a complex sequence $z(t)$ in time which I know to be a Gaussian process. I read that the complex Gaussian process is not only characterized by the covariance, but also the pseudo-covariance ...
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How to prove $x^T\Sigma x$ is quadratic?

How to prove $x^T\Sigma x$ is quadratic? where $\Sigma$ is covariant varible(symmetric matrix) I did simple calculation with 3x2 matrix , 2x2 covariance, 2x3 matrix. the result is 3x3 matrix. But how ...
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Are we finding the density of $x$ or evaluating the density of $\theta$ at $x$? | Alpyadin Machine Learning

In section $4.4$ The Bayes Estimator of Alpaydin he discusses the use of the prior density of $p(\theta)$ to construct a posterior density for $\theta$. This is standard Bayesian estimation to get a ...
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Getting negative predictions while fitting a Bayesian linear regression model [migrated]

I am trying to fit a Bayesian linear regression model on a data set of $3$ years. I have used both pymc and pytorch libraries and the NUTS sampler for sampling. The dependent variable is Sales, and ...
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What are the regularity conditions of the Bernstein-von Mises theorem in simple one-dimensional case?

I would like to apply the Bernstein-von Mises theorem in a very simple settings to be able to make the following claim: Let $\theta \in [0,1]$ be a random parameter with strictly positive and bounded ...
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The difference between the Bayesian estimator and MLE multiplied by $\sqrt{n}$ converges to zero.

Let $\theta$ be a random parameter with support $[0,1]$ and positive density, and let $X_1,X_2,\ldots \sim \rm N(\theta,1)$ be its i.i.d. observations. Define $$ \delta_n := \sqrt{n} \Big(\hat \...
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Expected squared difference between between the ML estimator and the posterior expectation.

Let $\theta$ be a random parameter with support $[0,1]$ and positive density, and let $X_1,X_2,\ldots ~ \rm N(\theta,1)$ be its i.i.d. observations. Does $$ \rm E\Big[n\cdot \Big(\hat \theta_n(X_1,\...
Pavel Kocourek's user avatar
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Performing Maximum A Posteriori estimation on a set of dice results.

I have a set of data obtained from rolling a 20 sided dice 1000 times. I understand that ideally a dice would have a uniform distribution, and that forms my prior belief. But how exactly does one go ...
Zhang Sijun's user avatar
1 vote
1 answer
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Deriving the posterior predictive mean for a Gaussian process with nonzero mean function

$\require{color}$ $\newcommand{\vect}[1]{{\mathbf{\boldsymbol{{#1}}}}}$ $\newcommand{\x}{\textbf{x}}$ $\newcommand{\y}{\textbf{y}}$ $\newcommand{\w}{\textbf{w}}$ $\newcommand{\wpriorcov}{\Sigma_p}$ $\...
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Law of total probability conditional on normal distribution

Given two normal distribution $y_* | \mathbf{x}_*, \mathbf{w} \sim N( \mathbf{x}_*^T \mathbf{w}, \sigma_n^2)$ and $\mathbf{w} \sim N(\mathbf{\bar{w}}, A^{-1})$. I am trying to show that $$y_* | \...
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Bayesian updating with cyclically interdependent observations

Let $a,b,c$ be independent normally distributed variables with mean $0$ and standard deviation $\sigma_a,\sigma_b,\sigma_c$, respectively. What is the posterior distribution of the variables $a,b,c$ ...
Pavel Kocourek's user avatar
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Intuitive utility of the Jeffreys prior, eg. in Bernoulli trials

I understand the computation the Jeffreys prior, and also its historical motivation. I (somewhat) understand the theoretical desirability of a "prior-construction principle/method" that is ...
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Is $\int_{0}^{1}\exp\left(-\frac{n(x-Ks)^2}{2Ks}\right)s^{\alpha-3/2}(1-s)^{\beta-1}\mathop{\mathrm ds}$ approximately Gaussian as $K\rightarrow 0$?

Suppose that $$X\mid p\sim\mathcal{N}\left(Kp,\frac{Kp}{n}\right)$$ for $K^2\approx 0$. Now, if $p\sim\text{Beta}(\alpha,\beta)$ for large $\alpha,\beta$ (say $\alpha\geq1.5$ and $\beta\geq 1$), what ...
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Maximum entropy for continuous distributions, optimization problem

Reading E. T. Jaynes book. In chapter 12 he introduces an extension to Shannon's entropy for continuous distributions: (*) $H_{I}^{c} = - \int \text{d}z \, p(z|I) \log{\frac{p(z|I)}{m(z)}}$ which has ...
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Bayesian Updating with Conditional Independence of two tests

I have the following scenario of Bayes updating with which I struggle quite a bit. Imagine we are interested in the probability that a given person has a disease $D$. We perform two different tests $...
nmwitzig's user avatar
2 votes
2 answers
85 views

How to understand the Posterior hyperparameters for Bernoulli in Beta conjugate prior?

From here: https://en.wikipedia.org/wiki/Conjugate_prior#When_the_likelihood_function_is_a_discrete_distribution I know $\text{posterior} = \frac{\text{proir} \cdot \text{likelyhood}}{\text{evidence}}$...
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Recursive formulas for the distributions in the state space model

I am having difficulty understanding the recursive formula for the posterior distribution $p(x_{0:t+1}|y_{1:t+1})$ of the state space model in which we assume $x_t$ is Markovian and $y_t$ are ...
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Probability problem with uncertainty [duplicate]

In a City there are 2 Taxi companies: Blue and Green. 85% of the Taxis are Green, 15% of the taxis are Blue A man has been hit by a taxi and he claims the taxi was blue but in tribunal the Judge ...
TinoV10's user avatar
1 vote
2 answers
147 views

What is the probability that the man is guilty?

Problem I try to build some connection between those text provided figure to formulate a bayes equation when I want to solve : "What is the probability that the man is guilty?" I know that: $...
Yiffany's user avatar
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1 answer
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Independence among random variables [closed]

Say we have the random variables $X_1$, $X_2$, $X_3$, $X_4$, $X_5$. We know that: $X_5$ is influenced by $X_3$. $X_4$ is influenced by both $X_2$ and $X_3$. $X_2$ and $X_3$ are both influenced by $...
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2 different answers, two different intuitions for Seattle raining probability problem, which one is correct? and why?

You are waiting for your flight to Seattle, and to pass the time you call 3 friends in Seattle. You independently ask each one if it is raining. All 3 of your friends say “Yes, it is raining.” But ...
Raven's user avatar
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1 answer
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A brilliant introductory course on machine learning (mathematical perspective) (simulation + implementation) [closed]

I am a grad student with a relatively good understanding of stochastic analysis / probability theory, but only basic coding experience. What is a good source (textbook or lecture notes) for an ...
rogerroger's user avatar
2 votes
1 answer
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If A,B indenpendent, and P(C|A),P(C|B) >P(C), what is relation P(C|A,B) with P(C)? [closed]

If A,B indenpendent, and $P(C|A),P(C|B) >P(C)$, what is relation $P(C|A,B)$ with $P(C)$?(> or <)
Yiffany's user avatar
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Exchangeability of y1 and y2.

I'm working through one of Gelman's exercises on exchangeability and am stuck on a seemingly simple exercise. We are given a box with N black and white balls but we not know how many of each. Task ...
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Does likelihood function of your choice impact the asymptotic posterior of MCMC?

The metropolis Hasting algorithm decides whether to jump based on posterior probability. Namely, likelihood x prior. Then it seems the density function that you choose (e.g., Poisson or Gaussian) can ...
some's user avatar
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Bayesian inference on Gaussian process without conjugate prior but particular prior distribution

I wondered if a well-known formula exists or if there is any reference I can look into for the following Bayesian inference problem. An observed data point $y$ is a sum of true underlying value $x$ ...
Anonymously lost student's user avatar
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Bayesian Learning: Finding the variance of signal

Suppose $x_i \sim N(10,4)$ - ie, the distribution is known. There is a noisy signal $s_i \sim N(x_i, \sigma_e^2)$ and I want to estimate $\sigma_e$. I see some pairs ($s_i, x_i$) but they are not '...
user20380762's user avatar
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1 answer
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MAP estimation for conditional probability

I'm studying bayesian estimation of model parameters and i noticed in several ML books (Deep Learning Goodfellow, ML a probabilistic perspective K. Murphy) that they used the bayesian rule in the ...
Something Faceless's user avatar
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Finding PDFs of conditional probability

$Y$ is a probability variable with only $0$ and $1$ as outcomes. $$ P(Y = 0) = P(Y = 1) = \dfrac{1}{2} $$ $f_{X|Y}(x|y)$ means the conditional probability function based on $Y$. $$ Y = 0, X \sim N(...
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Is there a name/reference for this dynamic process?

I'm just curious about the following dynamic process: $$ x_{t+1} = x_t\frac{y_t + \varepsilon_t}{y_t + x_t} $$ $$ y_{t+1} = y_t + \varepsilon_t $$ Is there a name for this? I'm trying to find ...
Jason Eliot's user avatar
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Posterior Probabilities of Competing Univariate Linear Regression Models

Assume there are two potential univariate linear regression models $M1$ and $M2$, both of which have a prior probability of $0.5$. Under $M1$, $Y=\alpha + \beta X_1 + \epsilon$, while under $M2$,$Y=\...
user509037's user avatar
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Exploring Likelihood Representation in Conditional Probability: Seeking Insights for Estimating $P[Y=y \mid X=x]$ in a Temperature Control System

Consider an information source which produces the signals 1 and 0 with unknown probabilities. The output of the source is denoted by the discrete variable Y. Y=1 implies that the temperature of a ...
Eduardo's user avatar
2 votes
0 answers
42 views

How could I write the following sum in terms of expectation?

The following is from Bergemann and Morris (2016) Suppose that $I$ is a finite set of players, where $i= 1,2,\dots, I$ and $i$ refers to the typical player. Let $\Theta$ be a finite set of states ...
Oliver Queen's user avatar
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Why does $Y'=\Theta+(W/3)$ have the same estimation and MSE as $Y=3\Theta+W$?

This is from MIT's 6.431x. For the model $X=\Theta+W$, and under the usual independence and normality assumptions for $\Theta$ and $W$, the mean squared error (MSE) of the LMS estimator is $$\frac{1}{...
Constantly confused's user avatar
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german tank problem — frequentist answer derivation

I have a question on this famous problem called the German tank problem. Assuming tanks are assigned sequential serial numbers starting with 1, suppose that four tanks are captured and that they have ...
APerson's user avatar
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1 answer
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german tank problem confusion — bayesian vs frequentist thinking

I'm having trouble understanding this famous problem known as the German tank problem. The problem goes as follows: Assuming tanks are assigned sequential serial numbers starting with 1, suppose that ...
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Likelihood calculation for Naive Bayes classifier

I am reading the Generative models for discrete data chapter in Kevin P Murphy's book(Machine Learning: A Probabilistic Perspective) Here for calculating the MLE of naive Bayes (pg no: 83) the ...
Abishek0398's user avatar
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Probability of a dice being fair/biased given certain rolls

I'm a philosophy student that has had to teach himself probabilities in order to get into formal epistemology. I have never taken a statistics/probabilities course, so I may be missing something very ...
Franco Menares Paredes's user avatar
2 votes
1 answer
84 views

Prove posterior mean is positive if and only if signal is positive, assuming zero prior mean [closed]

Suppose that: $\Delta \sim G$, where $G$ is a distribution that is symmetric about the origin I get a normally-distributed signal: $\hat{\delta} \: |\Delta, \tau^2 \sim N(\Delta, \tau^2)$ How can I ...
ryankessler's user avatar
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How do you infer the model of a car based on prior information?

Sorry if this does not quite make sense as I am still wrapping my head around it as well. Suppose I have j car models (i.e. different brands, builds etc.) such that $\textbf{m} = {m_1, m_2, . . . , ...
user1352118's user avatar
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Confusion with implementation of PDE constrained Bayesian Inverse Problem

Consider a PDE, $$\partial_t u -a \nabla u - ru (1-u) = 0$$ at a given snapshot in time. The inverse problem is to find the diffusion coefficient $a \in L^{\infty}$ from a noisy measurement $$Y = \Phi(...
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