Questions tagged [bayesian]

Bayesian (after Thomas Bayes) refers to methods in probability and statistics that involve quantifying uncertainty about parameter or latent variable estimates by incorporating both prior and observed information. Bayesian modeling, inference, optimization, and model comparison techniques are on topic. A programming element is expected; theoretical/methodological questions should go to https://stats.stackexchange.com.

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BLOG Language results off by a small fraction

I am trying out the Bayesian-Logic language using the following example. 1% of women have breast cancer (and therefore 99% do not). 80% of mammograms detect breast cancer when it is there (and ...
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34 views

Beta-binomial regression in Python [on hold]

I'm trying to run a beta-binomial regression in Python but am not sure what package to use. There seem to be a few that will fit a simple BB distribution using MLE but I can't find anything that will ...
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How to calculate the probability of occurrences in Python?

I am working with three simple datasets and for reproducibility reasons, I am sharing the dataset here. To make it clear of what I am doing - from column 2, I am reading the current row and compare ...
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16 views

Dirichlet parameters don't update in JAGS

I am trying to run a hierarchical Dirichlet model in JAGS but I have no update and must do something wrong. I try to approximate it with the gamma distribution: #Creating some data set.seed(555) cat1=...
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12 views

Scikit-learn: GMM MAP adaption

Is there a way to adapt a UBM-GMM using MAP/Bayesian adaption? I like the implementation of the GMM class but I cannot find a possibility to adapt a trained GMM.
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22 views

Extracting Predictions from Bayesian Random Effects Model (JAGS)

I'm new to Bayesian, and I'm trying to extract predictions and credible intervals for graphing purposes and can't quite figure out how to code it. Ideally, I'd like both an overall prediction (such as ...
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18 views

Regression Non-Normal distribution [migrated]

I'm trying to make regression models for this sample data. And distribution is this: The net hourly electrical energy output (EP) is the response variable, however, it is not normally distributed. ...
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10 views

Incorporating sample-level covariates into eDNAoccupancy occModel

I'm using the R package eDNAoccupancy to develop a Bayesian Hierarchical Model with three levels but I'm struggling to find examples using both site-level and sample-level covariates (only references ...
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21 views

BIC score for Gaussian Mixture Model [migrated]

I'm not sure how to compute a BIC score for multiple classes. For exmaple , I have a supervised problem with 3 classes.I fit 3 gaussian using MLE. Then, if I want to compute BIC score: I have to ...
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15 views

Convergence diagnostic with Gelman-Rubin PSRF: R coda package vs Runjags

I run Bayesian models with Runjags and then convert the output in MCMC.list with the coda package. I check convergence with the Gelman-Rubin diagnostic (univariate). Sometimes, the PSRF is large ...
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1answer
76 views

How do I implement maximum likelihood estimation type 2?

I am trying to implement an empirical bayesian ML-II(Maximum likelihood estimation Type II)method for estimating prior distribution parameters from historical data Where: π(θ) is an expression for ...
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1answer
35 views

Code for Basic Hierarchical Bayesian Analysis

I have this code written in winBUGS: n <- 100 x1 <- rbinom(n,1,.7) x2 <- rbinom(n,1,.5) sum(x1) sum(x2) model{ x1 ~ dbin(p1, n) x2 ~ dbin(p2, n) p1 ~ dbeta(a1, b1) p2 ~ dbeta(a2,b2) ...
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1answer
38 views

Mixture prior not working in JAGS, only when likelihood term included

The code at the bottom will replicate the problem, just copy and paste it into R. What I want is for the mean and precision to be (-100, 100) 30% of the time, and (200, 1000) for 70% of the time. ...
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Do I use Bayes Networks for pattern-recognition, for training or for classification?

I am doing a project in Artificial Intelligence and I am a little confused with the concept of Bayesian Networks when developing an Artificial Intelligence system. I know it is pretty useful when ...
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19 views

In R, for the bayesian network using bnlearn, calculated probabilities must passed to the next node or not?

I am trying to define my enquiry. Maybe my words are wrong. Sorry for any misunderstanding. The four probabilities in cptD are refering to the prediction of "D" events from "C" events. e.g. "C" ...
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33 views

Dimension mismatch when initalizing an array (JAGS)

Wondering if any of you know why JAGS would tell me there was a dimension mismatch with my initial values here. I am attempting to fit a spatially explicit capture-recapture model in which I ...
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37 views

Gibbs sampler for a multilevel model with no predictors in R [migrated]

I'm working on multilevel models and want to know how they are estimated in R. For that purpose I'm reading amongst other things "Data Analysis Using Regression and Multilevel/Hierarchical Models" by ...
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39 views

Compare bayesian vs. frequentist regressor in Python. Finding best scores / ways

I am working on a regressor to predict a target variable in a dataset with over 100 features. Three different regressors are defined and fit in order to compare their performance using R^2 score and ...
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21 views

Is there a reasonable way to obtain a test statistic for comparing Bayesian (multivariate) regression coefficients? [migrated]

I'm comparing the relative weights of features in predicting an effect, with the point that one is "significantly" higher than other ones. However, I'm not sure how solid it is to perform frequentist ...
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15 views

P(y|x1,x2) * P(x1)* p(x2) =P(x1|y) * p(x2 | y) * P(y)

when I read a paper A Trust and Reputation Model Based on Bayesian Network for Web Servicese, I can't understand one equation as follows. I think it may be related to PGM. x1 and x2 may be conditional ...
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15 views

Bayesian Network Key Benefit

I have some trouble understanding the benefits of Bayesian networks 100%. Am I correct that the key benefit of the network is, that one does not need to use chain rule of probability in order to ...
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19 views

How do I get the value (from previous data) to be used as rscale (in new data) in the BayesFactor package?

If I have variables var1a and var2a in first experiment, I want to get the posterior from these data to be used with the BayesFactor package as rscale (prior) for a second experiment with similar ...
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28 views

Pyro: Simple inverse graphics example using SVI not working

I'm new to pyro and trying to implement a simple inverse graphics problem involving estimating the coordinates of the points of a triangle rendered on a black & white 32x32 image. So I defined a ...
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31 views

Errors while using ABC_mcmc function:

I am trying to use the ABC_mcmc function over 4 random values given in the ParPrior. I get the error: Error in if (dist_simul < dist_max) { : missing value where TRUE/FALSE needed X&...
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1answer
53 views

How to build a Bayesian simulation model for flipping coin three times

Imagine we tossed a biased coin 8 times (we don’t know how biased it is), and we recorded 5 heads (H) to 3 tails (T) so far. What is the probability of that the next 3 tosses will all be tails? In ...
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31 views

CRAN package with Bayesian logistic regression via Polya-Gamma scheme

I am maintaining a package that uses BayesLogit for Bayesian Logistic regression using the Polya-Gamma latent variable technique and return samples from a Markov Chain-Monte Carlo (MCMC). BayesLogit ...
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1answer
28 views

Causal Impact package: Calculate posterior tail-area probability from model estimates

I am currently using the CausalImpact package for some research and in this context I need to know and be able to explain, how the posterior tail-area probability is calculated in order to reproduce ...
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21 views

Bayes factor for intercept only mixed logistic regression model vs. null model

I would like to compute a Bayes factor for an intercept only mixed logistic regression model vs. null model. This is for a study where each participant undergoes multiple trials with a success or ...
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31 views

How to use Bayesian Spam Filter in C# Outlook Add-in

I am a newbie when it comes to C# and Outlook add-ins, much less Bayesian Spam Filtering. I am creating an outlook add-in to detect spam emails or phishing emails for a homework assignment and I have ...
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30 views

Tensorflow-Probability. - Saving and restoring checkpoints for bayesian neural network

I'd been looking at the Tensorflow Probability library and trying to modify the example in bayesian network example, hoping that I can save checkpoints and then restore them. I first started trying to ...
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1answer
41 views

Extract and add to the data frame the values of sigma from a stan distributional linear model

Given the sample data sampleDT and the brms models brm.fit and brm.fit.distr below, I would like to: estimate, extract and add to the data frame the values of the standard deviations for each ...
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49 views

Difficulty Running Bayesian Gamma Regression with PyMC3

PyMC3 has excellent functionality for dealing with Bayesian regressions, so I've been trying to leverage that to run a Bayesian Gamma Regression using PyMC3 where the likelihood would be Gamma. From ...
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1answer
51 views

Extract and add to the data values of the probability density function based on a stan linear model

Given the sample data sampleDT and models lm.fit and brm.fit below, I would like to: estimate, extract and add to the data frame the values of the density function for a conditional normal ...
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1answer
52 views

ImportError: No module named pymc3

I am trying to run the following example: import pymc3 as pm from numpy import array, empty from numpy.random import randint __all__ = [ 'disasters_array', 'switchpoint', 'early_mean', ...
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27 views

Incorrect behavior with convolution in PyMC3/Theano

My initial work just trying to infer the appropriate scaling for a convolved signal and filter shows far too much noise and low scaling values. Inference of a scale parameter works with a linear ...
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1answer
67 views

pymc with observations on multiple variables

I'm using an example of linear regression from bayesian methods for hackers but having trouble expanding it to my usage. I have observations on a random variable, an assumed distribution on that ...
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17 views

How to correct multiple gaussian variables, given the stability analysis of their structure?

We have multiple Gaussian variables, which could be the locations of 2-d points. Suppose the 2-d points are measured independently. If we connect the adjacent points, then we will get a structure (...
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52 views

How to pass multiple columns of weights to brms

I would appreciate any help to specify my brms model below in order to be able to pass multiple columns of weights to the model as illustrated in the stan code below. I need to do this in brms or ...
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80 views

How to update a brmsfit object with a modified brms-generated stan model marginalizing over a distribution of weights

I would appreciate any help to update my brmsfit object with a modified brms-generated stan model because I want to pass various columns of weights to the likelihood in a way that brms does not ...
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14 views

How to use SLAM on other sensor other than camera?

I have a sensor that reads electromagnetic field strength from each position. And the field is stable and unique for each position. So the reading is simply a function of the position like this: ...
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54 views

PyMC3 hierarchical binomial model - divergences after tuning

I am trying to use pyMC3 to build a simple Bayesian hierarchical model for some experimental data. I have two datasets, but for one of the two the sampler does not converge and I cannot figure out a ...
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44 views

How to predict probability of each class by using naive bayes?

My question is about baysian theory. I want to predict probability of each class by naive bayes. In my case ,class is three (YES,NO,UNKNOWN), and prior probability is almost same (0.33,0.33.0.34). ...
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1answer
66 views

Explanation of plotting Bayesian prior and posterior distributions in one panel using R

Could someone explain with details how this code is working? require(lattice) ?lattice # essential reading data <- dgamma(seq(from=0.00001,to=0.01,by=0.00001),shape = .1, scale = .01) dfrm <...
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1answer
42 views

Bayesian Averaging in a Dataframe

I'm attempting to extract a series of Bayesian averages, based on a dataframe (by row). For example, say I have a series of (0 to 1) user ratings of candy bars, stored in a dataframe like so: ...
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Gibbs sampling with multinomial model not able to update a parameter

I am trying to implement an algorithm taken from Albert and Chib to sample with a latent multinomial distribution. The code seems to work until I try to update the covariance matrix: then the normal ...
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2answers
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Why this boolean is in this bayes classifier? (Python question?)

I'm studying GANs (and I'm a beginner in python) and I found this part of the code in the previous exercises that I don't understand. Concretely I don't understand why is used the boolean of the 9th ...
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1answer
39 views

plotting the posterior distribution of N given likelihood and prior

Given that the likelihood is Y|n~Binomial(n, theta) and the prior is n~Poisson(5), I tried to calculate the posterior distribution of sample size n with Y=0 and theta=0.2. My code is as follows: Y &...
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1answer
44 views

How can I add labels in a plot where I've used the function `plot` and `points`?

How can I add labels in a plot where I've used the function plot and points? I have the following code x<-seq(0,1,.01) alpha=2 beta=3 y<-dbeta(x,alpha,beta) plot(x,y,ylim=c(...
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40 views

Plots of prior and posterior distributions for different models

Consider the code shown below that displays graphically the prior and posterior of the Beta-Binomial Model using different parameters in the prior. colors = c("red","blue","green","orange","purple") ...
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1answer
41 views

How do I combine two electromagnetic readings to predict the position of a sensor?

I have an electromagnetic sensor and electromagnetic field emitter. The sensor will read power from the emitter. I want to predict the position of the sensor using the reading. Let me simplify the ...