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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Simple Python example of Bayesian inference on continuous variable

I'm trying to learn about Bayesian statistics and am having trouble writing a simple example. Can anyone give me guidance on how to do the following, or point me towards a tutorial that covers a ...
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PYMC3 Switchpoint Analysis

I'm attempting to locate a switchpoint and getting some extremely high values for my posteriors. Specifically lambda_1 and tau don't seem to make much sense. The dataset looks like this: I've been ...
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Need help w/ R code plotting error vs no. of samples in Markovian chain

I am new to R as well as Bayesian Statistics. I am going through the problem set in Chapter#12 of Students Guide to Bayesian Statistics (this link has problem as well as answer plot). In it Problem 12....
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credibility intervals for combination of parameters [closed]

I would like to know how to calculate the credibility interval (bayesian) for a combination of parameters. For example, I have the posteriors for x and y. But I would like the credibility interval for ...
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Measuring uncertainty using MC Dropout on pytorch

I am trying to implement Bayesian CNN using Mc Dropout on Pytorch, the main idea is that by applying dropout at test time and running over many forward passes , you get predictions from a variety of ...
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Applying Monte Carlo Dropout in CNN as Bayesian approximation

I am trying to implement Bayesian CNN using Mc Dropout on Pytorch, as I know we apply it during both the training and the test time, and we should multiply the dropout output by 1/(1-p) where p is the ...
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Import Error: Cannot import name 'statfunc' (pymc3 module already installed)

When i try to import pymc3 module on my Jupyter notebook using import pymc3 as pm i get the following error ```ImportError Traceback (most recent call last) <ipython-...
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24 views

MCMC Changepoint model in R

I want to run an MCMC linear Gaussian Multiple Changepoint model to detect changepoints for a time-series vector of continuous values. In doing so, I am thinking of using MCMCregressChange function, ...
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R post-hoc test brms

I have the following model: prior1 <- c( prior(normal(0, 50), class = b), prior(exponential(0.1), class = sd), prior(exponential(0.1), class = sigma)) BMvpa <- brm ( RT ~ 1 + GroupC*...
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PyMC3 - coal mining disaster example - questions re: adding a second mine

I'm playing around with PyMC3, trying to fit a modified version of the mining disaster switchpoint model in the PyMC3 documentation. Suppose you had two coal-mines (mine1 and mine2), each with similar ...
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PyMC3 Model Interpretation

I'm pretty new to PyMC3, so I've been experimenting with it a little bit, trying to learn how to use it. I wanted to try to model the "Euro Problem" from the book Think Bayes. To quickly ...
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accuracy is not increasing in classification images

I try to implement the classification of images with bayesian CNN using dropout. I have defined two classes: with dropout for the training phase without dropout for the test(Don’t drop out on testing?...
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Bayesian data analysis in SAS

I am working in SAS Proc MCMC option and found the following paper https://www.lexjansen.com/wuss/2012/65.pdf Is there any way to incorporate spline in SAS proc MCMC option? I used simulation data and ...
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Can ASHA be combined with Bayesian Optimisation?

ray tune's documentation doesn't really mention it, but from my understanding combining bayesian optimisation with a SHA algorithm requires specific algorithm crafting like in BOHB. Without mentioning ...
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Using bartCause package to predict uplift

I'm trying to use the bartCause package to build an uplift model in R. Unfortunately I have trouble to integrate the data frame in the right way - error message: $<-.data.frame`(`*tmp*`, "lift&...
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Bayesian LSTM param search - max evals vs epochs choice

I am performing a hyperparameter search using Bayesian Optimasation (with Hyperas) for LSTM network that performs regression prediction of future value basing it on a timeframe of n previous days (...
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Emcee with gaussian prior gives NaN

I've been using emcee to sampel my parameter, at first my prior were all uniform def logprior_BAO(theta): A, B, C, D, epsilon, rd = theta if A > 0 and B > 0 and C > 0 and D > 0 and epsilon ...
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Bayesian inference, Monte-Carlo, MCMC, Fisher formalism, Estimation methods

In the context of Forecast in Astrophysics, I try to grasp the differences between Sampler, MonteCarlo, Metropolis-Hasting method, MCMC method and Fisher formalism 1. Using Covariance matrix at each ...
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How do trouble-shoot the PyMC3 hanging when trying to run on multiple cores?

I'm not able to use multi-core processing on my Mac with Pymc3. I've read through forums on developer forums for PyMC3 but it seems like the issue I'm encountering is mostly with Windows. Basically, ...
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Two-way bayesian ANOVA with Jags

I'm trying to perform 2-way bayesian ANOVA with jags, but there is an error I can not understand. ## data set.seed(123) n <- 30 y <- log(rnorm(n, 3, 1)) x1 <- as.numeric(c(1, 2, 1, 2, 2, 1, ...
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How to calculate a Bayes estimator using Octave or MATLAB

I am reading a statistics textbook Introduction to Statistics for Engineers by Sheldon Ross, p.275 and trying to re-do its examples on paper and in Octave. I am not able to replicate many Bayes ...
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What is meant by weight cost in a CNN

In section 4.4 of the Practical Bayesian Optimization of Machine Learning Algorithms paper (https://papers.nips.cc/paper/4522-practical-bayesian-optimization-of-machine-learning-algorithms.pdf) they ...
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JAGS failure to converge

> gelman.plot(res) ******* Error: ******* Cannot compute Gelman & Rubin's diagnostic for any chain segments for variables Eh[1] Ev[1] Ih[1] Iv[1] Rh[1] This indicates convergence failure ...
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Is there a way to fix this problem in the code?

for i in range(103): # we will run 100 experiments of GP => 100 befief updates of the good region. existing_bayesian_optimizer = os.path.isfile(out_dir + "ev_file_RL_ANN") # ev_file ...
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How to code priors for a hurdle-lognormal() brms model?

I understand the prior concept in Bayesian, which is cool, but their turning into code is too hard. As much as I know, publishing without the priors isn't a good practice. I have quite large dataset, ...
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When is the features independent in order to use NB classifier?

I am working with classification models and as I am new to it I have a question. It is said that Naive Bayes performs well when features are independent of each other. How do I know if features in my ...
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How do I replicate the prediction function for a Bayesian model constructed using bic.glm?

I'm trying to replicate the prediction function from bic.glm in Excel. Here are some details: The R code that I used to construct the model and make the prediction is formula <- 'freq ~ vsa + vsl + ...
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Posterior probabilities from function bic.glm in R

I'm looking at the posterior probabilities output from the function "bic.glm" in R, and they only have 3 digits displayed. Moreover, when I try "options(digits = 16)", I STILL only ...
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Dynamic Bayesian Network for long term relations

Can Dynamic Bayesian Networks be used for modeling processes that depend on long term relationships? E.g. when variables of the process to predict on time t depend on values of the process on t-1, t-2,...
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171 views

PyMC3 and Arviz: Visualizing highest posterior density for multiple conditions using arviz plot_hpd

I am trying to visualize simple linear regression with highest posterior density (hpd) for multiple groups. However, I have a problem to apply hpd for each condition. Whenever I ran this code, I am ...
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what do the us, idh, idv stand for in the MCMCglmm in R

I am having hard time remembering the meaning of the us, idh, and idv functions in the MCMCglmm. I understand that these are the functions taking random variance-covariance structure into account, but ...
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Is there a way to use AIC and BIC to evaluate for models with combined multiple kernels?

Is there a way to use AIC and BIC to evaluate for models with combined multiple kernels? I created loops for generate models with combined multiple kernels, i optimzed them automaticly with scipy-...
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Questions about building a Bayesian network

Example: Suppose we choose the ordering M, J, A, B, E P(J | M) = P(J)? No P(A | J, M) = P(A | J)? P(A | J, M) = P(A)? No How do you know that P(A|J, M) = P(A) is the only condition that A depends on M?...
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How to model the variance covariance matrix for complex mixed effects formulas in Stan?

Consider the following formulas used for mixed effects modeling: SleepTime ~ 1 + WorkingHours + Tenure + (1 + WorkingHours | JobClass) + (-1 + Tenure | JobClass) SleepTime ~ 1 + WorkingHours + Tenure ...
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JAGS or Bugs logistic regression models with non-integer weights and Bernoulli likelihood

I would like to estimate the posterior distribution of the probability p[i] (probability of having the disease) with the logistic model below. The data are from a survey. How do I write the model so ...
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2answers
23 views

determine equal-tail credible interval

I have obtained the posterior density for part d: $2 theta^{-1}(1- theta)^{-1}$. How do I plot in R the distribution to find the l and u such that $F_{theta| x} (l) = 0.025$ and $F_{theta| x} (u) = 0....
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How to specify priors distributions for variable transformation parameters in rstanarm which are external to the model?

Suppose, the response y can be modeled by the following generic equation: y = a + b1*x1, where x1 = func(p,q,r) Standard functions provided by rstanarm allow to specify the prior distributions for the ...
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Negative variance in boral (Bayesian Ordination and Regression Analysis)

I am trying to examine species correlations using latent variable modeling, described by Hui 2015. Using the boral package in R, I followed Hui's code and applied it to my presence-absence data with ...
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1answer
36 views

Iterating over each Row of a large dataset R-Studio

Suppose I have a list of 1500000 states with given zip codes and I want to run my predictor Model (databas) on that list and get the predictions of Area, I did the same by the help of one gentleman ...
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Need explanation on an example in Book 'The BUGS book' page 256 - On Bayesian Survival Analysis with time-dependent covariates

Background There is an example provided in 'The BUGS book' on page 256 about modelling an AFT survival model under a Bayesian approach using time-dependent covariates. The photos below are a ...
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Time-varying covariates in Weibull AFT Bayesian Survival model in R using rjags package

It has been a while that I am trying to find a way in rjags to write a code for a Bayesian Weibull AFT Survival Analysis model with time-varying (time-dependent) covariates. The data I am working on ...
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14 views

Simulate time series given monthly priors and cumulative sum constrains

I want to simulate monthly time series, given following constrains: time series lies in feasibility region of linear program (or at least cumulative sum of time series lies in some range) ...
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1answer
53 views

Bayesian Modelling in R

I am trying to implement a bayesian model in R using bas package with setting up these values for my Model: databas <- bas.lm(at_areabuilding ~ ., data = dataCOMMA, method = "MCMC", prior = "ZS-...
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1answer
22 views

RJAGS compilation with categorical variable throws index out of range error

Background Trying to model volume of bikers in a rail trail which is less for a weekday as compared to a weekend. RailTrail from mosaicData contains data collected by the Pioneer Valley Planning ...
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1answer
30 views

How to solve conditional probability of Bayesian network

I have the following Bayesian network where I need to solve for Pr(J|C,A,V) According to the solutions, Pr(J|C,A,V) = 0.81, but I don't understand how this value was calculated. If possible, please ...
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BayesFusion GeNIe. Any way to view the method in calculating probabilities

Currently, I'm using GeNIe to calculate probability from a Bayes network https://download.bayesfusion.com/files.html?category=Academia However, is there any way to view how GeNIe calculates ...
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How to specify random coefficients priors in rstanarm?

Suppose I have a following formula for a mixed effects model: Performance ~ 1 + WorkingHours + Tenure + (1 + WorkingHours + Tenure || JobClass) then I can specify priors for fixed slopes and fixed ...
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64 views

How to create Bayesian data fusion in python?

I have been looking into data fusion methods and what caught my eyes is the idea of using Kalman filter which looks into data fusion data which looks into mean and variance of Gaussian distribution ...
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58 views

Running Bayes regression models to multiple groups of data all at once

I am currently working on understanding Bayes regression models using JAGS. I have a data frame that look something like #sample data frame group <- rep(1:3, each = 4) density <- rnorm(12, 1, 1)...
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71 views

Passing Two List to a Python function

I am trying to run python package pyabc(Approximate Bayesian Computation) for model selection between two list of values i.e model_1=[2,3,4,5] and model_2=[3,4,2,5]. The main function of pyabc is ...

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