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.

bayesian
Filter by
Sorted by
Tagged with
0 votes
0 answers
14 views

How to present findings from the mcmc_areas() and conditional_effects using r brms and bayesplot packages?

I am fairly new to bayesian statistics but have really fallen in love with what it can do and how it presents findings compared to frequentist statistics especially for categorical or ordinal datasets....
Andrew Caffrey's user avatar
-1 votes
0 answers
12 views

Bayesian estimation and traditional with matlab

Assume that you receive 1000 - 10,000 · (θ∗ - θ)2 SEK if you estimate θ with θ∗. If you guess exactly right, you receive 1000 SEK, while for example you only receive 375 SEK if θ = 0.5 and your guess ...
TobbeTrollkarl's user avatar
0 votes
0 answers
28 views

Why is my JAGS output starting from 1000 not 0?

I am currently trying to use JAGS to do Bayesian analysis on the LakeHuron dataset on R. I cant seem to understand why when I plot the traceplots my iterations start from 1000 and run to 2000 even ...
peely458's user avatar
-1 votes
0 answers
18 views

Which statistical approach is best for diverse conversion rates in an A/B test? [migrated]

Our software startup builds chat bots for ecommerce websites. The chatbot talks to customers that open the chat bot, and has the goal of closing the sale with the store’s main product. We have about ...
Rage's user avatar
  • 938
0 votes
0 answers
23 views

Using IPTW weights inside a Bayesian brm() cox model

I am dealing with some IPTW data to compare 2 different treatments efficacy on a proportional cox hazard model and I need to use IPTW weights in the model but I cannot figure out how to use it in brms ...
cccnrc's user avatar
  • 1,207
1 vote
1 answer
20 views

Simulation: Use of Integrate() in conjunction with custom functions

In attempting to create a simple simulation for psycholinguistics, I have encountered the following error: > expected_success_rate(170) > Error in if (height \>= threshold) { : the condition ...
John Hamm's user avatar
0 votes
0 answers
12 views

Difficulty Obtaining Bayesfactor in Baysian Correlation in R (correlationBF from BayesFactor)

I am relatively new to Bayesian Analyses and am currently working on computing a Bayesian correlation between two measures of affective polarization (val_pvv and ther_pvv) within my dataset (df_clean)....
JKas's user avatar
  • 1
0 votes
0 answers
22 views

number of valid columns for ChoiceModelR

I'm conducting tests to see how the ChoiceModelR package works for conjoint and MaxDiff analysis. I have created a test conjoint table as shown below: #Define the brands and their corresponding prices ...
Yeferson Gomez's user avatar
-2 votes
1 answer
45 views

How can be the `$ operator is invalid for atomic vectors` error solved?

I'm trying to perform a CAPM regression analysis with a Bayesian GLM. I have developed the R code below but when I try to fit the model for the posterior predictive checks posterior_intercept <- ...
José's user avatar
  • 201
0 votes
0 answers
15 views

How optuna narrow the search scope step by step, by using the bayesian method

How optuna narrow the search scope step by step, by using the bayesian method. Can you give a simple example ? My first instinct is like binary search. Just like, searching mid=(l+r)/2 after searching ...
BlueHeart0621's user avatar
0 votes
0 answers
27 views

how to compare the result from rstan with the result from survreg

I performed both a classic survival analysis with the function survreg() from the survival package, and a bayesian analysis with rstan. I believe that there is no significant difference between the ...
wallace's user avatar
  • 13
0 votes
0 answers
28 views

Adding a factor to a Bayesian Regression

) Hi everyone, I'm interested in conducting a Bayesian regression analysis. I have various continuous predictors, which I can add as "Covariates". However, I would also like to add Gender, ...
Imbar Mizrahi's user avatar
0 votes
0 answers
26 views

Bayesian Ridge Regression applied to binary classification. How to compare the closed-form solution with the MCMC solution?

I am working with Bayesian Ridge Regression applied to binary classification (I am using 2d-array -- n samples x r features). My questions are: How do I compare the closed-form solution with the MCMC ...
Emily's user avatar
  • 1
0 votes
0 answers
22 views

Solving question 8M9 from Bayesian Modeling and Computation in Python

In the GitHub repository you will find a data set of the distribution of citations of scientific papers. Use SMC-ABC to fit a g-and-k distribution to this dataset. Perform all the necessary steps to ...
Tony Jubran's user avatar
0 votes
0 answers
33 views

Random walk in rethinking::ulam

I have been trying to implement a random walk in rethinking::ulam. I'd be interested in how to do this in general after reading discussions such as this and this on how to build random walks in Stan ...
Luka Seamus Wright's user avatar
1 vote
1 answer
136 views

YOLOv8: Optimising for map with confidence and iou in prediction

I'm trying to figure out what the best conf and iou is for the model.pred. from ultralytics import YOLO import pandas as pd import numpy as np df= pd.DataFrame() # Load a model for i in range(1,105):...
HarriS's user avatar
  • 726
0 votes
0 answers
8 views

"This initial value does not corresponding to a stochastic node in WINBUGS

I have been trying this run this command to estimate two parameters pop.mean and tau. model { for( i in 1 : N ) { r[i] ~ dbin(p[i], n[i]) #Model b[i] ~ dnorm(mu, prec.tau2) logit(p[i]) &...
Lewis Melissa's user avatar
1 vote
1 answer
26 views

Translating WINBUGS model to JAGS model: possible directed cycle

I am practicing Bayesian and trying to translate WINBUGS models into JAGS in R. I have looked the JAGS manual and still haven't been able to work out this one, which gives error - Possible directed ...
user avatar
0 votes
0 answers
14 views

Show breakdates for R strucchange package

Why does the following code not show the breakpoint dates for strucchange R package, by using the time series directly from my Excel data file? Dummy Excel data at the bottom library(strucchange) df &...
sjedi's user avatar
  • 67
0 votes
0 answers
26 views

PyMC and arviz problem when trying to get summary statistics

I am building a Bayesian Regression model (see the code bellow) using the PyMC library. When trying to get summary statistics, trace plot and posterior plot I get an error. I am using Google Colab. ...
Philippe Robert's user avatar
0 votes
0 answers
27 views

How to do a Bayesian Repeated Measures ANOVA analysis with missing cells in R?

Suppose I am trying to measure people's Happiness depending on Time of Day (Morning/Afternoon/Evening) and Ice Cream Flavor (Chocolate/Strawberry/Vanilla) through a 1-7 scale. Participants are divided ...
justAnewbie's user avatar
0 votes
0 answers
46 views

How to fit sigmoidal curves and extract x at a specified value of y using Bayesian statistics?

I have a dataset of multiple trees with measurement values between 0 and 1 taken over a multiple days. It is known that when plotted as day (x) and value (y), each tree's measurements form a sigmoidal ...
LucyBM's user avatar
  • 27
1 vote
0 answers
51 views

Building the prior, likelihood, and posterior in Bayesian linear regression in R using mtcars, tidy method

I'm trying to understand something about how the prior distribution is combined with the likelihood to get the posterior distribution in Bayesian linear regression. For context, I used stan_glm() ...
hachiko's user avatar
  • 699
0 votes
0 answers
44 views

Fail when trying to sample model from PyMC

I'm learning about Bayesian modeling and PyMC, and I'm trying to build my first model. I have structured my model as follows: with pm.Model(coords={"obs_id": range(len(df))}) as model: p ...
Mateus Hora's user avatar
0 votes
0 answers
32 views

Trying to understand Bayes theory with direct application

I'm trying to apply Bayes theorem to a problem of my own so I can understand the methodology and how to set up the numbers. Essentially, I've got some data on four artists and the number of objects ...
elksie5000's user avatar
  • 7,498
0 votes
0 answers
10 views

Bayesian Dense Layer Scaling Issues

have been trying to put together a model with a Bayesian layer for a while now and can't seem to fix a shape mismatch; unsure what's going on and have been trying to debug for a couple hours now. Code ...
user23317824's user avatar
0 votes
0 answers
17 views

Why does Keras Bayesion Hypermodel puts None values in lists and cant create model?

I use this hypermodel: class MyHyperModel(HyperModel): def build(self, hp): input_shape = (2, None, 1) activation = "relu" arc = ...
Andreas's user avatar
0 votes
0 answers
50 views

Problem with rBayesianOptimization when used with the caret package

I have been trying to do the hyperparameter tuning of the caret models by using some libraries such as rBayesianOptimization. I started off with some simple models (such as svmLinear or glmnet) and it ...
Savo's user avatar
  • 3
0 votes
0 answers
34 views

How to extract inclusion probabilities of predictors from tfcausalimpact library

Basically, this Python library is written with tensorflow_probability library and should be an analog of R package CausalImpact, where posterior inclusion probabilities for each predictor are ...
iomedee's user avatar
  • 393
1 vote
0 answers
29 views

Estimating the posterior of a parameter vector which is "partially observed" in Numpyro

I have a parameter space that is M dimensional. My prior on the parameters is independent N(0,1) in that space. My observation space is a full rank linear transformation of that parameter space. If ...
mathmod's user avatar
  • 11
0 votes
0 answers
38 views

Ellipses do not align with data using SIBER R package

I'm using the SIBER package to analyze some data, and am following this tutorial, but it doesn't seem to be working with my data, and I'm not sure if it's a statistics, coding, or sample size problem (...
ElizaBeso000's user avatar
1 vote
0 answers
77 views

How do I simulate Bayes theorem in R to get a sense of uncertainty?

Okay, so Bayes theorem is p(A|B) = p(A) * P(B|A) * 1/p(B). I want to simulate p(A|B) using all the uncertainty surrounding p(A), p(B|A) and p(B). rbeta seems like a good choice. data: imagine I just ...
Derek DeBellis's user avatar
0 votes
0 answers
13 views

Cannot recreate best loss from Bayesian optimization

I am using Bayesian optimization to get best hyperparameters with the smallest loss. The code is: import xgboost as xgb from sklearn.metrics import mean_squared_error from hyperopt import STATUS_OK ...
Laurynas G's user avatar
0 votes
1 answer
259 views

How to apply a Blackjax sampler on my PyMC V5 model that uses a custom loglikelihood

I'm using PyMC v5 to perform Hamiltonian Monte Carlo in a model. I can make run the code below but it is very slow, even with multiple cores. I have a function applyMCMC for this purpose: # define a ...
foutou_10's user avatar
0 votes
0 answers
18 views

How to fix invalid index to scalar variable Using NLTK | Python

I am trying to run a NLP Sentiment Analysis using Naives Bayes algorithm. But I encounter the following error in the final stage, In [13]: --------------------------------------------------------------...
ChrisGila's user avatar
0 votes
0 answers
54 views

PYMC: how to define the product of two probability distributions?

I am trying to model the following problem with PYMC. Description of the model I have N devices that can be classified either as broken or working. The fraction of working devices is the unknown ...
Prallax's user avatar
  • 101
0 votes
1 answer
29 views

How can I parameterize lags parameters for each independent variable in my model in PyMC (5.10.0)?

I am new to PyMC and I am using the 5.10.0 version. I am running a simple Media Mix Model and I need to parameterize the individual lags between the independent(media activity) and the dependent(sales ...
adhok's user avatar
  • 401
0 votes
0 answers
17 views

How to get multiple points for next evaluations when performing Bayesian optimization using Dragonfly

I am using Bayesian optimization to optimize chemical reactions (in silico). I would like to use the parallelization option provided in Dragonfly (mentioned in their journal) to get multiple inputs ...
Aravind vel's user avatar
0 votes
0 answers
44 views

How can I effectively propagate parameter uncertainties from one hierarchical level to the next in Bayesian hierarchical modeling?

I am using PyMC, the probabilistic programming library of Python to implement a hierarchical bayesian model. Consider a two-level Bayesian hierarchical model. Level-1 has a parameter m1 and level-2 ...
ArKa's user avatar
  • 25
0 votes
1 answer
144 views

Getting a Bayesian NN to learn the noise within training data and thereby calculating prediction uncertainties

I am trying to train a bayesian NN for noisy time series prediction. I have problems in getting the model to learn the linear releationship in the data getting the model to learn the increasing noise ...
Usaint's user avatar
  • 43
0 votes
0 answers
10 views

Plotting sequential Bayes factor as participants are added

I'm analyzing EEG data by using a sequential Bayes factor approach, and would like to make a plot showing how the Bayes factor changes as participants are added. I started out using the code from this ...
sarahpc's user avatar
0 votes
0 answers
16 views

Creating a tensor of samples from posterior predictive based on test data shaped differently than training data

How do I allow a pymc model to sample from a posterior predictive when a matrix of training data has shape (66289, 1024) and a matrix of test data has shape (2054937, 1024)? In other words, how do I ...
Tom Lever's user avatar
  • 353
0 votes
0 answers
24 views

JAGS error: negative length vectors are not allowed

I am running a Bayesian model on a high performance computing cluster, and I keep running into the following error: "Negative length vectors are not allowed" It occurs whether I run the ...
hoganhaben's user avatar
0 votes
0 answers
16 views

Assertion failed Error when running a compiled GCTB software on Mac (file DenseCoeffsBase.h, line 410)

I am running GCTB (A tool for Genome-wide Complex Trait Bayesian analysis) software through the terminal. I have a Mac Apple M2 and had to compile the software from its source code (written in C++). ...
Canada_new's user avatar
2 votes
1 answer
195 views

How does `ggdist::stat_halfeye()` scale posterior predictive density

My goal is to calculate a 95% prediction interval using a Bayesian zero-inflated beta model in R. I have had no issues doing so but when I plotted the posterior predictive density using stat_halfeye() ...
Stefan's user avatar
  • 845
0 votes
0 answers
59 views

Plotting predicted posterior distribution of a binomial model

I was wondering if anyone had any experience with plotting predictions of a multivariate binomial model with brms? I will only provide the code for one response variable below. All I get is this ...
KellyForrester's user avatar
0 votes
0 answers
32 views

irt hybrid model predict latent estimate using bayesian method

I'm having some problem about irt prediction model. When i use irt hybrid model, it cannot predict the latent value even it has successfully converge during the irt model processed. It contain binary ...
梁聖宇's user avatar
0 votes
0 answers
16 views

Accounting for parameter variance during bayesian meta analysis

I am performing a bayesian meta-analysis and have struggled to properly account for variance of an independent variable. In my model, I'm trying to understand how variation in X affects Y. ...
notExpertSorry2308's user avatar
0 votes
0 answers
19 views

Hierarchical bayesian interaction model specification using pymc3

I'm currently working on modeling a 2-level hierarchical Bayesian regression using pymc3 in Python. I've extensively searched for resources on Bayesian hierarchical regression, but most examples I ...
Sunghyun Bang's user avatar
0 votes
1 answer
71 views

How to plot raw data (geom_point()) on an axis with a distribution (stat_halfeye) in R

In this fictitious example, I have predicted distributions for grasshoppers by age in months, but want to add raw data. How does one do this when working with rvar data? I tried to convert my ...
KellyForrester's user avatar

1
2 3 4 5
37