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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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3 views

Why this boolean is in this bayes classifier?

I'm studying GANs 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 line (Xk = X[Y == k]) for the ...
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1answer
18 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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33 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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0answers
30 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
39 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 ...
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1answer
32 views

Parallelizing BMA in R

I'm estimating some models using Bayesian Model Averaging. I want to paralelize the process, so I try: library(BMA) library(parallel) no_cores <- detectCores() - 1 cl <- makeCluster(no_cores) ...
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0answers
7 views

Are there kernel functions available for categorical variables where matches between different variables would also raise the similarity?

For my master thesis I have to apply bayesian optimization on the development of modular endolysins. This endolysin consists of 3 building blocks that are linked together (variables). Each of these ...
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0answers
17 views

How to code bayesian inference(prior : jeffrey) using mcmc

I want to bayesian inference, prior is jeffrey's prior. f(x) is 1/(1+exp(a*x+b) . library(e1071) library(caret) library(tsne) library(plotly) data(iris) sigmoid <- function(param, x){ 1/(1+exp(...
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1answer
44 views

Compute the posterior probability given a Bernoulli distributed likelihood

In a coin flip, we would like to compute p(theta|Data), where theta is the underlying parameter. The prior follows a beta distribution with parameters a and b. The likelihood follows a Bernoulli ...
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1answer
22 views

Python Pyfolio PYMC3 ValueError

I've been running into this problem with pyfolio where I just want to try out the example their github has here: https://quantopian.github.io/pyfolio/notebooks/bayesian/ the program runs through ...
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35 views

the condition has length > 1 and only the first element will be used “ if else” [closed]

I wrote a code for metropolis hasting for random effects part. It is updated for random effects if I use ifelse function. But it is update same number both random intercept and random slope. If I use ...
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0answers
11 views

multivariate gaussian process covariance matrix dimension

I am wondering if I have N training data points and M test points, what will be the dimension of a univariate gaussian process covariance matrix? (for K,K* and K**); what will be the change of matrix ...
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1answer
50 views

For tensorflow_probability layers, what is the “losses” attribute?

TensorFlow probability layers (eg DenseFlipout) have a "losses" method which gets the "losses associated with this layer." Can someone explain what these losses are? Edit: after browsing the Flipout ...
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0answers
21 views

How to test model comparison using pre-specified value in R?

I want to conduct linear mixed effect model to my dataset. I want to use the maximum likelihood estimation to compare which model (which has lists of pre-sepcified values)best accounts for the data. ...
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11 views

Classifier4J Product Classification

I want to classify the name of products to the few categories like: VEGAN VEGETARIAN OMNIVORE etc. I found a good approach to do it with Classifier4J's BayesianClassifer. I tried to write a ...
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0answers
23 views

Compute posterior expected loss for choosing B over A [migrated]

The bayesAB package in r computes the posterior expected loss for choosing B over A when running the following commands: library(bayesAB) test <- bayesTest(treatment, control, distribution = "...
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1answer
33 views

Compute the Bayes factor of an A/B test dataset in r

I am trying to compute the Bayes factor of an A/B test dataset that can be found here. However, I end up with a NaN because the beta coefficient evaluates to zero. In calculating the likelihoods, I am ...
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0answers
12 views

Sorting By User Ratings - Overlapping Wilson Confidence Intervals [migrated]

I'm working on a personal project to rank user ratings on a 5 star scale and have implemented Evan Miller's often-referenced Wilson Score Interval calculation with the help of this comment. My data ...
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0answers
18 views

Find the best average rating for a rating distribution taking number of users into account?

I'm making a recommendation system where I have to recommend top 20 movies based on ratings taking number of views into account. (Dataset contains 1M+ records). Assumption is that all the viewers ...
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1answer
49 views

Not all points are within the bounds of the space error in Scikit-Optimize

I am attempting to do a hyper-parameter optimization task on a LSTM model (purly Tensorflow) using the scikit optimize package. I am using the Bayesian optimization method using Gaussian Processes (...
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0answers
25 views

Which aquasition function to use for gp_minimize in Scikit-Optimize?

I am trying to perform a hyper-parameter optimization task on a LSTM (purely Tensorflow) using the Scikit-Optimize package. I am not familiar with Bayesian optimization or Bayesian functions. This ...
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0answers
27 views

TypeError: Key-value pair in data does not have same shape: (?,), (?, 1)

i would like to implement a bayesien convolution neural network BCNN , but i get an error, this is my code def conv2d(self,x, W, stride, pad='VALID'): return tf.nn.conv2d(x, W, strides=[1, ...
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1answer
26 views

Having trouble with Bayesian Inference model - JAGS with R

I've been trying to reproduce the results of the following paper using R and JAGS with no success. I can get the model to run, but the results shown are consistently different. Link for the paper: ...
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2answers
54 views

How does MCMC help bayesian inference?

Literature says that the metropolis-hasting algorithm in MCMC is one of the most important algorithms developed last century and is revolutional. Literature also says that it is such development in ...
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302 views

How to incorporate weights into the likelihood of a WinBUGS model

I want to incorporate weights into the likelihood of a WINBUGS model to do what brms does with weights. The usual BUGS approaches to accomplish that for dnorm and dpois are not working for dbin. ...
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1answer
31 views

PyMC3 is much slower than PyMC in Metropolis sampling

I am trying to compare the sampling speed between PyMC and PyMC3. PyMC: p1 = pymc.Normal('p1', 10, 0.5) p2 = pymc.Gamma('p2', 11, 5) p3 = pymc.Normal('p3', p1, p2) model = pymc.Model([p1, p2, p3]) ...
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0answers
36 views

Bayesian ARIMA model in Python

In reaction to Sorry ARIMA, but I'm going Bayesian I was searching the Internet for a while but could not find any material regarding Bayesian ARIMA models in Python. Do you have any experience with ...
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0answers
16 views

brms - how to deal with missing contrast (one level is to ignore)

I am trying to use the brms package to study changes in parasitisme rate in four butterfly species between 3 conditions. All species but one were tested in each condition and there come my problem. ...
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1answer
61 views

How to calculate 95% confidence intervals using bayesboot()

I need help to calculate bootstrap-based credible intervals of the quantity qtt.ci from my regression coef.def. So far my attempts have resulted in: Error in quantile.default(s, c(0.025, 0.25, 0.5,...
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0answers
26 views

Frequentist properties of Bayesian posterior probabilities under cut-off or classification rules

Consider a two-group randomized control trial for a new hypertension drug with a single primary metric of blood pressure. Suppose we obtain the estimated treatment effect (viz,, mean difference ...
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1answer
21 views

Bayesian Gamma regression, what is the correct link function?

I'm trying to do a bayesian gamma regression with stan. I know the correct link function is the inverse canonical link, but if i dont use a log link parameters can be negative, and enter in a gamma ...
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22 views

Is it possible to save checkpoints in bayesopt in Matlab?

In long training cases it is usefull to save intermediate results of training. Is it possible to do this with bayesopt in Matlab? Or may be it is unneeded and one can just save latest best found ...
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2answers
51 views

With two deep learning models, how do I perform Bayesian Model Averaging for better prediction on a test set in Python? [closed]

Given two deep learning models that can predict on a test set, what I want to do is use BMA (Bayesian Model Averaging) to average the models to better predict? What exactly is the procedure for this? ...
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1answer
15 views

“mean of multivariate normal Y[1,1] must have the same number of components as Y[1,1]” - Error in WinBUGS

How to deal with compilation error which says: "mean of multivariate normal Y[1,1] must have the same number of components as Y[1,1]"? Here are my code and data in WinBugs: model{ for (i in 1:10){ ...
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0answers
31 views

How to pass parameters and set bounds using BayesianOptimization in Python?

Folks! How can I pass extra parameters (not going to be optimized) to the BayesianOptimization module? Also, how can I set the bounds on a vector? This is the module: https://github.com/fmfn/...
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1answer
82 views

Highest Density Interval (HDI) for Posterior Distribution Pystan

I am seeing that in Pystan, an HDI function can be used to provide a 95% credible interval surrounding the posterior distribution. However, they say it will only work for unimodal distributions. If my ...
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1answer
41 views

Bayesian Linear Regression with PyMC3 and a large dataset - bracket nesting level exceeded maximum and slow performance

I would like to use a Bayesian multivariate linear regression to estimate the strength of players in team sports (e.g. ice hockey, basketball or soccer). For that purpose, I create a matrix, X, ...
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1answer
100 views

Multi Threading in C++ Windows

I am using the pystan module in Windows where multithreading is not supported on Windows in the module. The pystan module is partially written in C++ and since I am trying to decrease the run time of ...
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1answer
14 views

Why does Rjags throws “Unknown variable mu.fine”? Rjags error

I'm currently trying to develop a model in JAGS, but I unfortunately keep getting the following error: Error in jags.model("ref_model.txt", data = ref.data.jags, inits = inits3, : RUNTIME ERROR: ...
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0answers
21 views

How to subset rJAGS MCMC posterior distributions by iterating column names in R?

Here is a snapshot of my MCMC Samples: while it is intuitive to subset by column, in the form of samples[,1:15], obviously I would like to shift from hard coding the column numbers to formulaic ...
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1answer
46 views

R fails to recognize variable, not sure why

I am currently using R studio, and downloaded the 'brms' package, for those who are familiar with it. I wanted to create a code which loaded a data set, ran a poisson transformation on it, and coded ...
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0answers
21 views

Weka: why getMargin returns all zeros?

I am using Weka Java API. I trained a Bayesnet on an Instances object (data set) data. /** * Initialization */ Instances data = ...; BayesNet bn = new EditableBayesNet(data); SearchAlgorithm ...
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1answer
51 views

Ordered Probit estimation in Stan

I'm trying to replicate the ordered probit JAGS model in John Kruschke's "Doing Bayesian Analysis" (p. 676) in Stan: JAGS model: model { for ( i in 1:Ntotal ) { y[i] ~ dcat( pr[i,1:...
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1answer
33 views

How to extract stan code from rstanarm object

Is there a possibility to extract the stan code used for the MCMC sampling in rstanarm? I would like to compare my own parametrisation of a model and prior choices to the one used in rstanarm.
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1answer
84 views

Weka API: How to obtain a joint probability, e.g., Pr(A=x, B=y), from a BayesNet object?

I am using Weka Java API. I trained a Bayesnet on an Instances object (data set) with class (label) unspecified. /** * Initialization */ Instances data = ...; BayesNet bn = new EditableBayesNet(...
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0answers
32 views

Interpreting the result of a Bayesian Structural Times Series model

A bit of context: I am reading a study called "Exploring the determinants of Bitcoin Price". In this research paper google search trends across different countries over time are used, in part, to ...
2
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1answer
39 views

trouble getting started with simple pymc3 example

I am new to using the PyMC3 package and am just trying to implement an example from a course on measurement uncertainty that I’m taking. (Note this is an optional employee education course through ...
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0answers
27 views

Prior predictive distribution

How to generate samples form prior predictive distribution for simple regression models? it is straightforward to generate samples for a binomial distribution with a beta prior, but in regression ...
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1answer
30 views

Should “First Step” example of GPyOpt find minimum?

"First Step" page from GPyOpt shows pretty image, which looks like a minimum, found by code above Unfortunately, when I run the very same code, I get or i.e. vertical line very rarely goes to ...
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1answer
17 views

Error in rstanarm with beta regression using stan_glmer

After fitting a stan_glmer() or stan_glm() functions with mcgv::betar as a family, I get an error when I try to call posterior_predict on it. R says: Error in exp(eta) : non-numeric argument to ...