Bayesian refers to methods in probability and statistics named after Thomas Bayes (ca. 1702–1761), in particular methods related to statistical inference

learn more… | top users | synonyms

1
vote
0answers
7 views

Softmax Regression (Multinomial Logistic) with PyMC3

I am trying to implement a logistic multinomial regression (AKA softmax regression). In this example I am trying to classify the iris dataset I have a problem specifying the model, I get an ...
1
vote
1answer
16 views

Variational inference in PyStan API?

I can't find any mentioning of variational inference in PyStan documentation, even though it has been added in Stan itself. Am I missing something, or is the Python API just not implementing it yet?
0
votes
1answer
23 views

Quantile of a vector in stan

I would like to use the quantile of a vector in stan but the function quantile doesn't seem to work. See the ** ** in the following example. data{ vector[10] y; vector[10] x; } parameters{ ...
0
votes
0answers
9 views

weibull survival model in winbugs

when we model weibull distribution for survival data like this: surt[i] ~ dweib(p,mut[i]) I(surt.cen[i],) log(mut[i])<-beta2[1]+beta2[2]*sex[i]+ beta2[3]*age[i] in order to ...
1
vote
0answers
25 views

How to compute log-predictive score in R

I am using Bayesian Model Averaging and Bayesian Lasso regression for prediction and I want to evaluate the accuracy of the density forecasts using predictive log-scores. I am using the bms package ...
-2
votes
0answers
17 views

What does spam probability 99 to 100% mean?

Does it mean that there is a 99 to 100% chance that the emails we send will get sent to spam filters? I just sent an email from our website to a 'spam checker' site. I had no idea how complicated ...
1
vote
1answer
34 views

JAGS Random Effects Model Prediction

I'm trying to model a bayesian regression using an index as response (D47), temperature as predictor (Temp) and considering the random effects of a discrete variable (Material). I've found really good ...
0
votes
0answers
7 views

Prior that incentives dissimilarity of 2 parameters

I have some binary data. I have a proposed partition of this data into partitions 1 and 2. I want to test whether the data in models 1 and 2 were generated by two Bernoullis such that their ...
0
votes
1answer
17 views

Using naive-bayes for detecting spam

I am implementing a naive bayes spam detector which features are words and I am not sure if I understand the algorithm correctly yet. This I how I am trying to implement the algorithm: In the ...
0
votes
1answer
16 views

How to test the convergence in bugs model?

I want to explain the convergence in a bugs model with the command plot(). An example of the output is in the follow figure I don't sure that I can read this output well, thanks to everyone :)
0
votes
1answer
47 views

How to add a spline to rjags model

I am having difficulty finding information in fitting splines using rjags (my motivation is to try to recreate a glm in jags to impute missing dependent values). Anyhow I can find very little info on ...
2
votes
1answer
45 views

Cauchy prior in JAGS

I'm building a multi-level Bayesian model using rJAGS and I would like to specify a Cauchy prior for several of my parameters. Is there a way to do this in JAGS, or do I need to switch to STAN? My ...
1
vote
0answers
58 views

Estimation mean and variance of truncated normal distribution with rjags

I would like to estimate the population mean and standard deviation of a normal distribution which is truncated at a particular value. More specific, I want to get these estimates of the untruncated ...
0
votes
1answer
26 views

modifying the family parameter in ggmcmc plots

I am using BUGS software through R for doing bayesian analysis and i utilize ggmcmc package for bayesian inference. In my recent example i have a whole matrix b of parameters under monitor, with ...
-3
votes
0answers
63 views

How to do model-based clustering using Bayesian estimation in R

I'm doing model-based clustering in R, and for certain reasons, I'm required to try both maximum likelihood estimation and Bayesian estimation to find the model parameters. While I can use Mclust for ...
0
votes
0answers
6 views

Bayesian categorical-logistic model in R2OpenBUGS

I'm trying to fit a categorical-logistic model using the painters dataset contained in the MASS library. I divided the dataset in two parts, so i can predict in the future the values of School ...
0
votes
0answers
13 views

Bayesian programming of Brandeis dice with PyMC

I am trying to code an MCMC with PyMC that reproduces the analytic results by Uffink about the Brandeis dice. The problem is the following: given a dice rolled N times, we know its average value. If ...
2
votes
0answers
25 views

Bayesian categorical-logistic model in R2OpenBUGS

I'm trying to fit a categorical-logistic model using the painters dataset contained in the MASS library. I divided the dataset in two parts, so i can predict in the future the values of School ...
0
votes
0answers
20 views

Find Useful Data sets for Symptom/Disease Mappings

As my final project i'm going to map diseases and symptoms(with probabilities, for a given particular disease how often does each symptom occur). I'm going to do this using Bayesian theorem by drawing ...
1
vote
1answer
36 views

Using Accord.Net's Naive Bayes, how do I store training?

Using Accord.Net's Naive Bayes, how do I store learning so I don't have to train the classifier again? I have a very large data set and I don't want to have to run the whole thing again when I spin ...
0
votes
0answers
6 views

R: Input Dimension Error (bayesm: `rmvpGibbs()`)

I am new to the bayesm package (and bayesian modeling generally). I have a use case which motivated the current effort: the need for a multivariate probit model that I can wrap in Python. The bayesm ...
-1
votes
1answer
22 views

i tried to install package from gethub but i get requirment parse error

pip install get+get://github.com/AllenDowney/ThinkBayes/blob/master/code/thinkbayes.py pip install get+https://github.com/AllenDowney/ThinkBayes/blob/master/code/thinkbayes.py i tried this in my ...
1
vote
1answer
33 views

What are the interval transforms in pymc3 for uniform distributions?

I've noticed that when using uniform distributions in pymc3, the sampler also scans over an _interval parameter as well unless a transform is specified for example: with fitModel6: normMu = ...
2
votes
0answers
11 views

failed dlmMLE results

I am trying to estimate the parameters for a local level dlm with some time series data. This is the code I am using, and it seems to "work", in the sense that it does not throw any warning/error: ...
1
vote
1answer
57 views

improper, flat priors in pymc3

I am "translating" selected models from the ARM book from Stan to pymc3 (I hope to post them on Github soon) and I have a question on "improper priors". I understand that Stan default is to use ...
0
votes
0answers
16 views

Posterior distribution mode on R problems

I am basically trying to get the Laplace function to output the variance mode etc, but for some reason I keep getting this output: Error in optim(mode, logpost, gr = NULL, ..., hessian = TRUE, ...
0
votes
0answers
12 views

How to detemine author attribution using unigrams in NLP

I have been following the problem of determining the author attribution i.e. given a set of composition written by a few authors, and given a work by an unknown author, we have to determine the most ...
3
votes
1answer
31 views

How to use Bayesian Change point library in python which is already there in R studio as bcp? [closed]

I need your help regarding this matter is there any similar library similar to bcp library in R in python. Or is there any method to import R library packages in to the python.
0
votes
0answers
11 views

Matbugs: Stochastic parameters for Wishart Distribution

I want to set up a hierarchical model in Winbugs, including a Gamma distributed hyperparameter for a covariance matrix which is Wishart distributed. However, the Winbugs14 manual (p.47) explains: ...
0
votes
0answers
5 views

King's Ecological inference

I have met a problem in running a package called ei which is used for ecological inference designed by Gary King and Margaret Roberts. I have entered the following commands. However, the program ...
0
votes
1answer
18 views

pymc3 SQLite backend, specify list of variables to track

I am fitting a hierarchical model where one variable has a shape>10K and the model requires 500+k samples to converge. I would like to use a persistent backend for trace, so that I can compare ...
2
votes
0answers
65 views

Bayesian error-in-variables (total least squares) model in R using MCMCglmm

I am fitting some Bayesian linear mixed models using the MCMCglmm package in R. My data includes predictors that are measured with error. I'd therefore like to build a model that takes this into ...
0
votes
0answers
34 views

Log-linear model in Jags

I'm trying to fit a log-linear model in JAGS. I'm using log for the y because negative values are impossible. I'm using a t-distribution to allow the heavy tails for the noise. The prior on the slope ...
1
vote
0answers
7 views

Result discrepency in PyMC implementations of the M&M

A PyMC solution to the M&M problem is shown in this link: http://dataorigami.net/blogs/napkin-folding/29036419-bayesian-m-m-problem-in-pymc-2 In an attempt to solve the problem in a slightly ...
2
votes
0answers
99 views

bayesian network learning and inference in R for continuous variables

How can I do bayesian structure learning and inference for continuous variables with R? I was using the 'bnlearn' package as follows: For structure learning using the Hill Climbing algorithm , I do ...
0
votes
1answer
26 views

Bayes spam filtering - count probability that word occurs in spam / ham

Let's say that I have two data sets - examples of spam messages and ham messages (for example 1000 spam messages and 800 ham messages). The word "free" occurs in 700 spam messages and in 200 ham ...
0
votes
0answers
12 views

Bayes spam filter - how to count the probability [duplicate]

I would like to ask for help with this task: I would like to create an easy Bayes Spam filter in Java, but I am not 100% sure, if I understand, how Bayesian filter works. Let's say that: I have two ...
0
votes
0answers
14 views

How to implement Bayesian inference using LSSVM Toolbox in Matlab?

I am trying to model the hysteresis curve of a capacitor using Bayesian inference. I have to use the LSSVM Toolbox givn in the link:http://www.esat.kuleuven.be/sista/lssvmlab/ I use the paper given in ...
1
vote
2answers
69 views

Dirichlet-Categorical conjugate prior model using OpenBUGS,R and the package R2OpenBUGS

At first, let's create some sample categorical data with 3 levels. y<-sample(c("A","B","C"),50,replace=TRUE) I'm trying to formulate a Bayesian statistical model in which the y variable follows ...
0
votes
0answers
25 views

Dirichlet-Categorical conjugate prior model using OpenBUGS,R and the package R2OpenBUGS

good job sustaining a community like this. At first, let's create some sample categorical data with 3 levels. my_data<-sample(c("A","B","C"),50,replace=TRUE) I'm trying to formulate a Bayesian ...
0
votes
1answer
14 views

predictions with Bayesian network

I am new with bayesian network, i have a project to create intelligent tutoring system with bayesian inference assessment. I want to know that can I make prediction for each student for his/her ...
0
votes
1answer
24 views

Bayesian inference in feature-based categorization

Here is my problem which I hope you can help me with: Lets say we live in a world where there are only two categories, where each has some features. The objects in this world are different ...
0
votes
1answer
42 views

JAGS AR(1) estimation without excluding unit root

I am using JAGS to run Bayesian analyses for ARMA models. My data is simulated data, so I know the results. So far, if I estimate (for example) a stationary AR(1) process, I get good results for the ...
2
votes
0answers
20 views

Calculating model evidence/marginals in Python

My question pertains to bayesian inference and how to numerically calculate model evidence given some data and a prior and a posterior distribution. Given conjugate priors, the wikipedia article ...
0
votes
2answers
41 views

Unexpected behaviour with DiscreteUniform in pymc when shifting interval

I am trying to simulate 100 tossing of a dice, where my data is the sum of all the tosses (kind of a Maximum Entropy principle of Jaynes' Brandeis dice). This was my first attempt to later approach a ...
1
vote
0answers
23 views

Simple Linear Regression with Repeated Measures using PyMC3

I'm trying to reproduce the example from John Kruschke's book "Doing Bayesian Data Analysis" (2nd edition). The example is from chapter 16 on simple linear regression with repeated measures. I think ...
4
votes
1answer
36 views

Having Trouble Normalizing Posterior Distribution in Python

I am coding the derivation of a Dirichlet-Multinomial posterior in a paper that I've read and I am having trouble getting the distribution to sum to 1. Here is the code in its unsimplified form: def ...
0
votes
0answers
25 views

Calculating Bayes Factors with a Cauchy prior for a different sample sizes

I am stuck trying to construct a "loop" (using Vectorize) for the calculation of Bayesian Factors using a Cauchy prior. First I looped through a sequence of t-statistics, this works fine and then I ...
1
vote
1answer
52 views

Conditional prior in PyMC3

I am trying to build a model in which the prior assigned to a distribution is contingent on a particular value, and that value is another variable that is sampled. For example, a student answering a ...
0
votes
0answers
14 views

Bayesian Network, conditional probability distribution

New to Bayesian network, my question is to how to use conditional probability distribution in each node with directed acyclic graph