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

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Is it possible to run multiple chains with JAGS on multiple cores (subdividing chains)

I’m wondering if it’s possible to subdivide 3 chains in JAGS on 5 or 6 cores, for example. Here is my code: library(parallel) # There is no progression bar using parallel ...
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28 views

Multilevel modelling in JAGS: Unable to resolve node

I am building a multilevel model in JAGS (JAGS version 3.4.0). I want to build varying slope-varying intercept model. I keep receiving an error message and I have no idea what is the problem and how ...
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108 views

PyMC3 Bayesian Linear Regression prediction with sklearn.datasets

I've been trying to implement Bayesian Linear Regression models using PyMC3 with REAL DATA (i.e. not from linear function + gaussian noise) from the datasets in sklearn.datasets. I chose the ...
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19 views

Are there any models for bayesian learning that can use a z-axis (using sklearn)?

So I've come up with catagories and the probabilities are fine, except, I also need to represent the order in which they fall to properly represent the data. Syntax | Order-in-which-they-occur | ...
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20 views

Superimpose posterior distribution on mean like cat's eye visualization from cumming

I personally like the cat's eye visualization of Cumming that superimposes a sampling distribution over a point estimate: I would also like to do this with the posterior distribution that is ...
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5 views

spatial.exp on WinBUGS

I really hope this is not a stupid question, but I am trying to simulate a very simple spatial Bayesian model and I keep getting some sort of "incopmatible copy" message on the WinBUGS window. I am ...
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19 views

“failed to create the sampler” error in Stan

I am trying to get RStan up and running with a simple model, but am getting errors that I do not find informative, even with verbose=TRUE set. The verbose output (including session information) is ...
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26 views

Installing 'mlirt' in R

I am trying to conduct a Bayesian multilevel IRT and the best software that I have found to do that is the 'mlirt' package in R. However, I am finding problems when installing it in the 3.1.3 version. ...
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22 views

Pymc size / indexing issue

I am trying to model Kruschke's "filtration-condensation experiment" with pymc 2.3.5. (numpy 1.10.1) Basicaly there are: 4 groups each group has 40 individuals each individual has 64 Bernoulli ...
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25 views

Extraction of correlation matrix, R, from BayesDCCgarch

I am currently experimenting with the bayesDCCgarch package and have been looking to extract bivariate conditional correlations from the estimation of the model. The output of the function only ...
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10 views

little variance in DIC across multiple MCMCglmms

I have a mixed model built in lme4. It looks like this: m1<- lmer(Y ~ X1 + X2 + ... + X7 + (1|id1)+ (1|id2) + (1|id3), data, REML=F) When I run dredge (MuMIn) and model ...
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37 views

stan programming for ETAS model

I am new in STAN. I am working on temporal ETAS model, a model used for modelling earthquakes.The intensity at earthquake occurrence time t[i] is modelled as- ...
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16 views

MCMCglmm gives very different results from lme4 - how to diagnose issue?

I am taking the plunge into Bayesian analysis for some new projects. I have some yes/no data, and three fixed effects and for the time being, I'm simply taking random intercepts (I will worry about ...
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12 views

How can I specify a prior in proc fmm using the Bayes statement?

I want to estimate a univariate Gaussian mixture model with two components using proc fmm. With respect to the Bayes statement, I am assuming a triangular distribution for one parameter. Does anybody ...
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2answers
41 views

How to insert probabilities into a matrix?

what would be a good program that could automate and fill out the matrix A? We have the col vector: col=c(1,1,2,3,4,5,10,7,7,3,1,5,3,7,6,3,4,2,1,1,2,2,6,4,8,8,9,1,3,2) col [1] 1 1 2 3 4 5 10 ...
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26 views

Stan code for Conjugate Poisson-gamma model (for a beginner)

I am new in stan. I started working with conjugate gamma-poisson hierarchical model in R. I created some data as follows: set.seed(123) #no. of individuals I=100 #matrix of parameter lambda ...
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6 views

Variable names in bayesX software?

I want to do Bayesian regression on my data for this using BayesX but getting error:ph,cl,so4,hardness,tds invalid variable names.Not getting how to solve the problem?
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31 views

Difference between Probabilistic kNN and Naive Bayes

I'm trying to modify an standard kNN algorithm to obtain the probability of belonging to a class instead of just the usual classification. I haven't found much information about Probabilistic kNN, but ...
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11 views

What are 'Low-level parameters' in bayesian analysis?

I'm reading Kruschke's book "Doing Bayesian Data Analysis" and on the page 245 it says: In typical hierarchical models, the estimates of low-level parameters are pulled closer together than they ...
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17 views

Scipy Stats rv_continuous without normalization constant

I want to draw random deviates from a distribution where I don't know the normalizing constant. The distribution is the conjugate prior of the gamma likelihood with unknown shape and scale=1. The pdf ...
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14 views

PyMC - Maximum Competence Reported for Stochastic is <= 0 for a custom created Stochastic

In my model, I defined a Stochastic "R" directly, as seen here: def R_logp(value, M, M_z, F, log_var): return pymc.normal_like(x=value, mu=forward_radius(M, M_z, F), tau=1/(log_var**2)) def ...
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37 views

Hierarchical Regression UScrime R/JAGS

I am putting together a model in JAGS to run code for a hierarchical regression of UScrime data (from the library(MASS) package. Crime rates being the response, with 15 predictors. I have a few bugs ...
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15 views

Plotting HPD contour from gridded poster probabilities

I am fairly new to r but have been told this is the best language to approach this kind of problem (usually I work in IDL/fortran). I am trying to plot the Highest Posterior Density region as a ...
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40 views

ggplot with posterior distribution plotted over geom_smooth

I'd like to recreate this plot from this blog post on Posterior predicted distribution for linear regression in JAGS) using ggplot? Knowing all the extras available for ggplot, what methods are ...
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Representing Parametric Survival Model in 'Counting Process' form in JAGS

The Problem I'm trying to build a survival-model in JAGS that allows for time-varying covariates. I'd like it to be a parametric model-- for example, assuming survival follows the Weibull ...
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13 views

Hierarchical Bayesian Model in OpenBUGS

I am trying to run a Bayesian Hierarchical model in OpenBUGS with a panel data. I have 6 individuals and 15 obs/individual. I have 4 independent variables. The program is saying that the model is ...
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1answer
18 views

Finding the shape and scale of a gamma distribution given home range

pasted below is supplemental material from an article. After finding home range values, the authors say, "gamma(13,10) covers this nicely". How did the authors find 13 and 10? # Moldenhauer and ...
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18 views

Bayesian optimization cost function

I think I have a good general understanding of Bayesian thinking, but so-so background in math and some difficulty with terminology (which seems to vary widely between academic specialties). My ...
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49 views

Inverse chi squared distribution - Python 2.7

Given data: Ten observations of income (14, 25, 45, 25, ...); mean = 3.5; posterior distribution follows an Inverse chi-squared distribution with: Asked for: Draw 100,000 samples of the posterior ...
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52 views

PYMC Water Demand Forecasting

I am working on making a water demand forecasting model that takes into account time and meteorological conditions. I am new to this and struggling to generate a forecast array. Ideally it would take ...
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21 views

WinBugs error Trap -undefined real result

I am writing a WinBugs code for the Bayesian Statistics question : Consider the following model that takes into account the fact that VIX (first variable) provides information for the variance of ...
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22 views

extreme bound analysis with bayesian

By the R package ExtremeBounds, logistic function can be specified as glm, however I would like to specify the logit regression as bayesglm in the extreme bound analysis. Because of potential linear ...
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14 views

Bayesian regression & heavy-tailed data

I am looking to use a Bayesian regression on a set of data where the dependent variable(s) follow a normal distribution, but the dependent variable is a heavy-tailed distribution (e.g., power-law). ...
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Bayesian multilevel model with R2WINBUGS

data <- list("N","J","K","pa","unit","hosp","tech","teach","beds","unitsur","we","expe", "full") inits1<-list(p0=0.1,tau1=0,tau2=0, beta =c(1,1,1,1,1,1,1,1)) ...
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38 views

How to overplot fit results for discrete values in pymc3?

I am completely new to pymc3, so please excuse the fact that this is likely trivial. I have a very simple model where I am predicting a binary response function. The model is almost a verbatim copy ...
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43 views

Analyzing Effect in a Bayesian Model (Rjags)

"Consider below the number of actuarial claims data for three groups of insurance policyholders, year: 1 2 3 4 5 Grp1: 9 7 6 13 12 Grp2: 6 4 2 8 10 Grp3: 8 8 3 4 9 Run R and Jags to apply the ...
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31 views

Calculating the combined spam probability percentage using Naive Bayesian in php

I'm currently developing a spam filter to detect forms used for phishing using the Bayesian spam filtering method http://en.wikipedia.org/wiki/Bayesian_spam_filtering. It will work by scanning the ...
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50 views

How to Implement “XOR” in Bayesian Networks?

In Graphical Models and Bayesian Networks, how do you implement XOR problem? I read bayesian network vs bayes classifier here: A Naive Bayes classifier is a simple model that describes particular ...
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11 views

“Adapting” is disabled for a WinBUGS model

I created a model in WinBUGS. But when clicking the Model->Update menu, I noticed that the adapting option is disabled. So the inference will include all MCMC samples from the very beginning. I ...
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36 views

predict DBN with bayes net toolbox

I am trying to predict with a Dynamic Bayesian Network using Bayesian Network Toolbox (BNT) in Matlab. My network looks like this: network structure where 11 is the outputnode of the first time slice ...
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32 views

Issue with PyMC Lamda function

I am experiencing memory issues while running MCMC sampling on a simple hierarchical model. Following is a brief description of my model (I have dumbed it down to prevent the model details from ...
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18 views

pymc: Dynamically restrict fit range

I have some data that need fitting. I know the functional form that the data should take, but only in some intermediary region of the data. I don't a priori know where this region begins and ends, so ...
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64 views

Heatmap of regression lines

Suppose I run a bayesian simple linear regression. I would like to visualise the results by plotting multiple regression lines based on the posterior distributions of a (intercept) and b (slope). I am ...
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89 views

Posterior probability with pymc

(This question was originally posted on stats.O. I moved it here because it does relate with pymc and more general matters within it: in fact the main aim is to have a better understanding of how pymc ...
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1answer
74 views

Query regarding Naive Bayes algorithm in package e1071 R

Below is the training dataset that I am using for Naive Bayes implementation in R(using e1071 package) where: X,Y,Z are the different classes and V1,V2,V3,V4,V5 are the attributes:- Class V1 V2 ...
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52 views

PyMC3 Gaussian Mixing Model

I've been following the Gaussian mixture model example for PyMC3 here: https://github.com/pymc-devs/pymc3/blob/master/pymc3/examples/gaussian_mixture_model.ipynb and have got it working nicely with an ...
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implementing categorical effects in OpenBUGS

I'm curently writing a model in a Bayesian framework (in OpenBUGS) that involves assessing the density of juvenile fish. I'm trying to model the effect of several categorical effect (i.e. the type of ...
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28 views

What is the definition of messages in Bayesian inference?

Recently, I began to study Bayesian network models. It is of much interest. But I have figured out that every text book or any other paper about Bayesian network models does not contain comprehensive ...
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68 views

Estimating Posterior in Python?

I'm new to Bayesian stats and I'm trying to estimate the posterior of a poisson (likelihood) and gamma distribution (prior) in Python. The parameter I'm trying to estimate is the lambda variable in ...
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RStan Segfault Error

I downloaded the package 'rstan' for doing bayesian work with R. And I'm getting this error *** caught segfault *** address 0x20, cause 'memory not mapped' How do I make rstan work?