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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Bayes Classification with Multivariate Parzen Window using Spherical Kernel

I'm having a problem implementing a Bayes Classifier with the Parzen window algorithm using a spherical (or isotropic) kernel. I am running the algorithm with test data containing 2 dimensions and 3 ...
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61 views

R coding: Function to write Approximate Bayesian Computation with Population Monte Carlo method

I am trying to write a function that can calculate Approximate Bayesian Computation using the Population Monte Carlo method. However, I ran into some troubles with my R code with the following error. ...
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Improve accuracy of Naive Bayes Classifier

I am trying to develop a prediction algorithm using Naive Bayes Classification algorithm for a set of data of "Hip Surgery Patients" that looks like: Readmission Time | Symptom Code | Symptom Note ...
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Calculating uncertainty from Naive Bayes Classification predictions

I've implemented a Naive Bayes Classification on a data set that has 3 classifications (Yes, No, and Maybe). Currently I have an array with the probabilities that an input belongs to each one of the 3 ...
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142 views

Classification of less than 4 features based on Iris flower data set

I've written a code that shows a Bayesian classification of the iris flower data set. There are 4 features in the data set and those are petal length, petal width, sepal length and sepal width. The ...
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44 views

Does my Naive Bayes training data need to be proportional?

I'll use spam classification as an example. The canonical approach would be to hand-classify a random sampling of emails and use them to train the NB classifier. Great, now say I added a bunch of ...
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88 views

bartMachine (Bayesian Additive Regression Tree) in >1 million cases in R

I want to use BART via the bartMachine package for a dataframe of just over 1 million cases. With a lot of optimisation in the java memory setting, I can get R on my MacBook to complete the BART model ...
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49 views

Creating a set of (possibly many) posterior distributions iteratively using data.table

The basic question is: how do I create a new, empty data.table, using the values in one column of an existing data.table as column names? So from this: set.seed(1) DT = data.table(x=c("a","b",...
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232 views

Rjags error message: Dimension mismatch

I'm trying to study Bayesian analysis based on book "Doing Bayesian Data Analysis: A Tutorial with R, JAGS, and Stan (2015)". In this book, there are examples. So, I'm trying to replicate this ...
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180 views

Bayesian Lifetime estimates using pymc3/theano

I am trying to estimate the following model where I provide uniform priors and I code the likelihood . The latter comes from this paper and goes as follows: In the theano/pymc3 implementation ...
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32 views

Error in Hierarchical Bayesian estimation of the Drift-Diffusion Model in Python

For the purpose of model selection, I was running the following model: m_group = hddm.HDDM(data, depends_on={'v':['coher','sat','group'], 'a': ['coher','sat','...
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87 views

Bad mixing when using pymc to solve a Multivariate Normal-InverseWishart model

I am trying to use pymc to solve the problem2 in the link below: http://www.uio.no/studier/emner/matnat/math/STK4021/h14/exercises/set2014_7.pdf The traceplots show that the mixing of mean is bad, ...
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27 views

For Loop with MCMCglmm Regression

I've looked at some of the answers for this question already, there were only two I found helpful and I still cannot get my loop to execute. I am struggling to use a fixed formula for the MCMCglmm ...
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19 views

spBayes R more than one chain

I am fitting a model using sprays and I would like to use more than one chain. How can I do it? This is the code I am using for one chain and which I would like to extend to more chains. priors <-...
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119 views

Compilation Error in simple JAGS model

I have read other questions on the topic, but all of the models on those questions are far more complicated than mine and are not helping me find my answer (very new to JAGS). When I run the ...
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71 views

Ranking Contest Results of Images with 5-Star Ratings

I run a calendar photo contest that uses a 5-star rating system which ranks the images according to their average rating. However, I would like to factor in the total number of votes a photo receives ...
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50 views

Implementing the Bayes' theorem in a fitness function

In an evolutionary programming project I'm working on I thought it could be a useful idea to use the formula in Bayes' theorem. Although I'm not totally sure what that would look like. So the ...
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56 views

How do I calculate Pr(model|data) in Bayesian inference with extremely small numbers? [closed]

I'm doing Bayesian inference (manually, using a grid search) in Python. I want to calculate the probability of each model given the data. The problem is I can only calculate the 'evidence' in log, ...
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106 views

Why do Markov chain monte carlo (MCMC) useful in bayesian machine learning?

We have some data and a probabilistic model with latent variables, we want to estimate the posterior distribution after seeing the data. Usually this p(x|z) is hard to compute, so we use variational ...
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70 views

Intro to JAGS analysis

I am a student studying bayesian statistics and have just begun to use JAGS using a intro script written by my lecturer, with us (the students) having to only enter the data and the number of ...
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64 views

RStan: Specifying a Three-Level Random Slopes Model?

I've been working on a three-level RStan model where repeated broadband measurements (year ID = yrid) are nested within local authorities (LA ID = laid), which are finally nested within regions (...
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170 views

BUGS model for (nested?) repeated measures ANOVA

I was wondering if anyone has code for a BUGS/JAGS model for a repeated measures ANOVA? Basically, I have a response (y) that I want to model against Time of day, Day, and Treatment. I would also like ...
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31 views

Three-level multilevel model specification problem with R2WinBUGS

I'm trying to apply the method used by Gelman & Hill (2007: p348) on the radon data set, with my own data. It's a multilevel model problem whereby I need to specify three levels - repeated ...
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43 views

SpBayes for an offset model

I am running spBayes to fit an 'offset' model y ~ 1. I have a dataframe like this ID lon lat y 1 A 90.0 5.9 0.957096100 2 A 90.5 6.0 0.991374969 3 A 91.1 6.0 0.991374969 ...
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R - BayesFactor: Creating a plot from a for loop

I am new to R and am trying to create a plot based on the results from a for loop. I am using the BayesFactor package to find several Bayes factors N <- seq (10, 500, by = 5) for (i in 1:length(N)...
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72 views

Negative binomial model cannot find starting position to sample

I am having difficulties running a PYMC3 model when the observed data is discrete. Oddly, if the observed data contains the value zero (0.), the model will run. I've read in other posts that that ...
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47 views

Incorrect Shape for Posterior Predictive Checks using PyMC3

I'm trying logistic regression from here: https://github.com/pymc-devs/pymc3/blob/master/pymc3/examples/logistic.py and the run_ppc function from here: http://pymc-devs.github.io/pymc3/...
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52 views

Vectorizing Gibbs sampler in matlab

In the folowwing code I am assuming the following. My model is : Y_i=X_ib+e_i. I firstly simulate some data. Given that an X_i=322, I want to forecast Y_i. In a frequentist's world we could just ...
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88 views

How to set Bernoulli distribution parameters in pymc3

I have a model described in pymc3 using the following: from pymc3 import * basic_model = Model() with basic_model: # Priors for unknown model parameters alpha = Normal('alpha', mu=0, sd=10)...
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207 views

Error: could not find function “jags.model”

I've been trying to run a basic Bayesian CFA in RStudio using altered code from the Kaplan book Bayesian Statistics for the Social Sciences. Everything runs, but once I try to run the line: cfaModel1 ...
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125 views

SpamAssassin creating bayes.toks.expire text files

I have a shared hosting account at HostGator and have been using spamassassin for several months with no problem. About 10 days ago, I logged in to cPanel > File Manager > .spamassassin folder, and ...
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107 views

Bayesian curve fitting model

With respect to bayesian curve fitting, eq 1.68 of Bishop - Pattern recognition How is the following result derived : p(t|x, x, t) = Integration{ p(t|x, w)p(w|x, t) } dw
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Running a logistic model in JAGS - Can you vectorize instead of looping over individual cases?

I'm fairly new to JAGS, so this may be a dumb question. I'm trying to run a model in JAGS that predicts the probability that a one-dimensional random walk process will cross boundary A before crossing ...
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101 views

PyMC: Why is my traceplot nearly constant?

I'm working on a toy model that allows me to infer the parameters of an underlying multivariate gaussian distribution that best fits a distribution of observed data that I have. The problem is, the ...
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346 views

Suggested Examples of Bayesian Hierarchical Modelling (using three levels) in WinBUGS/R

I'm using WinBUGS/R to develop a Bayesian Hierarchical Model with three levels but I'm struggling to find decent examples of code. Can anyone suggest some please? I'm new to WinBUGS but not multilevel ...
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287 views

AIC & BIC of PyMC mixture model

I am using PyMC to fit some data to a straight line. The data have outliers, so I adapted some code (third example at the link) written by Jake Vanderplas for his textbook. The method uses a vector ...
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43 views

Difference between predicted and empirical expectation in Maxent models?

I've been reading this tutorial on Maximum Entropy models and I fail to understand how to compute practically and also the difference between the predicted and empirical expectation which are obtained ...
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124 views

Is it possible to create a hierarchical model in PyMC3 using Categorical random variables?

I'm trying to compare two models (example from Jake Vanderplas' blog) using PyMC3, but I can't get my modified code to work (the functions best_theta() and logL() are explained in Jake's blog post, ...
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256 views

Nested indexing VS. nested for loop in Bayesian hierarchical model specification

I come across two methods of specifying Bayesian hierarchical model in the book "Bayesian methods: a social and behavioural approach" (2015), third edition by Jeff Gill. The three examples from the ...
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279 views

WinBUGS Weibull Network Meta-Analysis

I am currently working on a meta-analysis of survival data across several clinical trials. To do this, I have code from a published analysis using the same methodology. However, when running this ...
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Continuous nodes in Bayes net toolbox for Matlab

I have a node representing a random variable whith 3314 realizations and 49 dimensions each, can it be treated as a discrete variable? Each realization is a binary vector of 49 dimensions, the other ...
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117 views

PyMC Bernoulli model checking

I am currently trying to do model checking with PyMC where my model is a Bernoulli model and I have a Beta prior. I want to do both a (i) gof plot as well as (ii) calculate the posterior predictive p-...
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388 views

How to make the results of bsts robust using R?

bsts is an R package for bayesian structural time series modeling. library(bsts) # Load data data(iclaims) #Specify the trend and seasonality. ss <- AddLocalLinearTrend(list(), initial.claims$...
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49 views

ezANOVA: access to aov content [duplicate]

I am using ezANOVA to calculate ANOVAs. I would like calculate a Bayesian measure, which makes use of the values returned in the aov object. However, I have difficulties accessing the values that are ...
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236 views

Generating predictive simulations from a multilevel model with random intercepts

I am struggling to understand how, in R, to generate predictive simulations for new data using a multilevel linear regression model with a single set of random intercepts. Following the example on pp. ...
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Strange Errors in my OpenBUGS code (using R2OpenBUGS)

I've written a Weibull survival code in OpenBUGS using the R2OpenBUGS package in R. After hours of debugging, I still get the errors below: this component of node is not stochastic Beta0[1] error ...
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How is the posterior predictive density of the parameters of the Multivariate regression is a Multivariate T-distribution?

In Bayesian analysis of multivariate regression (specifically, to get the posteriors and predictive densities), it is well known that the predictive density of a multivariate normal (with µ and Σ) as ...
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335 views

Calling Stan routines from a C++ program

I read here that it is possible (and I interpreted straightforward) to call Stan routines from a C++ program. I have some complex log-likelihood functions which I have coded up in C++ and really have ...
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292 views

Ordered probit in stan

I'm just learning stan and have a few questions. I am trying to do an ordered probit model in stan. I have a couple of questions. First, the model below throws an error message Stan model does not ...
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57 views

Could bayesian network input data be probability?

For example: A B C D result 0.7 0.6 0.5 0.9 good 0.3 0.2 0.1 0.3 bad 0.5 0.0 0.2 0.9 good ............. Is it possible to use bayesian network to ...