Markov chain Monte Carlo (MCMC) methods are a class of algorithms for sampling from a probability distribution based on constructing a Markov chain that has the desired distribution as its equilibrium distribution. The state of the chain after a number of steps is then used as a sample of the ...

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non-numerical stochastic in pymc

I have been trying to define a stochastic object which is non-numerical (a graph from networkx) to be used in a MCMC in pymc. I've managed to define the stochastic with a dtype=nx.Graph, but none of ...
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46 views

Speed up random Markov Chain in R using data.table or parellelisation

I am trying to speed up a Monte Carlo simulation of a discrete time-inhomogeneous Markov chain using data.table or some form of parallelisation. Using random dummy transition matrices TM, I am ...
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57 views

How can I generate a file from a template file in R? [closed]

EDIT to ask a specific question Suppose I have this file "template.txt" which contains some texts like below. I need to replace the variables (there are many) specified between two @ like @ dt50wl ...
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37 views

Updated: Parallel computing using R result in “attempt to replicate an object of type 'closure'”

I have set up a Metropolis-Hastings algorithm, and now I am trying to run the algorithm using parallel computing. I have set up a single-chain function library(parallel) library(foreach) ...
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34 views

Number of parameters in MCMC

I want to sample from my posterior distribution using the pymc package. I am wondering if there is a limit on the number of dimensions such algorithm can handle. My log likelihood is the sum of 3 ...
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85 views

Neural Nets with Pymc3

I am trying to use pymc3 to sample from the posterior, a set of single-hidden layer neural nets so that I could then convert the model to a hierarchical one, same as in Radford M.Neal's thesis. ...
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1answer
29 views

Step by step right-censored survival analysis in JAGS

This is a sort of follow-up to an earlier post on SE: http://stats.stackexchange.com/questions/70858/right-censored-survival-fit-with-jags But here, I would like to see a FULL R script (from start to ...
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62 views

Why does pymc with gamma prior not converge with zero count data?

I am relatively new to pymc and have run into what seems like a convergence problem. I am modelling some specific Poisson process with a Gamma prior. I have some global data that I use as a basis for ...
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1answer
35 views

PyMC error : hasattr() attribute name must be string

I am trying to use PyMC to sample a linear model for a dataset. This question is a duplicate of this question but the answer to that problem fixes lines with an inline for loop or the names of ...
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0answers
11 views

The most efficient way to store MCMC result in python?

While running MCMC, each iteration produces an array that I have to concatenate together. Since I don't know when the MCMC will terminate beforehand, I can't create a result array (with + 1 dimension) ...
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1answer
34 views

R: How do I coerce stargazer to include two models (which have the same coefficients) within the same table when it is not automatically doing so?

I am generating ecological inference estimates from ei.MD.bayes (as part of the eiPack) available in R. I want to manipulate the cell count estimates (i.e. Mean, Std. Error, 2.5% and 97.5%) so that ...
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18 views

JAGS Ordered Logistic Regression

currently, I try to implement the ordered logistic regression model from Rossi et al. 'Bayesian Statistics and Marketing' within the chapter: Overcoming Scale Usage Heterogeneity. As far as I ...
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34 views

Rstan on Rstudio MCMC having too elevated running time (limited use of avaiable CPU and RAM)

I am a newbie of the Rstan world, but I really need it for my thesis. I am actually using the script and a similar dataset from a guy from NYU, who reports as an estimated time for a similar DS of ...
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1answer
12 views

2 PK samples for the same patient in Matlab Simbiology: how to calculate intra-individual variability?

Sorry I'm new to MatLab's Simbiology toolbox! I'm trying to build a population pharmacokinetics model that includes intra-individual variability / residual unexplained varibility. Would anyone ...
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62 views

PyMC: Taking advantage of sparse model structure in Adaptive Metropolis MCMC

I have a model that is structured as in this diagram: I have a population of several people (indexed 1...5 in this picture). Population parameters (A and B, but there can be more) determine the ...
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0answers
57 views

Why the parameter estimation of my beta-binomial model using jags differ from maximum likelihood estimations

I have a beta-binomial model like this where $B$ is the beta function. I want to estimate the parameters $\theta_1,\theta_2,\ldots,\theta_5$. I used a Maximum likelihood method: BBlikelihood = ...
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0answers
37 views

PyMC: Estimating population parameters where each observation is the sum of two Weibull-distributed variables

I have a list of n observations, each of which is the sum of two Weibull-distributed variables: x[i] = t1[i] + t2[i] t1[i] ~ Weibull(shape1, scale1) t2[i] ~ Weibull(shape2, scale2) My goal is: 1) ...
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1answer
42 views

Modified BPMF in PyMC3 using `LKJCorr` priors: PositiveDefiniteError using `NUTS`

I previously implemented the original Bayesian Probabilistic Matrix Factorization (BPMF) model in pymc3. See my previous question for reference, data source, and problem setup. Per the answer to that ...
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1answer
64 views

Bayesian Probabilistic Matrix Factorization (BPMF) with PyMC3: PositiveDefiniteError using `NUTS`

I've implemented the Bayesian Probabilistic Matrix Factorization algorithm using pymc3 in Python. I also implemented it's precursor, Probabilistic Matrix Factorization (PMF). See my previous question ...
2
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1answer
48 views

Metropolis-Hastings MCMC with R

I'm trying to implement a simple MCMC using MH algorith with R the problem, is that i get this error (i tried to calculate the alpha and it's not an NA problem) Error in if (runif(1) <= alpha) { : ...
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1answer
53 views

Metropolis-Hastings accept-reject implementation

I've been reading about the Metropolis-Hastings (MH) algorithm. Theoretically, I understood how the algorithm works. Now, I am trying to implement the MH algorithm using python. I came across the ...
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1answer
63 views

Parallel RJAGS with convergence testing

I'm modifying an existing model using RJAGS. I'd like to run chains in parallel, and occasionally check the Gelman-Rubin convergence diagnostic to see if I need to keep running. The problem is, if I ...
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0answers
22 views

Gibbs sampling algorithm for Ising Model

I'm curious to see in pseudoode a simple Gibbs sampling algorithm for a 2D 4-neighborhood Ising Model. Any insight?
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1answer
43 views

Jags/Bugs one step ahead prediction

imagine a simple growth model. How do I get the one step ahead predictions ?? # Priors and constraints N.est[1] ~ dunif(0, 10) # Prior for initial population size mean.lambda ~ dunif(0, ...
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14 views

Gibbs sampling with WinBUGS

What method does WinBUGS use to sample from models with deterministic relations? As far as I know standard Gibbs Sampling should not be able to deal with that? E.g. If I have a model: model { A ~ ...
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0answers
29 views

How to evaluate acceptance of metropolis-hastings proposal value when using log-likelihood?

I'm currently writing a MCMC procedure in R for estimation of Rasch model parameters. To do this I use a metropolis-hastings algorithm in a Gibbs sampler. In the code below a part of the proposal ...
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1answer
77 views

MPI: How to get one process to terminate all others - python -> fortran

I have some MPI-enabled python MCMC sampling code that fires off parallel likelihood calls to separate cores. Because it's (necessarily - don't ask) rejection sampling, I only need one of the np ...
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1answer
26 views

Where is state held in PyMC model?

Given the following model, my question is how does S know anything about alpha, beta, and theta? I've seen examples where MCMC is given a model specified in a separate file (i.e. as a Python module), ...
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1answer
51 views

using decorators to define models in PyMC

below is one way to define two stochastic Bernoulli random variables, one depending on the other with decorators. the model is meant to be: p(A) = 0.5 p(B=True|A=True) = 0.75 p(B=True|A=False) = 0.05 ...
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1answer
57 views

How to decide the step size when using Metropolis–Hastings algorithm

I have a simple question regarding to Metropolis–Hastings algorithm. Suppose the distribution only has one variable x and the value range of x is s=[-2^31,2^31]. In the sampling process, I need to ...
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38 views

How to Save a Coda Object in R

I'm unsure of how to save a coda (mcmc.list) object in R. Others have asked similar questions, but I found that the answers given were not particularly clear. Ideally I'd like to save the coda object ...
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44 views

PyMC Noob: Zero Prob error: Web Site Counts

I'm trying to learn and use PyMC with real data I've collected and basing my code and approach on the Hacker's Guide: here My data are views of a web site. I've linearly detrended the data, as I ...
3
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0answers
94 views

memory overflow in Python using pymc

Following apparently simple code for MCMC in Python causes a huge memory usage (>15GB) even though I use pickle backend. This happens whenever I use arrays of observed variables in pymc. Any idea on ...
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0answers
36 views

Prior Specification for Bayesian Estimation in MCMC Logit

I am building a logistic regression model using bayesian estimation. I am trying to specify my own priors (as multivariate normal distributed priors) in the mcmclogit package, i.e. I have beta ...
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15 views

Slice Sampling C Implementation

Are there any open source implementations of the MCMC method Slice Sampling that can be found online, coded in C?
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15 views

Residual Income Model (with Garch) to forecast stock prices

I would like to forecast stock prices based on a GARCH model. I would like to run each model for every company (share) and pool this into one GARCH model. I thought this could be done by some kind of ...
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1answer
117 views

Stan version of a JAGS model which includes a sum of discrete values - Is it possible?

I was trying to run this model in Stan. I have a running JAGS version of it (that returns highly autocorrelated parameters) and I know how to formulate it as CDF of a double exponential (with two ...
2
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1answer
95 views

How to monitor local variables in STAN?

I'm currently trying to port some JAGS models to STAN. I get some strange errors "stan::prob::exponential_log(N4stan5agrad3varE): Random variable is nan:0, but must not be nan!" and to debug those I ...
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1answer
83 views

How to do panel data analysis in Bayesian model with pymc

everyone. I have a question on how to do panel data analysis in Bayesian model with pymc. The data is like: .......................................................... User Time x1 x2 ...
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0answers
21 views

Is my latent factor model converged under collapsed gibbs sampling?

I designed a LDA-like latent factor model. I solved this model with collapsed gibbs sampling and implemented the learning algorithm with Python. Here is part of learning results. In each iteration, ...
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1answer
42 views

Estimating probability of head using MCMC approach

I am trying to learn about Bayesian parameter estimation and found some really good tutorial over here (Tutorial 1 & 2). Just to test my understanding I am trying to implement MCMC approach for ...
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1answer
65 views

Sequential updating in PyMC

I'm teaching myself PyMC but got stuck with the following problem: I have a model whose parameters should be determined from successive measurements. In the beginning the parameter's prior is ...
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68 views

Using numpy vectorize

I'm trying to do some bayesian probit code using data augmentation. I can get it to work if I loop over the rows of the output matrix, but I'd like to vectorize it and do it all in one shot ...
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74 views

R: How to avoid foor loops using dmvnorm

I am writing an MCMC in R to estimate the parameters of two 3-dimensional multivariate normal distributions for each position in my dataset, which is an array of dim(j,x,y,3), where j is the number of ...
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15 views

how to construct a gibbs chain that has a unique stationary distribution for a bayesian network?

I try to use the gibbs sampling to produce samples from some bayesian network models, like 'mildew.net' and 'alarm.net', alarm is perfect, but when I try to use it for midew.net network, it is like ...
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1answer
101 views

How should I use @pm.stochastic in PyMC?

Fairly simple question: How should I use @pm.stochastic? I have read some blog posts that claim @pm.stochasticexpects a negative log value: @pm.stochastic(observed=True) def loglike(value=data): # ...
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1answer
64 views

Using pymc3 to fit Student's t distribution

Not sure if I am doing something silly or pymc3 has a bug, but trying to fit T distribution to normal I get number of degrees of freedom (0.18 to 0.25, I'd expect something high, 4-5 at least). Of ...
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0answers
17 views

How to use auto-correlation method for checking convergence of Metropolis Hasting

I want to draw a samples from a posterior of D-dimensional variables. I used Metropolis Hasting. I want to know if we already converged to the stationary distribution so I can stop my program. A ...
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1answer
89 views

How to define General deterministic function in PyMC

In my model, I need to obtain the value of my deterministic variable from a set of parent variables using a complicated python function. Is it possible to do that? Following is a pyMC3 code which ...
2
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1answer
238 views

PyMC observed data for a sum of random variables

I'm trying to infer models parameters with PyMC. In particular the observed data is modeled as a sum of two different random variables: a negative binomial and a poisson. In PyMC, an algebraic ...