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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3 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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11 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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7 views

Using PYMC for integration [closed]

How to do integration using pymc. e.g. integrate exp(-x) from 0 to infinity Please provide sample to code in pymc for it.
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1answer
40 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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0answers
36 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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35 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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6 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
45 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
37 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
10 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
36 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 ...
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1answer
147 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 ...
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1answer
38 views

How can I convert OpenBUGS Coda file to mcmc object in R?

I used OpenBUGS and it produced coda files of MCMC output. To calculate and plot Gelman Rubin and Geweke diagnostics, I need to convert this coda.odc file to a mcmc object in R? Is there any way to do ...
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1answer
54 views

Compound model in PyMC

I'm trying to use PyMC 2.3 to obtain an estimate of the parameter of a compound model. By "compound" I mean a random variable that follows a distribution whose whose parameter is another random ...
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1answer
107 views

MCMCglmm multinomial model in R

I'm trying to create a model using the MCMCglmm package in R. The data are structured as follows, where dyad, focal, other are all random effects, predict1-2 are predictor variables, and response ...
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0answers
44 views

How to get a posterior of a difference using MCMCpack?

I'm trying to get a posterior distribution using MCMCpack of a difference between two conversion rates, akin to the A and B Together section of this PyMC tutorial. I can get the posteriors of the ...
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0answers
28 views

Controlling the output messages of MCMC function in the adaptMCMC package

Curious to know if there's any way to disable the output messages that are printed during a run of the MCMC() function in the adaptMCMC package. I'm running this function many times and these print ...
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1answer
66 views

PyMC code gives unusual results

I tried to solve a logistic regression model using PyMC. However, the diagnostic plots show very high autocorrelations and after repeated sampling from the posterior distribution, I sometimes obtain ...
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0answers
17 views

What is the best ensemble sampler for highly correlated parameter space?

I have a likelihood that I want to estimate the free parameters for it and I am using MCMC to estimate the parameters. Two of the free parameters are positions (Xpos and Ypos) and I defined uniform ...
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177 views

How to specify MCMCglmm prior

I am trying to run a model using MCMCglmm in R but keep getting an error message: "Error in MCMCglmm(fixed = cbind(LEOPARD_GI_2003, LEOPARD_GI_2004, LEOPARD_GI_2005) ~ : ill-conditioned G/R ...
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0answers
44 views

Using multi-processing for MCMC code

I am a newbie pymc user and I have written an MCMC code which is quite slow and I would like to modify my code in order to speed it up. Is it possible to use multi-processing to speed up the ...
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1answer
26 views

Defining the exponential prior with jumping order of magnitude in parameter space

I want to define an Exponential prior for a parameter as following Therefore I have defined it in pymc with @pm.stochastic def MASS(value=math.pow(10,15), rate = math.pow(10,15)): """mass is ...
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1answer
68 views

Defining priors and marginalizing over priors in pymc

I am going through the tutorial about Monte Carlo Markov Chain process with pymc library. I am also a newbie using pymc and try to establish my own MCMC process. I have faced couple of question that I ...
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38 views

random effect model in proc mcmc in sas

I have a set of subjects undergoing an experimental treatment. The subjects alternate between two different treatments in a crossover design and I wish to model the outcome using PROC MCMC in SAS. ...
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1answer
63 views

TypeError: hasattr(): attribute name must be string in pymc

I have looked at the following links but none of them provide the solution I am looking for https://github.com/pymc-devs/pymc/issues/125 PyMC error : hasattr(): attribute name must be string I have ...
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1answer
34 views

What is meant by “Tuning of step methods” in pymc

I am trying to experiment with different values for the arguments of MCMC.sample in pymc. I looked at help pages for MCMC.sample and I found: tune_interval : int Step methods will be tuned at ...
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3answers
110 views

Using rmultinom with Rcpp

I'd like to use the R function rmultinom in c++ code to be used with Rcpp. I get an error about not enough arguments - I am unfamiliar with what these arguments ought to be, as they do not corresond ...
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1answer
66 views

Clustering : No single point clusters

I have 4-dimensional data which needs to be clustered to build minimum volume bounding ellipsoids for each cluster. I don't want to have single point clusters or at least, as less number of single ...
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0answers
12 views

Some examples of various options for StepMethods in pymc

I have looked at the documentation on this page http://pymc-devs.github.io/pymc/modelfitting.html and even looked at the help but I am not able to find out any example regarding different values they ...
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0answers
43 views

pymc MAP warning : Stochastic tau's value is neither numerical nor array with floating-point dtype. Recommend fitting method fmin (default)

I have looked at a similar question here pymc warning: value is neither numerical nor array with floating-point dtype but there are no answers, can someone please tell me whether I should ignore ...
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1answer
49 views

Histogram plots in pymc, what do different aspects mean?

I have defined a stochastic random variable (and many more but for the sake of this question, one is enough) tau = pm.DiscreteUniform("tau", lower = 0, upper = 74) After sampling using MCMC, when I ...
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0answers
64 views

Why the jags result and depmixS4 are sometimes different?

I have a data set like the following simulated data: Pi = matrix(c(0.9,0.1,0.3,0.7),2,2,byrow=TRUE) delta = c(.5,.5) z = sample(c(1,2),1,prob=delta) T = 365 for( t in 2:T){ z[t] = ...
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1answer
25 views

Two execution of MAP in pymc gives different values

I wanted to learn about MAP optimization im pymc. I got the following posterior distribution of lambda after sampling using mcmc Clearly, the posterior is maximum at lambda = 0.20 and the 95% ...
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0answers
74 views

Dirichlet Distribution in PyMC

Can someone please explain working with a Dirichlet distribution in PyMC (with a working example) ? I realize it is trivial but I am not able to find trace of all the components. Is there any way out ...
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1answer
58 views

KeyError while printing trace in PyMC

I had read that by default some names are assigned to Stochastic vaiables. I am writing the relevant portion of my code below. lam = pm.Uniform('lam', lower=0.0, upper=5, doc='lam') parameters = ...
3
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0answers
102 views

Fitting a non-homogeneous poisson-process with PyMC

I'm new to PyMC and trying to fit my non-homogeneous poisson-process with a piecewise-constant rate function using the maximum a posteriori estimate. My process describes some events during a day. ...
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0answers
37 views

PyMC: Setting Constraints when fitting Models

I am trying to set constraints when fitting variables via a MCMC approach with PyMC For instance, I defined the following stochastic models in PyMC import pymc as pm ...
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0answers
24 views

Modelling Image data with mixture of gaussians

I want to fit the data of a 200 x 200 pixel single channel image into a Mixture of Gaussians. How do I estimate the unnormalized posterior distribution of this proposed model? How can I use MCMC ...
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2answers
54 views

import a module with parameter in python

Is it possible to pass import a module with some parameter in python ? All I mean by parameter is that there exists a variable in the module which is not initialized in that module, still I am using ...
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1answer
42 views

MAP in PyMC is giving unexpected error

I don't understand why MAP is giving error where as MCMC works fine in the same scenario? I am writing below the relevant part of code. tau = Uniform('tau', lower=0.01, upper=5, doc='tau') rv = [ ...
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1answer
67 views

Octave approximation of e

I want to use MCMC algorithm in Octave to calculate with max precision the following expression: "1/e". After reading some tutorials I found a formula for calculating π, but I do not understand how it ...
1
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1answer
75 views

Decorators in PyMC

I have three question regarding decorators which I am not able to find answer to : Q1)What do the arguments to decorators in PyMC (@Deterministic, @Stochastic) denote ? Q2) ...
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1answer
29 views

Meaning of a variable declaration in PyMC

In this tutorial http://pymc-devs.github.io/pymc/tutorial.html#an-example-statistical-model , disasters = Poisson('disasters', mu=rate, value=disasters_array, observed=True) this line denotes that ...
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1answer
88 views

Metropolis Hastings with Custom Log likelihood in Pymc

I want to use pymc to use a MH chain to sample from a custom log likelihood. But I can't seem to get it to work and can't find a decent example online. def getPymcVariable(data): def logp(value): ...
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0answers
54 views

Step size for multi parameter MCMC (Markov Chain Monte Carlo) updating

I am trying to implement a Markov Chain Monte Carlo based on the Metropolis algorithm for a model that consists of multiple parameters. Part of the algorithm requires the determination of step sizes ...
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0answers
42 views

MCMC Sampling in PyMC

Can someone explain how MCMC does the sampling in PyMC ? I have read Metro-Hastings algorithm, still I would like to understand it better. Please focus on areas like whether it individually assigns ...
1
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1answer
64 views

Stochastic variables in pymc

I have come across such terms as runiform, rbinomial etc at many places . I couldn't find about them anywhere. I can only see their usage. What do they denote and how they are different from ...
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0answers
34 views

logp in stochastic variables of pymc

I have a very intrinsic confusion regarding logp. I will like to explain through anexample on na webpage so that I don't fall short of explaining it well. I wrote disaster_model.py as illlustrated in ...
2
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1answer
130 views

plotting figure from saved traces in pymc

I need to run MCMC different times with different parameters to check the convergence. So I decided to save the traces so that when I need to know (for comaprison purposes) what was the result of ...
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1answer
169 views

setting up MCMC with log-likelihood and log-normal prior with PyMC

I am a newbie with pyMC and I am not still able to construct the structure of my MCMC with pyMC. I would like to establish a chain and I am confused how to define my parameters and log-likelihood ...