Tagged Questions

Pymc is a Python module for providing Bayesian statistical models and algorithms.

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I am writing the code for a population MCMC. I will try to provide as much information I think could help, so please bear with me. I am using tempered distributions and I want to perform exchange ...
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Finding the most probable value from the MCMC sampler output

I am relatively new to PyMC, and I have a quick question regarding the output from the MCMC sampler. I would like the find the most probable value (maximum of the posterior) of my variables as found ...
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Simple Dynamical Model in PyMC3

I'm trying to put together a model of a dynamical system in PyMC3, to infer two parameters. The model is the basic SIR, commonly used in epidemiology : dS/dt = - r0 * g * S * I dI/dt = g * I ( r * S ...
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Thinning Chains - BUGS and JAGS

Hi I have a quick question about the details of running a model in JAGS and BUGS. Say I run a model with n.burnin=5000, n.iter=5000 and thin =2. Does this mean that the program will 1) Run 5,000 ...
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Regression with “unidirectional” noise

I would like to estimate the parameters of a simple linear function and a gamma-distributed noise term from data. (Note: This is a follow-up question of ...
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How to find probability of posterior parameter with Winbugs

My winbugs code is as follows: model { for ( i in 1:N){ logit(p[i])<- alpha+ beta*x[i] y[i]~ dbin(p[i], n[i]) } alpha~ dnorm(0,0.000001) beta~ dnorm(0,0.000001) ...
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PyMC regression of many regressions?

I haven't been using PyMC for long, but I was pleased at how quickly I was able to get a linear regression off the ground (this code should run without modification in IPython): import pandas as pd ...
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Using PyMC to perform double integration

I need to perform double integration using MCMC method. I have already done it using romberg and doublequad integrations with correct results. I need to also use MCMC integration to compare the ...
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How does pymc represent the prior distribution and likelihood function?

If pymc implements the Metropolis-Hastings algorithm to come up with samples from the posterior density over the parameters of interest, then in order to decide whether to move to the next state in ...
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PyMC: multivariate estimation in non-stationary noise

Is there a possibility to use pymc for the following task: the signal is non-linear function of two variables that I want to estimate, the noise is non-stationary, correlating at different moments of ...
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R extension using C in mcmc

I am writing a C version of my R mcmc code. Part of the code that is throwing up errors is as follows: #include <stdio.h> #include <math.h> #include <stdlib.h> #include ...
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Error in vector(“list”, n.chains) : invalid 'length' argument

I am using R2jags and CODA to produce some diagnostic statistics to my MCMC chains, but I am having trouble. I want to run MCMC as follows: modelfit <- jags(data=jags.data, inits=jags.inits, ...
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Fisher information for a posterior distribution MCMC

The method I am using requires me to calculate the Fisher Information for a the posterior distribution (with respect to all hyperparameters). What I have at the moment is a Monte Carlo sample from the ...
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How is it possible to fit more than one function to a set of data simultaneously using pymc?

I want to fit a function three times in a set of data and the function has four free parameters(x,y,z,Mass). But for one of them, z, I have a probability distribution (p(z)) and I want to integrate ...
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How to speed up the rjags model training in Bayesian ranking?

All, I am doing Bayesian modeling using rjags. However, when the number of observation is larger than 1000. The graph size is too big. More specifically, I am doing a Bayesian ranking problem. ...
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Why is this pymc code freezing?

I'm new to both Python and PyMC, but have managed to write a successful script before. Unfortunately, the model I came up with wasn't very good and a came up with a new one and coded it again. ...