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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35 views

Two problems on writing a script to compute markov joint distribution (in python)

I'm a new-learner of python, recently I'm working on some project to perform computation of Joint distribution of a markov process. An example of a stochastic kernel is the one used in a recent ...
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1answer
21 views

simple Gamma GLM in STAN

I'm trying a simple Gamma GLM in STAN and R, but it crashes immediately generate data: set.seed(1) library(rstan) N<-500 #sample size dat<-data.frame(x1=runif(N,-1,1),x2=runif(N,-1,1)) #the ...
1
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1answer
22 views

My IDE cant find a library that I had imported. Error: “package does not exist”

I'm trying to work with Hydra library (http://sourceforge.net/projects/hydra-mcmc/) in my NetBeans IDE, but it seems like IDE ''cant see'' the library at all. I've made a screen shot: I've imported ...
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0answers
16 views

Is there Implementation of Hawkes Process in PyMC?

I want to use Hawkes process to model some data. I could not find whether PyMC supports Hawkes process. More specifically I want an observed variable with Hawkes Process and learn a posterior on its ...
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0answers
9 views

Error in if (nJ > 1) { : missing value where TRUE/FALSE needed

I am currently running a glmmMCMC with a multinomial family in R. I got the following error message after coding: "Error in if (nJ > 1) { : missing value where TRUE/FALSE needed". Does anyone could ...
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5 views

MCMCglmm for continuous data

I'm referring to R Package MCMCglmm (Monte Carlo Markov Chain Generalized Linear Mixed-effect Models), see cran.r-project.org/web/packages/MCMCglmm/MCMCglmm.pdf While MCMCglmm specifies as a ...
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61 views

Can someone please explain the following code?

data { int<lower=0> J; // number of schools real y[J]; // estimated treatment effects real<lower=0> sigma[J]; // s.e. of effect estimates } parameters { real mu; real<lower=0> ...
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1answer
44 views

Estimating AR(1) coefficient using metropolis-Hastings algorithm (MCMC) in R

I am trying to write a program to estimate AR(1) coefficients using metropolis-hastings algorithm. My R code is as following, set.seed(101) #loglikelihood logl <- function(b,data) { ly = ...
2
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1answer
127 views

Problems in Numerical Integration through R [closed]

I have the following function f(x)∝|x| exp(-1/2 |x| )+1/(1+(x-40)^4 ),xϵR I want to find out E(X) and E(X^3) through Simpson's method (numerical integration), Standard Monte Carlo approach, ...
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0answers
11 views

Matbugs: Stochastic parameters for Wishart Distribution

I want to set up a hierarchical model in Winbugs, including a Gamma distributed hyperparameter for a covariance matrix which is Wishart distributed. However, the Winbugs14 manual (p.47) explains: ...
2
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63 views

Bayesian error-in-variables (total least squares) model in R using MCMCglmm

I am fitting some Bayesian linear mixed models using the MCMCglmm package in R. My data includes predictors that are measured with error. I'd therefore like to build a model that takes this into ...
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1answer
76 views

JAGS error for MCMC Bayesian inference

In R, I am running an MCMC Bayesian inference for data from mixture of Gamma distributions. JAGS is used here. The model file gmd.bug is as follows model { for (i in 1:N) { y[i] ~ dsum(p*one, ...
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0answers
21 views

MCMCpack supress MCMCmetrop1R function output

The function MCMCmetrop1R has the option to suppress its output to the screen using the option verbose=FALSE or verbose=0. however this doesn't stop the function reporting the following when the ...
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1answer
49 views

Bayesian Stochastic Optimal Control, MCMC

I have a Stochastic Optimal Control problem that I wish to solve, using some type of Bayesian Simulation based framework. My problem has the following general structure: s_t+1 = r*s_t(1 - s_t) - ...
1
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1answer
60 views

Metropolis Hastings for linear regression model

I am trying to implement the Metropolis-Hastings algorithm for a simple linear regression in C (without use of other libraries (boost, Eigen etc.) and without two-dimensional arrays)*. For better ...
1
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1answer
55 views

Manipulating mcmc.list object in R

I have used JAGS called via rjags to produce the mcmc.list object foldD_samples, which contains trace monitors for a large number of stochastic nodes (>800 nodes). I would now like to use R to ...
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0answers
21 views

Return list (array) in pymc model

I have simple question. Is there possible in PYMC model return array of all values in fitting sample? For example. If I'm fitting some data and I suppose quadratic function, I'll define something like ...
1
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1answer
58 views

pymc3: hierarchical model with multiple obsesrved variables

I have a simple hierarchical model with lots of individuals for which I have small samples from a normal distribution. The means of these distributions also follow a normal distribution. import numpy ...
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0answers
42 views

Calculating individual-level scores from rscaleUsage in bayesm (in R)

I use the function rscaleUsage from the package bayesm in R to adjust/correct survey data for individual answer styles. According the idea of Rossi et al. given data D we are looking for the adjusted ...
0
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1answer
18 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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1answer
27 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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51 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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1answer
67 views

How to make a truncated normal prior: converting pymc2 to pymc3

In pymc3 how does one configure a truncated normal prior? In pymc2 it's pretty straightforward (below), but in pymc3 it seems there is no longer a truncated normal distribution available. Pymc2: ...
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1answer
37 views

MATLAB: Is it inefficient to use parfor (parallel for loop) within a while loop.

I'm having a trouble doing MCMC(Monte Carlo Markov Chain). So for MCMC, say I will run 10000 iterations, then within each iteration, I will draw some parameters. But in each iteration, I have some ...
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1answer
63 views

Rewriting a pymc script for parameter estimation in dynamical systems in pymc3

I'd like to use pymc3 to estimate unknown parameters and states in a Hodgkin Huxley neuron model. My code in pymc is based off of ...
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77 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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1answer
32 views

How to calculate simulated values while plotting discrepancy plot for goodness of fit?

I am trying to make the discrepancy plot for testing goodness-of-fit after obtaining best fit values by MCMC using pymc. My code goes as: import pymc import numpy as np import matplotlib.pyplot as ...
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1answer
134 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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0answers
78 views

Hyperprior in PyMC3 hierarchical model

I'm trying to construct a hierarchical model from an academic paper in PyMC3, with many parameters. Here is the plate diagram for this model: When I try to construct this model for PyMC3, I'm ...
0
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0answers
32 views

Matlab: gaussian mixture MCMC output density estimate

I have an output from a MCMC algorithm (non-parametric mixture with non-parametric extension) and I would like a gaussian mixture density estimate from Matlab along a grid [x_grid=(-10:.01:10);] based ...
1
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0answers
88 views

How to infer the parameters of a 1D gaussian distribution using PyMC?

I'm pretty new to PyMC and I'm trying desperately to infer the parameters of an underlying gaussian distribution that best fits a distribution of observed data that I have, not with a pre-build normal ...
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0answers
15 views

pymc for mean value calculation

pymc has a lot of extremely powerful numerical methods to perform Monte Carlo studies. However, it seems that they are mostly intended for modeling of existing datas. I assume that it also possible to ...
3
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1answer
72 views

Why does this hierarchical Poisson model not match true params from generated data?

I am trying to fit a hierarchical Poisson regression to estimate time_delay per group and globally. I am confused as to whether pymc automatically applies a log link function to mu or do I have to do ...
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2answers
195 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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0answers
29 views

LDA implemented with Expectation Maximization

I'm looking for an open source LDA implementation which uses expectation maximization rather than gibbs sampling but haven't been able to find one yet. can someone please point me to one? thanks !
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2answers
82 views

mcmcglmm loop to create many chains

Following up from this question (see for reproducible data frame) I want to run MCMCGLMM n times, where n is the number of randomisations. I have tried to construct a loop which runs all the chains, ...
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97 views

Calculating divergence between joint posterior distributions

I wish to calculate the distance between two 3-dimensional posterior distributions. The draws are stored at two 30,000x3 matrices. So far I have been successful in calculating Total Variation ...
1
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1answer
62 views

Fitting a Binomial distribution with pymc raises ZeroProbability error for certain FillValues

I'm not sure if I found a bug in pymc. It seems like fitting a Binomial with missing data can produce a ZeroProbability error depending on the chosen fill_value that masks missing data. But maybe I'm ...
0
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0answers
17 views

Sub + ddply to summarize mcmc parameter output

I am trying to summarize parameter estimates from mcmc chains with output that looks like Parameter 2.5% 25% 50% 75% 97.5% mean sd niaveSE 212 U[1,1] ...
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0answers
13 views

How to save the updated proposal in pymc?

When running the pymc's AdaptiveMetropolis sampler, is there a way to get the updated proposal at the end of the run (so I can save it and use it later)?
1
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1answer
54 views

How to get acceptance rate from pymc pickle database

I'm using the method below to get the acceptance rate after a MCMC run with pymc (inspired by this answer): MDL.step_method_dict[next(iter(MDL.stochastics))][0].ratio (or is there a simpler way?) ...
0
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1answer
101 views

Embedding Stan in C++ application

I wanted to know whether it is possible to incorporate Stan in another C++ application. Since Stan is also written in C++, there should be a way. Currently, I am using RInside to achieve this but then ...
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0answers
26 views

Standard deviaton of a posterior is greater than the priors in pymc. Why?

My code below returns greater values of standard deviation for some of the x's variables. Why is that? Should the standard deviation of a posterior be always smaller than the priors standard ...
0
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0answers
29 views

Bayes factor or pMCMC for bcplm using tweedie distribution

I am attempting to interpret the summary () output of the bcplm model below: fit <- bcplm(Offspring.Fledged~Beak_Score + Body_Score + (1|New.Nest.ID) + (1|Year), data= Males, n.iter = 10000, ...
2
votes
1answer
183 views

pymc3's NUTS can't perform well with my hierarchical model for Bayesian Neural Nets?

I have a Hierarchical model for learning Bayesian networks with only single hidden layer . Network parameters are divided to 4 groups of input-to-hidden and hidden-to-output weights and biases. A ...
0
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0answers
31 views

How to assess the quality of a Gibbs Sampling with R

I am coding a gibbs sampler to simulate according to the ISING model with R. It is a probabilistic model of a grid of size p*p, composed of points valued -1 or 1. Since the grid can be rather large ...
1
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1answer
42 views

Ignoring samples in Gibbs sampling

import random,math def gibbs(N=50000,thin=1000): x=0 y=0 print "Iter x y" for i in range(N): for j in range(thin): x=random.gammavariate(3,1.0/(y*y+4)) ...
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0answers
27 views

Save and Restore current state in PYMC

Recently, I launched a Bayesian model run that are written in PYMC. Due to power outage, the results generated during halfway of the run are gone. So, the logical step is to look for ways to save the ...
0
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0answers
31 views

Save and Restore current state in PYMC

Recently, I launched a Bayesian model run that are written in PYMC. Due to power outage, the results generated during halfway of the run are gone. So, the logical step is to look for ways to save the ...
1
vote
1answer
87 views

Multiply probability by a constant in Stan model

I am working in PySTAN. Suppose my likelihood is: p1 * p2 where p1 ~ N(x, xerr) and p2 = 0.823 if t = 0 1 if t = 1 My model is: model = """ data { int<lower=0> N; // number ...