Questions tagged [pymc]

PyMc is a Python module for providing Bayesian statistical models, algorithms and estimations. Two versions are currently widely used: 2 and 3, that are significantly different. Version 2 is not supported anymore, but version 3 is not fully compatible with previous codes and translating a V2-code to V3 is not always straightforward. If you have a PyMc question specific to V3, consider using the [pymc3] tag in addition to the [pymc] tag.

Filter by
Sorted by
Tagged with
0
votes
0answers
9 views

Plotting a multi-switchpoint in Python and PyMC3

I am trying to plot the multi-switchpoint posterior distributions in python, pymc3 and matplotlib, but the graph output looks different from the posterior distributions, can anyone tell me what I am ...
1
vote
0answers
14 views

Have issues converting PYMC code to PYMC3

I am trying to convert PyMC code to PyMC. I didn't find a comprehensive guide on differences and I get an error just changing pymc to pm. I would appreciate the help! #hyperpriors home = pymc.Normal('...
1
vote
0answers
25 views

theano with GPU support

I installed cuda and cudnn following the instructions here: https://docs.nvidia.com/deeplearning/cudnn/install-guide/index.html following that I set up a conda environment with python3.8 and installed ...
2
votes
1answer
41 views

pyMC3 - Using the value of a variable

I am simulating a very basic Bayesian Network using pyMC3. In this simulation, I have only categorical variables. Given the value of a variable, I would like to set the distribution of another ...
0
votes
1answer
34 views

Wrapping pymc3 model in a function

Does anyone know of a method for storing a pymc3 model within in a standard Python 3 function? I am looking to store this function locally to be called multiple times within a Jupyter environment, ...
0
votes
0answers
82 views

Using Numpy function in PyMC3 models

I am trying to build a simple model using PyMC3. The model should draw 10 samples from 10 discrete uniform distributions. Those 10 samples should then be used to calculate the difference between each ...
5
votes
0answers
68 views

Incremental Bayesian updates with multi-dimensional parameters

I am trying to use PYMC3 for a Bayesian model where I would like to repeatedly train my model on new unseen data. I am thinking I would need to update the priors with the posterior of the previously ...
3
votes
1answer
162 views

Blackbox likelihood example

I'm trying to understand how to use a black box likelihood function in pymc. Basically, this is explained here. I have tried implementing this on my own with a very simple Python model (a double ...
0
votes
0answers
11 views

Value Error in Pandas: ValueError: could not broadcast input array from shape (2) into shape (2422)

I am working on a PYMC Bayesian Model and I am using the below link to create an example. I am getting the value error while working on the same. Link: https://nbviewer.jupyter.org/github/...
-1
votes
1answer
403 views

Implementing Bayesian Hierarchical Modelling in Python

I am trying to implement Bayesian Hierarchical modelling on a different data set and I searched through the Internet and found this document by Pymc3. https://docs.pymc.io/notebooks/GLM-hierarchical....
0
votes
1answer
112 views

Compute probability of parameters given data in a bayesian network with pyMC3

I’m new to pyMC3 and I would like to know if it is possible to use it to solve the following problem: I have a bayesian network (image of my BN: Bayesian network of my problem) and I don’t know the ...
2
votes
0answers
213 views

How to create Non-Central Student’s T distribution and what priors to use with the distribution?

I have been working with the following link, Fitting empirical distribution to theoretical ones with Scipy (Python)? I have been using my data to the code from the link and found out that the common ...
0
votes
1answer
235 views

How to decide on what priors distributions to use for parameters in PyMC3?

I am looking into PyMC3 package where I was interested in implementing the package in a scenario where I have several different signals and each signal has different amplitudes. However, I am stuck ...
0
votes
1answer
99 views

Bayesian IRT Pymc3 - Parameter inference

I would like to estimate IRT model using PyMC3. I generated data with the following distribution: alpha_fix = 4 beta_fix = 100 theta= np.random.normal(100,15,1000) prob = np.exp(alpha_fix*(theta-...
2
votes
1answer
50 views

How to make sense of the use of `yield` in PyMC models? [duplicate]

I am not a user of PyMC myself, but recently I stumbled upon this article that showed a snippet of some PyMC model: def linear_regression(x): scale = yield tfd.HalfCauchy(0, 1) coefs = yield ...
0
votes
1answer
60 views

How to get the specific probability of a particular value in a distribution?

I’m a PyMC3 beginner, I started three weeks ago to familiarize myself with it and I’m doing currently a learning work so I have one doubt in my program. Sorry if it is a stupid question. I have that ...
0
votes
3answers
43 views

How to relate an array of integers to an array of strings in the code?

I'm a Python beginner who is starting to get familiar with the pymc library. In my program I'm generating random numbers between 1 and 100. When I'm generating random variables, it obviously returns ...
2
votes
1answer
169 views

Bayesian using PyMC3: PatsyError

I am trying to use PyMC3 to apply Bayesian linear regression. I want to predict the Age depending on some measurements. I found an amazing example and want to apply it with some data. Below is the ...
0
votes
1answer
400 views

How can solve pymc Python package installing?

I'm installing pymc package for python (3.7, 64-bit) on cmd windows 10 64-bit pip install pymc or pip3 install pymc but I get this error (all in red) Using cached https://files.pythonhosted.org/...
1
vote
1answer
456 views

Fit a distribution from quantiles

I'm trying to replicate an example from SAS in Python where I fit a distribution from summary statistics. The summary statistics available to me are the total count, min, max, p50, p75, p85, p95, p98, ...
4
votes
1answer
179 views

PyMC3: Different predictions for identical inputs

In PyMC3, single new observations passed via set_data() are currently not handled correctly by sample_posterior_predictive(), which in such cases predicts the training data instead (see #3640). ...
1
vote
0answers
89 views

PyMC to PyMC3 for bayesian statistics model

I am starting on Bayesian Statistics using the book Probabilistic Programming and Bayesian Methods for Hackers. I realized that the code examples there are based on pymc which has been deprecated in ...
0
votes
0answers
66 views

Visualization of pymc priors

I have using pymc successfully, I believe. However, I would like to be able to visualize or plot a prior disctribution em0 = pymc.Normal('em0',mu=emLog, tau=1./0.3, value=emLog) where emLog is my ...
2
votes
1answer
201 views

Installing pymc on Mac OS 10.14.5

I'm attempting to install pymc on MacOS 10.14.5 Mojave. However, there seems to be a problem with the gfortran module. The error message is minimally helpful. I have attempted all the possible ways ...
0
votes
1answer
164 views

PyMC3 - How to set the matrix shape of the beta distribution

I tried to recreate the Multilabel logistic regression example from the PyMC3 API guide with the attached data set (Production.csv). In the step of creating pm.Model() I run into difficultiies.The ...
0
votes
0answers
28 views

How to use pymc to find variables in initial state to match the final state to the observation?

I have an initial state which can be represented with Gaussian function, let's say F(x), with three free parameters "amplitude, centroid, sigma". I have to sum up the F(x) with a transformation ...
0
votes
1answer
183 views

Hierachical Bayesian Linear Regression using PyMC3 is super slow

I am trying to write some code for implementing HBM in the case of logistic regression using the adults dataset from the UCI repository. I have already written the code, but sampling is super slow, ...
0
votes
0answers
109 views

Problem with type FreeRV while adding new distribution

I'm trying to add a new discrete distribution to PyMC3 (a Wallenius non-central hypergeometric) by wrapping Agner Fogs c++ version of it (https://www.agner.org/random/). I have successfully put the ...
0
votes
1answer
387 views

How to calculate marginal likelihood in Python with PyMC 2.3.7?

I would like to calculate the marginal likelihood of a model given a dataset in order to compare it with another, thanks to the Bayes factor. I used PyMC 2 to get the post distributions of each ...
0
votes
0answers
33 views

Scales of plots in pymc

I would like to have probability instead of frequency in the vertical axis of my traceplot in PyMC. How is it possible to set? The examples are in the photos. I realize it is easy to transform by ...
1
vote
1answer
125 views

How to analzye this output of Bayesian analysis

I am trying to do Bayesian analysis using pymc3 and bambi softwares. My data shape is 136x5 and top 5 rows are as follows: AGE GENDER AVAR BVAR OUTVAR 0 60 F 0.9 0 8260.0 1 ...
1
vote
1answer
56 views

How to Use MCMC with a Custom Log-Probability and Solve for a Matrix

The code is in PyMC3, but this is a general problem. I want to find which matrix (combination of variables) gives me the highest probability. Taking the mean of the trace of each element is ...
1
vote
1answer
227 views

PyMC3 Normal with variance per column

I am trying to define a pymc3.Normal variable with the following as mu: import numpy as np import pymc3 as pm mx = np.array([[0.25 , 0.5 , 0.75 , 1. ], [0.25 , 0.333, 0.25 , 0. ...
0
votes
1answer
391 views

Installing PyMC3 on Anaconda 3 / Win

This installation is a nightmare!!! Using: conda install -c conda-forge pymc3 Will not work. I then tried to install theano first (and its dependencies), found out the hard way that it works with ...
1
vote
1answer
1k views

pymc with observations on multiple variables

I'm using an example of linear regression from bayesian methods for hackers but having trouble expanding it to my usage. I have observations on a random variable, an assumed distribution on that ...
0
votes
0answers
415 views

How to perform Stochastic Optimization using PyMC3?

I am trying to combine cvxopt (an optimization solver) and PyMC3 (a sampler) to solve convex stochastic optimization problems. I have tried to use the following code (PyMC, version 2) as a baseline. ...
1
vote
0answers
348 views

How to model Mixture of Bernoullis in pymc3

I'm trying to use Dirichlet Processes to identify clusters in my binary data. I'm using the tutorial as a starting point, but the tutorial is framed where the outcome is a mixture of 1D normal or ...
1
vote
1answer
63 views

How to evaluate a pymc2 model with train/test data?

I'm building a simple model in pymc2 and I want to evaluate the train data and the test data. I tried to use this part of code print('Accuracy on train data = {}%'.format((y.value == Y_train).mean()...
1
vote
1answer
876 views

PyMC3 is much slower than PyMC in Metropolis sampling

I am trying to compare the sampling speed between PyMC and PyMC3. PyMC: p1 = pymc.Normal('p1', 10, 0.5) p2 = pymc.Gamma('p2', 11, 5) p3 = pymc.Normal('p3', p1, p2) model = pymc.Model([p1, p2, p3]) ...
4
votes
2answers
2k views

Installation issues with PyMC3

I was installing PyMC3 via Anaconda. The transaction execution was done. Post this action, my Anaconda console closes immediately on open. Unable to import PyMC3 module as well. Below is the error ...
1
vote
0answers
173 views

Slow, underlying trend with a random walk or Gaussian process

I'm trying to fit a PyMC3 model to some data regarding sales over time. Here's a brief description : N salespeople each sell some number of widgets per week We assume each salesperson sells widgets ...
1
vote
0answers
58 views

PyMC3: When using the shape parameter for time series, is time on the row or column axis?

I want to sample multiple time series of the same length in PyMC3. If I have code that reads: with model: z = pm.GaussianRandomWalk('z', sd=1, shape=(100, 10)) Does this read "100 time series of ...
1
vote
0answers
38 views

PyMC sampling ignores the bounds of a parameter

I want to use slice sampling in PyMC2. I have a custom log_likelihood function, and a model with 4 uniform parameters with upper and lower bounds. When I run sampling, PyMC ignores the parameter ...
1
vote
0answers
104 views

PyMC Weighted Sampling

Most of my samples are repetitions, is there a way to give a weight to each sample that would represent how frequent it is so that the algorithm would only have to go through the unique set? Or is ...
3
votes
0answers
291 views

pymc3 with custom likelihood function from kernel density estimation

I'm trying to use pymc3 with a likelihood function derived from some observed data. This observed data doesn't fit any nice, standard distribution, so I want to define my own, based on these ...
1
vote
1answer
108 views

PYMC2 ZeroProbability error

I have a model with 6 parameters with uniform priors: parameter1 = pm.Uniform('parameter1',0.01,1) parameter2 = pm.Uniform('parameter2',0,2) parameter3 = pm.DiscreteUniform('parameter3',1,50) ...
1
vote
1answer
53 views

Defining a Custom PyMC Distribution with a Stochastic Matrix Variable

I am trying to define the following distribution: P(t) = exp(R*t) Where R is 2x2 rates matrix that I want to solve for with the data (the sum of each of its rows must be 0). This is the log ...
1
vote
1answer
244 views

pymc3 not working, getting nan and none type errors using Anaconda3

EDIT: Solution found, in answers below. Leaving question up for others who may have the same problem. I just installed pymc3, and it is only 'partially' working for me. I'm using Anaconda on 64bit ...
0
votes
1answer
199 views

pymc3 multinomial mixture gets stuck

I am trying use PYMC3 to implement an example where the data comes from a mixture of multinomials. The goal is to infer the underlying state_prob vector (see below). The code runs, but the Metropolis ...
0
votes
1answer
103 views

Bayesian Inference with PyMC3. Compilation error.

The following two codes do a simple bayesian inference in python using PyMC3. While the first code for exponential model compiles and run perfectly fine, the second one for a simple ode model, gives ...

1
2 3 4 5
9