Questions tagged [pymc3]

PyMC3 is a python module that implements Bayesian statistical models and fitting algorithms, including Markov chain Monte Carlo. Its flexibility and extensibility make it applicable to a large suite of problems. Along with core sampling functionality, PyMC3 includes methods for summarizing output, plotting, goodness-of-fit and convergence diagnostics. Source: https://pymc-devs.github.io/pymc/README.html#purpose

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Conda printing verbosely after package installation and then deactivating environment

Whenever I try to activate a conda environment and subsequently try to install a package, after the installation conda prints a lot of commands to the screen (whereas previously, after an install, you ...
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How to build a Bayesian simulation model for flipping coin three times

Imagine we tossed a biased coin 8 times (we don’t know how biased it is), and we recorded 5 heads (H) to 3 tails (T) so far. What is the probability of that the next 3 tosses will all be tails? In ...
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Difficulty Running Bayesian Gamma Regression with PyMC3

PyMC3 has excellent functionality for dealing with Bayesian regressions, so I've been trying to leverage that to run a Bayesian Gamma Regression using PyMC3 where the likelihood would be Gamma. From ...
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24 views

ImportError: No module named pymc3

I am trying to run the following example: import pymc3 as pm from numpy import array, empty from numpy.random import randint __all__ = [ 'disasters_array', 'switchpoint', 'early_mean', ...
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Incorrect behavior with convolution in PyMC3/Theano

My initial work just trying to infer the appropriate scaling for a convolved signal and filter shows far too much noise and low scaling values. Inference of a scale parameter works with a linear ...
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Unable to install PyMc3 on Msys2

I'm running Msys2 on Windows 10. I have Python 3.6 installed under with mingw-w64 as well as mingw-i686. I have the gcc tool chain for Msys, mingw-w64, and mingw-i686. I tried to install PyMc3 using ...
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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 ...
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41 views

PyMC3 hierarchical binomial model - divergences after tuning

I am trying to use pyMC3 to build a simple Bayesian hierarchical model for some experimental data. I have two datasets, but for one of the two the sampler does not converge and I cannot figure out a ...
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25 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. ...
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27 views

Noisy OR-gate in PyMC3

I am trying to create a PyMC3 model of a noisy OR-gate (a common-effect Bayes net, see graph below), as characterized in Rehder (1999): Each of a1, a2 and a3 are equally likely to cause a4, ...
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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 ...
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Fitting the rate parameter as a function of time for one realization of an inhomogeneous Poisson process

I have multiple data sets (different airplane types). Each has a list of time units (total fleet flying hours) and a list of events (crashes) that happened in each time interval between time units. ...
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56 views

How do we predict on new unseen groups in a hierarchical model in PyMC3?

If we have a hierarchical model with data from different sites as different groups in the model, how do we predict on new groups (new sites that we haven't seen before)? e.g. using the following ...
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pymc3 unexplainable TypeError when creating pm.Normal variable

The following code is taken from numerous examples of simple pymc3 usage: import os os.environ['MKL_THREADING_LAYER'] = 'GNU' import pymc3 as pm with pm.Model() as model: alpha = pm.Normal('alpha'...
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28 views

Python Pyfolio PYMC3 ValueError

I've been running into this problem with pyfolio where I just want to try out the example their github has here: https://quantopian.github.io/pyfolio/notebooks/bayesian/ the program runs through ...
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31 views

Solving Gaussian Process posterior analytically in PyMC3

I'm used to doing a Gaussian Process regression in GPFlow which lets you do this to solve for the posterior analytically: import gpflow as gp from gpflow.kernels import RBF, White, Periodic, Linear k ...
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42 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]) ...
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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 ...
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PyMC3: Pooled and Unpooled Growth Rate SwitchPoint

I'm a newbie to PyMC3 and I am trying out the switch model as the example code. However, in my data, I don't have count data that is a Poisson distribution. Instead, I have some measurement of ...
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Handling multiple requests in PyMC3 Flask Application

I have a flask application that calls Bayesian models written in PyMC3. Whenever more than one request is made simultaneously, the application processes each request separately keeping the other ones ...
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25 views

pymc3 for ARIMAX model

I have one observed series as the sum of three latent random series where F and G are explanatory variables. F, G, and O are observed. Is it possible to model this under Bayesian framework (assuming ...
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28 views

Influence diagrams / Decision models in Stan and PyMC3

Is it possible to write decision-making models in either Stan or PyMC3? By that I mean: we define not only the distribution of random variables, but also the definition of decision and utility ...
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trouble getting started with simple pymc3 example

I am new to using the PyMC3 package and am just trying to implement an example from a course on measurement uncertainty that I’m taking. (Note this is an optional employee education course through ...
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27 views

TensorVariable to Array

I'm trying to evaluate a theano TensorValue expression: import pymc3 import numpy as np with pymc3.Model(): growth = pymc3.Normal('growth_%s' % 'some_name', 0, 10) x = np.arange(4) (x * growth)....
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Pymc3 model where the results of a switch are directly observed

I have just started learning pymc3 so I might be thinking about this completely the wrong way. Assume that we observe a vector of 10 booleans. The process of interest generates (observed) booleans ...
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PyMC3 passing stochastic covariance matrix to pm.MvNormal()

I've tried to fit a simple 2D gaussian model to observed data by using PyMC3. import numpy as np import pymc3 as pm n = 10000; np.random.seed(0) X = np.random.multivariate_normal([0,0], [[1,0],[0,1]]...
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155 views

Updating model on PyMC3 with new observed data

I have measured the diameter of 80 fruits last year, and after checking what is the best distribution of the values, I've created a PyMC3 model with Model() as diam_model: mu = Normal('mu',mu=57,...
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Running a multivariate ordered logit in PyMC3

I'm trying to build a Bayesian multivariate ordered logit model using PyMC3. I have gotten a toy multivariate logit model working based on the examples in this book. I've also gotten an ordered ...
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57 views

How to specify size for bernoulli distribution with pymc3?

In trying to make my way through Bayesian Methods for Hackers, which is in pymc, I came across this code: first_coin_flips = pm.Bernoulli("first_flips", 0.5, size=N) I've tried to translate this to ...
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59 views

Plotting a Model created with PyMC3 as a graph

I am using the following code to create a simple Model with PyMC3: import pymc3 as pm import theano.tensor as tt with pm.Model() as model: p = pm.Uniform("freq_cheating", 0, 1) p_skewed = pm....
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51 views

Estimating the p value of the difference between two proportions using statsmodels and PyMC3 (MCMC simulation) in Python

In Probabilistic-Programming-and-Bayesian-Methods-for-Hackers, a method is proposed to compute the p value that two proportions are different. (You can find the jupyter notebook here containing the ...
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Resetting Theano graph

I need to run a PyMC3 model in a loop to estimate/make predictions every month. How do you reset the Theano graph? I'm familiar with Tensorflow and I know this can be done, but googling doesn't seem ...
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Can anyone explain with a snippet code for training a Bayesian Network model for regression purpose [closed]

I have searched various documentations and references but unable to code Bayesian network model that has to be used for regression by training the given data and also to predict test data. I will be ...
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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 ...
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How do I round and make comparisons with PyMC3 prior parameters in a model?

I apologize in advance if it seems more complex than needed. Tried to make it more minimal than this, but then some of the questions were more difficult to formulate. This way it is as close as ...
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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 ...
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113 views

pymc3 negative binomial regression interpretation of mu and alpha

I am confused about the interpretation for the negative binomial regression with python pymc3 package. I am not sure how to interpret the mu and alpha in GLM. Here I have a simple vector, and I want ...
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26 views

Defining grad of a custom Op theano

I am trying to define a custom theano Op with a gradient to use it with pymc3 but I don't understand how to define the grad method. The code below is where I'm stuck. The function phi() is a mock ...
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Python Pymc3 Out of Bounds Index

I work in the insurance industry and would like to compare our standard GLM Poisson regression models to Bayesian models. However, I'm not sure how to incorporate both categorical AND continuous ...
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How to give none values as observations pymc3 model

I have a pymc3 model which does MAP estimation... with pm3.Model() as last: quality_precision = pm3.Gamma('quality_precision', 2, 1) ability = pm3.Normal(name="ability", mu=0, sd=10) ...
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Why isn’t NUTS sampling with tt.dot or pm.math.dot?

I am trying to implement parts of Facebook's prophet with some help from this example. https://github.com/luke14free/pm-prophet/blob/master/pmprophet/model.py This goes well :), but I am having ...
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63 views

Why am I getting a dimension mismatch in my PyMC3 hierarchical model?

This is essentially the "Multiple Coins from Multiple Mints / Baseball Players" example from Doing Bayesian Data Analysis, Second Edition (DBDA2). I believe I have PyMC3 code which is functionally ...
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26 views

How to sequentially train a pymc3 model as new batches of observation arrive [duplicate]

I would like to train a Bayesian model once and later update the model as new data becomes available. There might be a specific name for that (sequential training? Batch training?) but I am not aware ...
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how to get variable values when there is per item observations

I am new to Bayesian statistics and pymc3. In my problem there is workers and reviewers. workers are given a set of questions.Responses given by workers are reviewed by the reviewers. So review is the ...
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30 views

Python - Pymc3 - Bayesian Model

I am following this tutorial to use Bayesian Statistics to aid in A/B tests. https://medium.com/@thibalbo/coding-bayesian-ab-tests-in-python-e89356b3f4bd I am getting the following error ------------...
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Why is Pymc3 ADVI worse than MCMC in this logistic regression example?

I am aware of the mathematical differences between ADVI/MCMC, but I am trying to understand the practical implications of using one or the other. I am running a very simple logistic regressione ...
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pymc3 , product of probability distributions

I have a transactional dataset that I would like to model so that I can do an A/B test. The model is: S(x) = T * V(x) where T is the probability that a user buys something and V(x) is the ...
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135 views

pymc3 : Dirichlet with multidimensional concentration factor

I am struggling with implementing a model where the concentration factor of the Dirichlet variable is dependent on another variable. The situation is the following: A system fails due to faulty ...
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Saved trace object runs in EOFError: Ran out of input pymc3

I have ran my model and sampled the trace on a remote server. I saved the object using pickle. The file size is extremely huge. I tried to recover the trace but its running into EOFError: Ran out ...
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55 views

How can I define my own time series models in PyMC3?

I would like to define a time series model in PyMC3 by explicitly specifying how the distribution of X_{t+1} depends on X_t. For instance, let's say that X_{t+1}=X_t with probability p and normally ...