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 ...

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8 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 ...
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22 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 ...
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14 views

pymc : Dirichlet with concentration factor that depends on an input variable

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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31 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 ...
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12 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 ...
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30 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 ...
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1answer
44 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) ...
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1answer
35 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 ...
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1answer
42 views

Metropolis-specific TypeError: The broadcastable pattern of the input is incorrect for this op

I am trying to build a multilevel, multidimensional Bayesian model in PyMC3. For this question, I'll use a smaller toy model with the following graph structure: where G represents genes, K cell ...
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1answer
92 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 ...
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1answer
39 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 ...
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1answer
32 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 ...
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1answer
60 views

Saving data from traceplot in PyMC3

Below is the code for a simple Bayesian Linear regression. After I obtain the trace and the plots for the parameters, is there any way in which I can save the data that created the plots in a file so ...
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21 views

Using a pymc parameter as a limit of integration

I'm new to python, and I'm trying to use a pymc parameter as a limit of integration: (x is an array, which has been defined previously): import pymc from scipy import integrate omega=pymc.Uniform('...
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3answers
24 views

Why standard deviation of uniform distribution calculated with pymc.Uniform(“stds”,0,100) is different each time?

Why standard deviation of uniform distribution calculated with pymc.Uniform("stds",0,100) is different each time? I think standard deviation is calculated with this formula '(100-0)/2√3', so I think ...
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11 views

Model works in pymc3 don't work in pymc2

I am trying to port the sample here into pymc2 Here is pymc3 code: with pm.Model() as hierarchical_model2: # Hyper parameters omega = pm.Beta('omega', 1, 1) kappa = pm.Gamma('kappa', 0....
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1answer
36 views

Is there a way for pymc3 to raise an exception when target_accept is not met?

I am currently running sampling and training models in a loop. and i wish to skip over those when they do not meet the target_except requirement. is this possible? Auto-assigning NUTS sampler... ...
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37 views

pyMC MvNormal and MCMC

I have the following simple model: X = np.transpose(np.asarray([df['default'], df['return'], df['cost'], df['div'] ])) mu=np.mean(X,axis=0) tau=np.cov(np.transpose(X)) sample = pymc....
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1answer
97 views

PyMC3: How to create multiple random walks?

I want to create several random walk variables in PyMC3, or rather, stack several random walks into a single variable. I know I can create a single random walk of 100 steps like this: with pm.Model() ...
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1answer
108 views

I cannot control the number of chains and jobs in pymc3

I am trying to use pymc3 to generate some samples from a GMM distribution, here is my code: w = sp.array([.3, .6, 0.1]) w = sp.array([.3, .6, 0.1]) mu = sp.array([-2, 1, 4]) sd = sp.array([1, 0.5, ...
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103 views

How to rewrite this simple AR process using scan in PyMC3?

I'm trying to learn how to use theano.scan in PyMC3 by way of a simple example. First, I set up this toy example for an autoregressive process (AR1): #simulate data alpha_true = 0.2 beta_true = 1.2 ...
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77 views

Failure when running Eight Schools Example

I tried to run the Eight Schools Model as a simple example. Specifically, the code I'm trying to run is: %matplotlib inline import pymc3 as pm import numpy as np import matplotlib.pyplot as plt ...
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83 views

Comparing models fitting multivariate data

I have trouble using WAIC (widely applicable information criterion) in PyMC3. Namely, I have data which I know to be distributed according to multivariate Dirichlet distribution. I try to fit the data ...
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1answer
175 views

How to plot a probability distribution with `pymc.MCMC` in Python

I know that I can use: S = pymc.MCMC(model1) from pymc import Matplot as mcplt mcplt.plot(S) and that will give me a figure with three plots but all I want is just a single plot of the histogram. ...
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35 views

PyMC3 deterministic function based on distribution

I am trying to modify the text counts example in "Probabilistic Programming and Bayesian Methods for Hackers" book such that the alpha value for the exponential distribution is also dependent on the ...
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16 views

Fit parameters of Linear Time Invariant model with PyMC

I have a second order linear time invariant model that is trying to model heart rate variation from previous heart rate variation values as well velocity values of the athlete.Here y(t) is the heart ...
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29 views

How to build the MMSB model with pymc3?

Here is the model I want to describe in pymc3. I wrote the following codes, but they do not work. with pm.Model() as model: bernoulli_parameters = np.empty([N, N], dtype=object) for n in ...
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1answer
137 views

How to simulate from priors with pymc3

I'd like to simulate y from the prior (not from the posterior) with pymc3. I first defined the model: import pymc3 as pm with pm.Model() as m: mu = pm.Normal('mu', mu=0, sd=10) sigma = pm....
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1answer
58 views

Why do PyMC3 and Tensorflow need the double naming of objects?

When declaring objects in PyMC3, Tensorflow and few other packages, we need to repeat the name of the object, e.g. alpha = pymc.Normal('alpha', mu=0, tau=.01) Why exactly this is needed? Why couldn'...
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1answer
239 views

Pymc3 python function to deterministic

In this notebook from Bayesian Methods for Hackers, they create a Deterministic variable from a python function as such: # from code line 9 in the notebook @pm.deterministic def lambda_(tau=tau, ...
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14 views

Weird results of modelling coin with pymc stochastic

I am imitating random variable that takes two values - 1 and 9 with equal probability. I know I can do that with pymc.Bernoulli, but I want just to be sure how @stochastic works. import pymc as pm ...
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39 views

Using PyMC for an “inverse of the Disaster model”

I have a problem that is somewhat a mirror of the "Disaster model", used as a PyMC tutorial. There is a function that produces an array of data from a set of parameters with a known range of possible ...
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67 views

importance sampling and hyperparameter methods pymc

I am learning how to programing in Python and I am new using PyMC. I am trying to programing my own code for a bayesian parameter inference. My problem is that I need to introduce 2 "sections" to my ...
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1answer
10k views

Anaconda - UnsatisfiableError: The following specifications were found to be in conflict

When I was trying to install a module 'pymc' through anaconda environments, it showed the error message as follows: UnsatisfiableError: The following specifications were found to be in conflict: ...
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152 views

Complex model on PYMC3 - Nonlinear Hierarchical model ?

I'd been studying the concepts of probabilistic programming using Pymc3 in the past couple of week and I have a question on how to implement a particular model, I will describe it next: I have a set ...
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142 views

Random seed for reproducibility for MCMC sampler in pymc

I have constructed a hierarchical model (in pymc) with 5 stochastic variables and a single deterministic variable and I want to be able to set a random seed so that the sampler is able to reproduce ...
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1answer
1k views

Pyro vs Pymc? What are the difference between these Probabilistic Programming frameworks?

I used 'Anglican' which is based on Clojure, and I think that is not good for me. Bad documents and a too small community to find help. Also, I still can't get familiar with the Scheme-based languages....
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112 views

Randomizing network using pymc in Python

There are two columns in the dataset, user_id, and site_name respectively. It records every site name that every user browsed. toy_dict = {'site_name': {0: u'\u4eac\u4e1c\u7f51\u4e0a\u5546\u57ce', 1: ...
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54 views

Solving for predictor, given observed predictand and trained model in pymc3

Let's say that we opened a python session and trained a hierarchical model using the classic "Radon" dataset, in pymc3. Specifically, we run: import matplotlib.pyplot as plt import numpy as np ...
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22 views

how to quickly compute the MAP for a univariate model?

In the following model, I have an IRT model which is basically very similar to a logistic regression: theta_sd = pm.HalfCauchy('theta_sd', beta=1) theta = pm.Normal('theta', mu=0, sd=theta_sd) proba ...
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1answer
144 views

PyMC3- Custom theano Op to do numerical integration

I am using PyMC3 for parameter estimation using a particular likelihood function which has to be defined. I googled it and found out that I should use the densitydist method for implementing the user ...
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1answer
154 views

constrained random numbers sampling using python (Monte-Carlo, Markov chains, pymc)

I am trying to sample random numbers with constraints using Python and pymc library. Here mins and maxes are arrays of minimums and maximums for each of 22 variables. It works fine in this case. ...
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46 views

PyMC3 modeling customer data

I'm faced with the following situation. Two types of customers come a to website to buy products. The products are rank listed. It is assumed that there are two types of customers, loyal ones and ...
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1answer
58 views

pymc3 import switch does not work

I'm new to pymc3 and tried to import the switch method with from pymc3 import switch, but I get this error: --------------------------------------------------------------------------- ImportError ...
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1answer
115 views

Could someone explain more clear “programming” part of probabilistic programming? [closed]

Usually in the docs for probabilistic programming frameworks I can read much about MCMC but not very much about programming. Every example I see have usually only very short and simple probabilistic ...
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37 views

Scipy `wofz` function in Theano

I would like to use the scipy.special.wofz function in a PyMC3 model that can make use of the derivative based optimisations and samplers (e.g. NUTS). Is there a Theano implementation of wofz? Or ...
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1answer
96 views

PyMC3 - Differences in ways observations are passed to model -> difference in results?

I'm trying to understand if there is any meaningful difference in the ways of passing data into a model - either aggregated or as single trials (note this will only be a sensical question for certain ...
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1answer
575 views

import pymc error: global name 'channel' is not defined

OS: Win10 64x IDE: Visual Studio 2017 Community Python Environment: Anaconda 4.4.0 (Python 2.7) When I try to import pymc, there is always an error: NameError: global name 'channel' is not defined ...
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1answer
165 views

Declaring theano variables for pymc3

I am having issues replicating a pymc2 code using pymc3. I believe it is due to the fact pymc3 is using the theano type variables which are not compatible with the numpy operations I am using. So I ...
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1answer
18 views

Pymc: Passing value to stochastic decorator

I am trying to pass a value to the stochastic decorator using value. @pymc.stochastic(value=(1.0, 1.0), dtype=np.float64) def beta_priors(value): alpha, beta = value if alpha <= 0 or beta &...