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

learn more… | top users | synonyms

0
votes
0answers
3 views

How to evaluate integral with PyMC

I'm trying to learn PyMC and am really close to solving my first real problem with it. I'm fairly new to Bayesian analysis and MCMC, but I'm starting to feel more confident and apply it to my work. ...
0
votes
1answer
16 views

Mixture model of a normal and constant

I'd like to model a distribution which is a mixture of a Normal and the constant 0. I couldn't find a solution because in all the mixture examples I've found the class of distribution is the same for ...
1
vote
1answer
29 views

Non-linear least square minimization using three dimensional data

I have a 3D data and I would like to fit a non-linear model to the data using lmfit. This is the code I have written but it doesn't work. from lmfit import minimize, Parameters, Parameter, ...
1
vote
1answer
22 views

Model a distributions that is a combination of two others

I cannot find an example on this, or I don't see the similarity to my problem: I tried to model a multimodal distribution that looks as if it were defined by the sum of two chi-squared distributions ...
0
votes
1answer
9 views

Learning a single parameter in pymc

I am a beginner with pymc, and I am also quite new to Bayesian learning. Thus, this question might seem awkward due to a lack of understanding. I worked through the tutorial, and afterwards I tried ...
0
votes
0answers
22 views

PYMC model generates type error while access Scipy Distribution

I have wrapped the Scipy genextreme distribution to make a PYMC stochastic variable. Then I build a model using parameter estimates from scipy as starting points. (Hoping to refine the fit and ...
1
vote
0answers
22 views

Pymc size / indexing issue

I am trying to model Kruschke's "filtration-condensation experiment" with pymc 2.3.5. (numpy 1.10.1) Basicaly there are: 4 groups each group has 40 individuals each individual has 64 Bernoulli ...
0
votes
0answers
16 views

Python Code running in Ubuntu 14.04 not running in Windows 8.1/10

My python code was running successfully in Ubuntu 14.04; but when I went to run in Windows Platform, it throws me into error. The Code: import pylab import pymc with ...
0
votes
0answers
2 views

PYMC2 multidimensional data

I am trying to load a multi-dimensional data into PYMC python but I am facing problems. Suppose I have a 5d feature vector and one hundred observations of those. I want to model this data with a ...
0
votes
0answers
14 views

PyMC - Maximum Competence Reported for Stochastic is <= 0 for a custom created Stochastic

In my model, I defined a Stochastic "R" directly, as seen here: def R_logp(value, M, M_z, F, log_var): return pymc.normal_like(x=value, mu=forward_radius(M, M_z, F), tau=1/(log_var**2)) def ...
1
vote
0answers
21 views

pymc3 improving theano compile time before sampling

I'm working with this hierarchical Bayesian model: import pymc3 as pm import pandas as pd import theano.tensor as T categories = pd.Categorical(df.cat) n_categories = len(set(categories.codes)) ...
0
votes
0answers
53 views

PYMC Water Demand Forecasting

I am working on making a water demand forecasting model that takes into account time and meteorological conditions. I am new to this and struggling to generate a forecast array. Ideally it would take ...
2
votes
1answer
41 views

first use of PyMc fails

I am new to PyMc and would like to know why this code doesn't work. I already spent hours on this but I miss something. Could anyone help me ? question I want to address: I have a set of Npts ...
-1
votes
1answer
29 views

pymc: Inferring parameters based on functions of observables

I have observations of several optical emission lines, and I have a model that predicts several (flux) ratios of those lines, based on two parameters, q and z, which I want to infer. I have created ...
2
votes
1answer
92 views

PyMC3 regression with change point

I saw the examples of how to do change point analysis with pymc3, but it seems that I'm missing something because the results I get are far from true values. Here's a toy example. Data: Script: ...
0
votes
0answers
32 views

Issue with PyMC Lamda function

I am experiencing memory issues while running MCMC sampling on a simple hierarchical model. Following is a brief description of my model (I have dumbed it down to prevent the model details from ...
0
votes
0answers
18 views

pymc: Dynamically restrict fit range

I have some data that need fitting. I know the functional form that the data should take, but only in some intermediary region of the data. I don't a priori know where this region begins and ends, so ...
5
votes
1answer
91 views

Posterior probability with pymc

(This question was originally posted on stats.O. I moved it here because it does relate with pymc and more general matters within it: in fact the main aim is to have a better understanding of how pymc ...
0
votes
0answers
15 views

Pymc: How can I make a model to use a set to time sequence to do prediction?

I am a bloody newbie to Python and Pymc, and recently try to solve a problem like this: Based on signals collected in the first 5 days, I am asked to make a model in order to predict the signal in ...
0
votes
1answer
43 views

Numpy Attribute error pymc

I'm trying to implement a state-space model using pymc and numpy. As such I'm using numpy arrays with dtype object to avoid a setting an array element with a sequence error. As demonstrated here I ...
0
votes
1answer
46 views

Porting pymc2 code to pymc3: custom likelihood function

I am trying to implement the censored data example in Lee&Wagenmakers' book (Chapter 5.5, page 70). In pymc2, I have the following model: nattempts = 950 nfails = 949 n = 50 # Number of ...
0
votes
0answers
66 views

PyMC: How can I predict emission values given a sequence of observations after fitting a Hidden Markov Model with PyMC

I am a newbie to PyMC(2.3.6) and probabilistic programming and try to implement a Hidden Markov Model so as to predict observation value at T(n+1) given a sequence of observation value in T(0....n). ...
0
votes
1answer
44 views

How to use StudentT distribution in pymc3?

I'm not sure whether this counts as a question or a bug report. I posted a GitHub gist here: https://gist.github.com/jbwhit/a9012e04b0f48e582c22 I found this question (pymc3: hierarchical model with ...
0
votes
0answers
13 views

PYMC defining a custom distribution from a previous trace ouput

I wonder if anyone could correct me on a feature which I believed was builtin into PYMC (but since I cannot find it I guess I am wrong) I have run a PyMC model to generate the posterior distributions ...
0
votes
0answers
32 views

Improving inference prediction in linear regression y axis offset with uncertainty in both axes

Using the example provided by [Abraham Flaxman] Fit a non-linear function to data/observations with pyMCMC/pyMC, I have produced this code to perform a linear regression: y = m * x + n which takes ...
0
votes
1answer
31 views

PYMC Deterministic variable with parent as class attribute

I am trying to create a PYMC Deterministic variable that looks like the following. @pymc.deterministic def tau(s = sigma): return 1.0/(s**2) However, in my case, the model parameters (PYMC ...
0
votes
0answers
28 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 ...
0
votes
0answers
20 views

pymc MvNormal cause MKL fatal error

Here is a minimal example: import pymc as pm x = pm.MvNormal('x',zeros(5),eye(5)) results in the error: *** libmkl_avx.so *** failed with error : ...
2
votes
0answers
131 views

How to benefit from GPU with PYMC3

I see zero difference in PYMC3 speed when using GPU vs. CPU. I am fitting a model that requires 500K+ samples to converge. Obviously it is very slow, so I tried to speed things up with GPU (using GPU ...
0
votes
0answers
24 views

Using pymc to fit to linked variables to a function

I'm trying to use pymc to fit an equation that describes the expansion of the universe. The equation I'm using assumes that the universe is flat and that the matter density (omega_m0) is equal to ...
0
votes
0answers
21 views

Clarifying the docstrings associated with pymc distribution functions

In many pymc examples, we see that a node is created as in the following example, b0 = pymc.Normal("b0", mu=0, tau=0.0003) But I can't seem to find the docstring (the function documentation) of ...
0
votes
0answers
44 views

TypeError: MaxAndArgmax needs a constant axis for arbitrary / custom distribution function

I am trying to define a multivariate, continuous, custom/arbitrary distribution function that is quite complex and sample from it using the NUTS. I am receiving the following error when I do: ...
0
votes
0answers
18 views

Bayesian programming of Brandeis dice with PyMC

I am trying to code an MCMC with PyMC that reproduces the analytic results by Uffink about the Brandeis dice. The problem is the following: given a dice rolled N times, we know its average value. If ...
0
votes
0answers
21 views

How can I optimize this pymc code?

I'd like to perform inference on a simple Ising model with pymc3: mu = pm.Uniform('mu', lower=0, upper=1, shape=(N,1)) energy = mu.T * W * mu + f.T * mu logp = pm.Potential('logp', energy) start = ...
0
votes
0answers
57 views

dynamical system in Python with PyMC

is it possible to write down this simple dynamical system in pymc? there is a rate r(t) that is evolving over time, and the rate controls the change of the system output z(t): rate of a system: r(t) ...
0
votes
1answer
20 views

What is the PyMC3 equivalent of the 'pymc.rnormal' function?

Is there a PyMC3 equivalent to the pymc.rnormal function, or has it been dropped in favor of numpy.random.normal?
1
vote
1answer
44 views

pymc3 SQLite backend, specify list of variables to track

I am fitting a hierarchical model where one variable has a shape>10K and the model requires 500+k samples to converge. I would like to use a persistent backend for trace, so that I can compare ...
1
vote
1answer
76 views

Installing pymc - Lapack issues

Hoping someone might have some experience with this issue, I checked google but had no luck even finding the error message. I'm trying to install pymc (using pip install --user pymc) on a server with ...
1
vote
0answers
9 views

Result discrepency in PyMC implementations of the M&M

A PyMC solution to the M&M problem is shown in this link: http://dataorigami.net/blogs/napkin-folding/29036419-bayesian-m-m-problem-in-pymc-2 In an attempt to solve the problem in a slightly ...
0
votes
1answer
113 views

Install anaconda library from a local source

I have been trying to install pymc for some time on a Windows PC behind a very complicated proxy; effectively making this an installation on a computer not connected to the internet. I have tried - ...
11
votes
1answer
251 views

how to speed up PyMC markov model?

Is there a way to speed up this simple PyMC model? On 20-40 data points, it takes ~5-11 seconds to fit. import pymc import time import numpy as np from collections import OrderedDict # prior ...
0
votes
2answers
37 views

Putting bounds on stochastic variables in PyMC

I have a variable A which is Bernoulli distributed, A = pymc.Bernoulli('A', p_A), but I don't have a hard value for p_A and want to sample for it. I do know that it should be small, so I want to use ...
0
votes
0answers
4 views

bins is not an integer in Matplot #pymc

For some reason, the value provided to hist in pymc.Matplot is not an integer. It causes the numpy/matplotlib routines following to crash. The reason is the _struges function returns a float64 ...
0
votes
0answers
22 views

Adding conditional observed data to PyMC model

I have a diamond-shaped model of boolean variables looking like this: digraph G { A -> B -> D; A -> C -> D; } B and C can be controlled experimentally, so we know P(D|B,C) for ...
0
votes
0answers
10 views

Specifying a graphical model where only conditional probability of query variable is known

I have a diamond-shaped network of boolean values: digraph G { A -> B -> D; A -> C -> D; } I know P(D|B,C) for all combinations of positive and negated B and C (data were ...
0
votes
2answers
45 views

Unexpected behaviour with DiscreteUniform in pymc when shifting interval

I am trying to simulate 100 tossing of a dice, where my data is the sum of all the tosses (kind of a Maximum Entropy principle of Jaynes' Brandeis dice). This was my first attempt to later approach a ...
0
votes
1answer
79 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) - ...
0
votes
1answer
17 views

PyMC and MCMC: How to ignore a sample?

I have an if-condition in my model. Only when this if-statement is true, I want to return the result to the sampler. For the else-statement, is there a return value I can use to tell the sampler to ...
1
vote
1answer
62 views

Conditional prior in PyMC3

I am trying to build a model in which the prior assigned to a distribution is contingent on a particular value, and that value is another variable that is sampled. For example, a student answering a ...
1
vote
0answers
83 views

GARCH model in pymc3: how to loop over random variables?

I'm attempting to implement a GARCH model in pymc3, along the lines of this example. For this I attempted to implement a GARCH(1, 1) distribution as follows import pymc3 as pm from ...