Skip to main content

A customized fork of pgmpy for RCR library compatibility

Project description

pgmpy is a Python library for causal and probabilistic modeling using graphical models. It provides a uniform API for building, learning, and analyzing models such as Bayesian Networks, Dynamic Bayesian Networks, Directed Acyclic Graphs (DAGs), and Structural Equation Models(SEMs). By integrating tools from both probabilistic inference and causal inference, pgmpy enables users to seamlessly transition between predictive and interventional analyses.

Documentation · Examples . Tutorials
Open Source GitHub License GC.OS Sponsored
Tutorials Binder
Community !discord !slack
CI/CD github-actions asv platform
Code !pypi !conda !python-versions !black
Downloads PyPI - Downloads PyPI - Downloads Downloads

Key Features

Feature Description
Causal Discovery / Structure Learning Learn the model structure from data, with optional integration of expert knowledge.
Causal Validation Assess how compatible the causal structure is with the data.
Parameter Learning Estimate model parameters (e.g., conditional probability distributions) from observed data.
Probabilistic Inference Compute posterior distributions conditioned on observed evidence.
Causal Inference Compute interventional and counterfactual distributions using do-calculus.
Simulations Generate synthetic data under specified evidence or interventions.

Resources and Links

Quickstart

Installation

pgmpy is available on both PyPI and anaconda. To install from PyPI, use:

pip install pgmpy

To install from conda-forge, use:

conda install conda-forge::pgmpy

Examples

Discrete Data

from pgmpy.utils import get_example_model

# Load a Discrete Bayesian Network and simulate data.
discrete_bn = get_example_model("alarm")
alarm_df = discrete_bn.simulate(n_samples=100)

# Learn a network from simulated data.
from pgmpy.estimators import PC

dag = PC(data=alarm_df).estimate(ci_test="chi_square", return_type="dag")

# Learn the parameters from the data.
dag_fitted = dag.fit(alarm_df)
dag_fitted.get_cpds()

# Drop a column and predict using the learned model.
evidence_df = alarm_df.drop(columns=["FIO2"], axis=1)
pred_FIO2 = dag_fitted.predict(evidence_df)

Linear Gaussian Data

# Load an example Gaussian Bayesian Network and simulate data
gaussian_bn = get_example_model("ecoli70")
ecoli_df = gaussian_bn.simulate(n_samples=100)

# Learn the network from simulated data.
from pgmpy.estimators import PC

dag = PC(data=ecoli_df).estimate(ci_test="pearsonr", return_type="dag")

# Learn the parameters from the data.
from pgmpy.models import LinearGausianBayesianNetwork

gaussian_bn = LinearGausianBayesianNetwork(dag.edges())
dag_fitted = gaussian_bn.fit(ecoli_df)
dag_fitted.get_cpds()

# Drop a column and predict using the learned model.
evidence_df = ecoli_df.drop(columns=["ftsJ"], axis=1)
pred_ftsJ = dag_fitted.predict(evidence_df)

Mixture Data with Arbitrary Relationships

import pyro.distributions as dist

from pgmpy.models import FunctionalBayesianNetwork
from pgmpy.factors.hybrid import FunctionalCPD

# Create a Bayesian Network with mixture of discrete and continuous variables.
func_bn = FunctionalBayesianNetwork(
    [
        ("x1", "w"),
        ("x2", "w"),
        ("x1", "y"),
        ("x2", "y"),
        ("w", "y"),
        ("y", "z"),
        ("w", "z"),
        ("y", "c"),
        ("w", "c"),
    ]
)

# Define the Functional CPDs for each node and add them to the model.
cpd_x1 = FunctionalCPD("x1", fn=lambda _: dist.Normal(0.0, 1.0))
cpd_x2 = FunctionalCPD("x2", fn=lambda _: dist.Normal(0.5, 1.2))

# Continuous mediator: w = 0.7*x1 - 0.3*x2 + ε
cpd_w = FunctionalCPD(
    "w",
    fn=lambda parents: dist.Normal(0.7 * parents["x1"] - 0.3 * parents["x2"], 0.5),
    parents=["x1", "x2"],
)

# Bernoulli target with logistic link: y ~ Bernoulli(sigmoid(-0.7 + 1.5*x1 + 0.8*x2 + 1.2*w))
cpd_y = FunctionalCPD(
    "y",
    fn=lambda parents: dist.Bernoulli(
        logits=(-0.7 + 1.5 * parents["x1"] + 0.8 * parents["x2"] + 1.2 * parents["w"])
    ),
    parents=["x1", "x2", "w"],
)

# Downstream Bernoulli influenced by y and w
cpd_z = FunctionalCPD(
    "z",
    fn=lambda parents: dist.Bernoulli(
        logits=(-1.2 + 0.8 * parents["y"] + 0.2 * parents["w"])
    ),
    parents=["y", "w"],
)

# Continuous outcome depending on y and w: c = 0.2 + 0.5*y + 0.3*w + ε
cpd_c = FunctionalCPD(
    "c",
    fn=lambda parents: dist.Normal(0.2 + 0.5 * parents["y"] + 0.3 * parents["w"], 0.7),
    parents=["y", "w"],
)

func_bn.add_cpds(cpd_x1, cpd_x2, cpd_w, cpd_y, cpd_z, cpd_c)
func_bn.check_model()

# Simulate data from the model
df_func = func_bn.simulate(n_samples=1000, seed=123)

# For learning and inference in Functional Bayesian Networks, please refer to the example notebook: https://github.com/pgmpy/pgmpy/blob/dev/examples/Functional_Bayesian_Network_Tutorial.ipynb

Contributing

We welcome all contributions --not just code-- to pgmpy. Please refer out contributing guide for more details. We also offer mentorship for new contributors and maintain a list of potential mentored projects. If you are interested in contributing to pgmpy, please join our discord server and introduce yourself. We will be happy to help you get started.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

pgmpy_rcr-0.1.5.tar.gz (10.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

pgmpy_rcr-0.1.5-py3-none-any.whl (8.3 kB view details)

Uploaded Python 3

File details

Details for the file pgmpy_rcr-0.1.5.tar.gz.

File metadata

  • Download URL: pgmpy_rcr-0.1.5.tar.gz
  • Upload date:
  • Size: 10.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.12

File hashes

Hashes for pgmpy_rcr-0.1.5.tar.gz
Algorithm Hash digest
SHA256 6fba8cb5c14d3caa464857e18e2ceeb5c1eaa65cf11780532b5ff19268a54b4d
MD5 ad5560393eee00ba9a543b6ccf82a322
BLAKE2b-256 4574c0453baadc377889ecb98ee4f2d45d0b9095de02b8be3d64362ef2ae49b1

See more details on using hashes here.

File details

Details for the file pgmpy_rcr-0.1.5-py3-none-any.whl.

File metadata

  • Download URL: pgmpy_rcr-0.1.5-py3-none-any.whl
  • Upload date:
  • Size: 8.3 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.12

File hashes

Hashes for pgmpy_rcr-0.1.5-py3-none-any.whl
Algorithm Hash digest
SHA256 f53e8f808d3b39bffeab51b0f1b2ccbfadb92fd0e7e6b348b89fd6450c3cb02f
MD5 c50229d343ae75280c93203ba8d83658
BLAKE2b-256 ea7ff48f55e70e833ba60e407ac581c0eb7ca284931c7f5ff50bcc60a768f430

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page