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authorCathy Yeh <cathy@driver.xyz>2018-02-03 19:50:34 -0800
committerCathy Yeh <cathy@driver.xyz>2018-02-06 10:01:16 -0800
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readme
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# beliefs
+
+A library for performing inference with Bayesian Networks for a
+special use case, derived
+from [pgmpy](https://github.com/pgmpy/pgmpy).
+
+
+## Motivation
+
+**Exact inference**
+
+This library provides the ability to perform exact inference in a
+computationally tractable* way for a specific but useful case: Bayesian
+Networks with
+* polytree structure
+* consisting of Bernoulli random variables whose relationship to their
+ parents in the probabilistic graphical model are described by AND or
+ OR logic
+
+Non-deterministic conditional probability distributions for
+multinomial, discrete random variables are also supported, although
+the algorithm is specifically optimized for the case of Bernoulli AND
+and Bernoulli OR variables.
+
+*See the "Many parents model" in
+ the
+ [jupyter notebook](https://render.githubusercontent.com/view/ipynb?commit=73aa4a35d08f1c16569bc78d176710381b9e9605&enc_url=68747470733a2f2f7261772e67697468756275736572636f6e74656e742e636f6d2f64726976657267726f75702f62656c696566732f373361613461333564303866316331363536396263373864313736373130333831623965393630352f6578616d706c65732f636f6d706172655f70676d70795f62656c6965665f70726f7061676174696f6e2e6970796e623f746f6b656e3d4158386c536f5a35622d2d7848394a736a58727a65345a7846587531333150426b733561646f4f567741253344253344&nwo=drivergroup%2Fbeliefs&path=examples%2Fcompare_pgmpy_belief_propagation.ipynb&repository_id=110306600&repository_type=Repository#IV.-Many-parents-model) under
+ the examples/ directory for an example of a case in which
+ inference becomes computationally intractable with pgmpy but can
+ be handled by beliefs optimized algorithm.
+
+## Additional features
+
+* In addition to being able to perform inference based on direct
+ observation of a variable in the PGM, beliefs also provides the
+ ability to specify virtual evidence, i.e. evidence that modifies the
+ belief, or marginal probability, of a variable by affecting its
+ likelihood based on observations of variables not in the PGM, while
+ not pinning the variable into a definite (observed) state.
+* The ability to catch conflicting evidence errors during inference,
+ which manifest as numpy NaNs in pgmpy's inference results.
+* Utility for gathering the direct observations that influenced the
+ beliefs of variables that were inferred to be in a definite state.
+
+
+## Getting started
+
+### Installation
+
+Using conda:
+```
+conda install -c driver beliefs
+```
+
+### Example
+
+Perform inference on a Bayesian Network:
+```python
+from beliefs.inference.belief_propagation import BeliefPropagation
+from beliefs.models.belief_update_node_model import (
+ BeliefUpdateNodeModel,
+ BernoulliOrNode
+)
+
+# directed edges for a polytree Bayes Net
+edges = [('u', 'x'), ('v', 'x'), ('x', 'y'), ('x', 'z')
+
+# initialize model w/ edges, default to OR CPD for all variables
+model = BeliefUpdateNodeModel.init_from_edges(edges, BernoulliOrNode)
+
+# initialize inference
+infer = BeliefPropagation(model)
+
+# perform inference, with 'x' is observed to be True.
+result = infer.query(evidence={'x': np.array([0, 1])})
+```
+
+## Tests
+
+From the project root directory:
+```
+pytest tests -vv
+```
+
+## License
+This project is licensed under the terms of the MIT license.