Skip to content

Code for "On Tractable Computation of Expected Predictions, NeurIPS 2019"

Notifications You must be signed in to change notification settings

UCLA-StarAI/mc2

Repository files navigation

Expected Prediction and Moments for Probabilistic Circuits

Repository for python implementation and experiments for the paper "On Tractable Computation of Expected Predictions, NeurIPS 2019".

Note:

For a faster and well tested and documented implementation of the algorithms in this paper checkout the Juice package ProbabilisticCircuits.jl. Also have GPU support there, so could orders of magnitude faster. This repository is only for reproducing the paper results and not maintained anymore.

Repository Structure

  • circuit_expect.py includes the implementation of the algorithm for computing expectation and moments for pair of probabilistic circuits. This implementation uses pypsdd and LogisticCircuit libraries for learning and representing the circuits.

  • The ./pypsdd folder includes a copy of the pypsdd library with some modifications to make it compatible with Python 3.

  • The ./LogisticCircuit library includes a copy of the LogisticCircuit library with some additions and modifications to also enable RegressionCircuits.

  • The folder ./scripts include some pyhton scripts to help running the experiments, they range from preprocessing data, learning circuits (psdd, logistic circuit, regression circuit), parallelizing experiments, etc. Additionally, ./scripts/cmd_examples constains some command ling examples of how to use the scripts.

  • The folder ./data includes the datasets used for the experiments.

  • The folder ./exp includes results such as the learned circuits, and raw results from "missing data experiments".

About

Code for "On Tractable Computation of Expected Predictions, NeurIPS 2019"

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published