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do-calculus

DoWhy is a Python library for causal inference that supports explicit modeling and testing of causal assumptions. DoWhy is based on a unified language for causal inference, combining causal graphical models and potential outcomes frameworks.

Python
7664
9 天前

A Python implementation of the do-calculus of Judea Pearl et al.

Python
28
3 年前

Summary of useful results in Causal Inference

TeX
20
4 年前

Use regression, inverse probability weighting, and matching to close confounding backdoors and find causation in observational data

14
5 年前

"Causality: Models, Reasoning, and Inference-Judea Pearl(2009)"中文翻译及学习笔记

JavaScript
13
4 年前

A Powerful Python Library for Causal Inference

Python
5
3 年前

Automatically determine whether a causal effect is identifiable

Julia
2
4 年前

This repository contains an implementation of BP-CDM introduced in "Data-Driven Decision Support for Business Processes: Causal Reasoning on Interventions".

Jupyter Notebook
1
2 年前

Bayesian Causal Inference in Doubly Gaussian DAG-probit Models

R
0
1 年前

Basic demonstration of causal effects for Pearl's do-calculus

Jupyter Notebook
0
6 年前

# exam-cauThis repository contains the `exam-cau.cls` file, a LaTeX template designed for exam papers at China Agricultural University. It supports automatic font adaptation across platforms and offers features like question numbering and customizable exam details. 📝✨

TeX
0
1 个月前