bradyneal / causal-book-code
☆76Updated 4 years ago
Alternatives and similar repositories for causal-book-code:
Users that are interested in causal-book-code are comparing it to the libraries listed below
- Realistic benchmark for different causal inference methods. The realism comes from fitting generative models to data with an assumed caus…☆71Updated 3 years ago
- Flowchart to help choose which causal inference book to read. See https://bradyneal.github.io/which-causal-inference-book for more info s…☆58Updated 5 years ago
- Short tutorials on the use of machine learning methods for causal inference☆49Updated 2 years ago
- A curated list of awesome work on causal inference, particularly in machine learning.☆99Updated 3 years ago
- List of python packages for causal inference☆17Updated 3 years ago
- The cause2e package provides tools for performing an end-to-end causal analysis of your data. Developed by Daniel Grünbaum (@dg46).☆58Updated last year
- GRAPL: A computational library for nonparametric structural causal modelling, analysis and inference☆80Updated 2 months ago
- Non-parametrics for Causal Inference☆43Updated 2 years ago
- Data derived from the Linked Births and Deaths Data (LBIDD); simulated pairs of treatment assignment and outcomes; scoring code☆81Updated 6 years ago
- Demo data and code for "Sense and Sensitivity Analysis: Simple Post-Hoc Analysis of Bias Due to Unobserved Confounding".☆27Updated 3 years ago
- EconML/CausalML KDD 2021 Tutorial☆161Updated last year
- Implementation of Deep IV: A Flexible Approach for Counterfactual Prediction☆155Updated 3 years ago
- Code to run submissions for the Atlantic Causal Inference Competition☆42Updated 6 months ago
- Materials Collection for Causal Inference☆43Updated last year
- Data for and description of the ACIC 2023 data competition☆32Updated last year
- Reimplementation of NOTEARS in Tensorflow☆34Updated last year
- Scalable open-source software to run, develop, and benchmark causal discovery algorithms☆67Updated last month
- Assessing Disparate Impacts of Personalized Interventions: Identifiability and Bounds☆11Updated 5 years ago
- A Python Package providing two algorithms, DAME and FLAME, for fast and interpretable treatment-control matches of categorical data☆56Updated 8 months ago
- ☆87Updated 4 years ago
- Sklearn-style implementations of Neural Network-based Conditional Average Treatment Effect (CATE) Estimators.☆136Updated 8 months ago
- Resources related to causality☆260Updated last year
- Software and pre-processed data for "Using Embeddings to Correct for Unobserved Confounding in Networks"☆55Updated last year
- 💊 Comparing causality methods in a fair and just way.☆138Updated 4 years ago
- Extensive tutorials for learning how to build deep learning models for causal inference (HTE) using selection on observables in Tensorflo…☆312Updated 4 months ago
- ☆181Updated 2 years ago
- This repository captures source code and data sets for our paper at the Causal Discovery & Causality-Inspired Machine Learning Workshop a…☆59Updated 6 months ago
- Example causal datasets with consistent formatting and ground truth☆77Updated last year
- 💉📈 Dose response networks (DRNets) are a method for learning to estimate individual dose-response curves for multiple parametric treatm…☆87Updated last year
- Causal Inference & Deep Learning, MIT IAP 2018☆85Updated 7 years ago