❓y0 (pronounced "why not?") is for causal inference in Python
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Updated
Jun 27, 2026 - Jupyter Notebook
❓y0 (pronounced "why not?") is for causal inference in Python
Machine learning research code for causal perception: comparing competing structural causal models (SCMs) via interventional and counterfactual distributions, applied to fair credit decisions. Open source by Santander AI Lab.
This is the code for the paper Jacobian-based Causal Discovery with Nonlinear ICA, demonstrating how identifiable representations (particularly, with Nonlinear ICA) can be used to extract the causal graph from an underlying structural equation model (SEM).
Code and real data for "Counterfactual Temporal Point Processes", NeurIPS 2022
Generate dynamic structural causal models from biological knowledge graphs encoded in the Biological Expression Language (BEL)
Python project on Structural Causal Models and Reinforcement Learning, at Utrecht University.
Generate fictional-but-coherent causal operations worlds (executable sim + time-series + ground-truth causal answer-key) from a natural-language description — for benchmarking causal-discovery and control agents.
[MM'2024] Efficient Dual-Confounding Eliminating for Weakly-supervised Temporal Action Localization
Structural Causal Model (SCM) approach to explainable reinforcement learning
Temporal Causal-based Simulation (TCS)
End-to-End PyTorch implementation of Chang & Kim's (2026) iVDFM pipeline, Includes: amortized encoder, RegimeNet simplex embeddings, Laplace PriorNet, diagonal AR(p) companion-form dynamics, and injective MLP decoder. Trained via ELBO with reparameterized Laplace innovations. Benchmarked against iTransformer and TimeMixer baselines.
A causal inference-based portfolio optimization framework that models causal relationships between macro factors and asset clusters using DAGs.
🧠 Causal Digital Twin for Marketing at Scale · Predict any marketing decision before you spend a dollar.
Code for the paper "Adversarial Causal Tuning for Realistic Time-series Generation".
Code for presenting and evaluating search algorithms for actual causes identification
ESA-2SCM for Causal Discovery: Causal Modeling with Elastic Segmentation-based Synthetic Instrumental Variable
Counterfactual inference for 3D brain imaging using deep structural causal models.
Code for the python model `actualcauses` that implements algorithms for HP-causes identification.
Causal fairness audit and counterfactual recourse engine using DoWhy DAGs, EconML Double Machine Learning, and structural causal models on the UCI Adult dataset. Amazon ML Summer School 2026 — Causal Inference track.
Fidelity-gated synthetic SCM that stress-tests probability-of-default modeling under selective labels and reports the model's honest operating frontier. The do() oracle real lending data can't be. Grades g-computation vs naive conditioning against planted ground truth. sklearn-only; 66 tests; fully deterministic.
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