--- license: apache-2.0 task_categories: - graph-ml tags: - causal-discovery - causal-inference - synthetic - gene-regulatory-network pretty_name: CauScale Dataset --- # CauScale Dataset Dataset for **[CauScale: Neural Causal Discovery at Scale](https://arxiv.org/abs/2602.08629)** (ICML 2026). ## Overview This repository contains test data for CauScale, a neural architecture for causal graph discovery that scales to graphs with up to 1000 nodes. ## Files | File | Description | |------|-------------| | `data_test.zip` | Test data for synthetic and SERGIO benchmarks | ## Data Format ### Synthetic Data Generated using linear, neural network, and polynomial structural equation models on Erdős–Rényi (ER) and Scale-Free (SF) graphs. Each instance folder contains: - `DAG{i}.npy` — ground-truth adjacency matrix `(d, d)`, boolean, entry `(i, j) = True` means i → j - `data_interv{i}.npy` — concatenated observational and interventional data `(N, d)` - `intervention{i}.csv` — intervened node index per row (empty = observational) - `regime{i}.csv` — environment index per row (0 = observational, 1..K = interventional) **Test**: 10–1000 nodes, 5 DAGs each, 1000 data points per DAG ### SERGIO Gene Expression Data Simulated single-cell gene expression data using the [SERGIO simulator](https://github.com/PayamDiba/SERGIO). Each instance folder contains: - `DAG.npy` — ground-truth adjacency matrix `(d, d)`, boolean - `data_intv.npy` — interventional data `(N_int, d)` - `intv.npy` — intervention mask `(N_int, d)`, boolean - `data.npy` / `clean.npy` / `dropout.npy` — observational data variants `(150, d)` - `info.json` — metadata **Test**: Nodes 100–200, ER graphs, expected degrees 2 and 4, 5 graphs each, 20000 interventional points ## Usage ```python from huggingface_hub import hf_hub_download path = hf_hub_download( repo_id="OpenCausaLab/causcale-data", filename="data_test.zip", repo_type="dataset", ) ``` See the [CauScale code repository](https://github.com/OpenCausaLab/CauScale) for full training and inference instructions. ## Citation ```bibtex @article{peng2026causcale, title={CauScale: Neural Causal Discovery at Scale}, author={Peng, Bo and Chen, Sirui and Tian, Jiaguo and Qiao, Yu and Lu, Chaochao}, journal={arXiv preprint arXiv:2602.08629}, year={2026} } ```