Metadata-Version: 2.1
Name: gcastle
Version: 1.0.3rc3
Summary: gCastle is the fundamental package for causal structure learning with Python.
Home-page: https://github.com/huawei-noah/trustworthyAI/tree/master/gcastle
Author: Huawei Noah's Ark Lab
Author-email: zhangkeli1@huawei.com
License: Apache License 2.0
Description: # gCastle
        
        [中文版本](./README.cn.md)
        
        Version 1.0.3rc2 released.
        
        The real datasets (id:10, 21, 22) used in [PCIC Causal Discovery Competition 2021 ](https://competition.huaweicloud.com/information/1000041487/introduction) have been released on the github: [temporary link](https://github.com/gcastle-hub/dataset).
        
        ## Introduction
        
        gCastle is a causal structure learning toolchain developed by [Huawei Noah's Ark Lab](https://www.noahlab.com.hk/#/home). The package contains various functionality related to causal learning and evaluation, including: 
        * Data generation and processing: data simulation, data reading operators, and data pre-processing operators（such as prior injection and variable selection).
        * Causal structure learning: causal structure learning methods, including both classic and recently developed methods, especially gradient-based ones that can handle large problems.
        * Evaluation metrics: various commonly used metrics for causal structure learning, including F1, SHD, FDR, TPR, FDR, NNZ, etc.
        
        ## Algorithm List
        
        | Algorithm | Category | Description | Status |
        | :--: | :-- | :-- | :--: |
        | [PC](https://arxiv.org/abs/math/0510436) | IID/Constraint-based | A classic causal discovery algorithm based on conditional independence tests | v1.0.1 |
        | [ANM](https://webdav.tuebingen.mpg.de/causality/NIPS2008-Hoyer.pdf) | IID/Function-based | Nonlinear causal discovery with additive noise models | v1.0.3rc1 |
        | [DirectLiNGAM](https://arxiv.org/abs/1101.2489) | IID/Function-based | A direct learning algorithm for linear non-Gaussian acyclic model (LiNGAM) | v1.0.1 |
        | [ICALiNGAM](https://dl.acm.org/doi/10.5555/1248547.1248619) | IID/Function-based | An ICA-based learning algorithm for linear non-Gaussian acyclic model (LiNGAM) | v1.0.1 |
        | [NOTEARS](https://arxiv.org/abs/1803.01422) | IID/Gradient-based | A gradient-based algorithm for linear data models (typically with least-squares loss) | v1.0.1 |
        | [NOTEARS-MLP](https://arxiv.org/abs/1909.13189) | IID/Gradient-based | A gradient-based algorithm using neural network modeling for non-linear causal relationships | v1.0.1 |
        | [NOTEARS-SOB](https://arxiv.org/abs/1909.13189) | IID/Gradient-based | A gradient-based algorithm using Sobolev space modeling for non-linear causal relationships | v1.0.1 |
        | [NOTEARS-lOW-RANK](https://arxiv.org/abs/2006.05691) | IID/Gradient-based | Adapting NOTEARS for large problems with low-rank causal graphs | v1.0.1 |
        | [GOLEM](https://arxiv.org/abs/2006.10201) | IID/Gradient-based | A more efficient version of NOTEARS that can reduce number of optimization iterations | v1.0.1 |
        | [GraNDAG](https://arxiv.org/abs/1906.02226) | IID/Gradient-based | A gradient-based algorithm using neural network modeling for non-linear additive noise data  | v1.0.1 |
        | [MCSL](https://arxiv.org/abs/1910.08527) | IID/Gradient-based | A gradient-based algorithm for non-linear additive noise data by learning the binary adjacency matrix| v1.0.1 |
        | [GAE](https://arxiv.org/abs/1911.07420) | IID/Gradient-based | A gradient-based algorithm using graph autoencoder to model non-linear causal relationships| testing |
        | [RL](https://arxiv.org/abs/1906.04477) | IID/Gradient-based | A RL-based algorithm that can work with flexible score functions (including non-smooth ones) | v1.0.3rc1 |
        | [CORL](https://arxiv.org/abs/2105.06631) | IID/Gradient-based | A RL- and order-based algorithm that improves the efficiency and scalability of previous RL-based approach | v1.0.3rc1 |
        | [TTPM](https://arxiv.org/abs/2105.10884) | EventSequence/Function-based | A causal structure learning algorithm based on Topological Hawkes process for spatio-temporal event sequences |v1.0.1 |
        | [HPCI](https://arxiv.org/abs/2105.03092) | EventSequence/Hybrid | A causal structure learning algorithm based on Hawkes process and CI tests for event sequences | under development. |
        
        
        ## Installation
        
        ### Dependencies
        gCastle requires:
        - python (>= 3.6, <=3.9)
        - tqdm (>= 4.48.2)
        - numpy (>= 1.19.1)
        - pandas (>= 0.22.0)
        - scipy (>= 1.7.3)
        - scikit-learn (>= 0.21.1)
        - matplotlib (>=2.1.2)
        - networkx (>= 2.5)
        - torch (>= 1.9.0)
        
        
        ### PIP installation
        ```bash
        pip install gcastle==1.0.3rc2
        ```
        
        ## Usage Example (PC algorithm)
        ```python
        from castle.common import GraphDAG
        from castle.metrics import MetricsDAG
        from castle.datasets import IIDSimulation, DAG
        from castle.algorithms import PC
        
        # data simulation, simulate true causal dag and train_data.
        weighted_random_dag = DAG.erdos_renyi(n_nodes=10, n_edges=10, 
                                              weight_range=(0.5, 2.0), seed=1)
        dataset = IIDSimulation(W=weighted_random_dag, n=2000, method='linear', 
                                sem_type='gauss')
        true_causal_matrix, X = dataset.B, dataset.X
        
        # structure learning
        pc = PC()
        pc.learn(X)
        
        # plot predict_dag and true_dag
        GraphDAG(pc.causal_matrix, true_causal_matrix, 'result')
        
        # calculate metrics
        mt = MetricsDAG(pc.causal_matrix, true_causal_matrix)
        print(mt.metrics)
        ```
        You can visit [examples](./example) to find more examples.
        
        
        ## Citation
        If you find gCastle useful in your research, please consider citing the the following [paper](https://arxiv.org/abs/2111.15155):
        ```
        @misc{zhang2021gcastle,
          title={gCastle: A Python Toolbox for Causal Discovery}, 
          author={Keli Zhang and Shengyu Zhu and Marcus Kalander and Ignavier Ng and Junjian Ye and Zhitang Chen and Lujia Pan},
          year={2021},
          eprint={2111.15155},
          archivePrefix={arXiv},
          primaryClass={cs.LG}
        }
        ```
        
        ## Next Up & Contributing
        This is the first released version of gCastle, we'll be continuously complementing and optimizing the code and documentation. We welcome new contributors of all experience levels, the specifications about how to contribute code will be coming out soon. If you have any questions or suggestions (such as, contributing new algorithms, optimizing code, improving documentation), please submit an issue here. We will reply as soon as possible.
        
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Operating System :: OS Independent
Requires-Python: >=3.6
Description-Content-Type: text/markdown
