Fast causal division for supporting robust causal discovery

被引:0
|
作者
Mai G. [1 ]
Peng S. [2 ]
Hong Y. [1 ,3 ]
Chen P. [1 ]
机构
[1] School of Computer Science and Technology, Guangdong University of Technology, Guangzhou
[2] School of Automation, Guangdong University of Technology, Guangzhou
[3] School of Physics and Electronic Engineering, Hanshan Normal University, Chaozhou
来源
Hong, Yinghan (honyinghan@163.com) | 1600年 / Inderscience Publishers, 29, route de Pre-Bois, Case Postale 856, CH-1215 Geneva 15, CH-1215, Switzerland卷 / 13期
基金
中国国家自然科学基金;
关键词
Causal inference; Causal network; High dimension;
D O I
10.1504/IJICS.2020.109478
中图分类号
学科分类号
摘要
Discovering the causal relationship from the observational data is a key problem in many scientific research fields. However, it is not easy to detect the causal relationship by using general causal discovery methods among large scale data, due to the curse of the dimension. Although some causal dividing frameworks are proposed to alleviate these problems, they are, in fact, also faced with high dimensional problems. In this work, we propose a split-and-merge method for causal discovery. The original dataset is firstly divided into two smaller subsets by using low-order CI tests, and then the subsets are further divided into a set of smaller subsets. For each subset, we employ the existing causal learning method to discovery the corresponding structures, by combined all these structures, we finally obtain the complete causal structure. Various experiments are conducted to verify that compared with other methods, it returns more reliable results and has strong applicability. Copyright © 2020 Inderscience Enterprises Ltd.
引用
收藏
页码:289 / 308
页数:19
相关论文
共 50 条
  • [1] Fast Causal Division for Supporting High Dimensional Causal Discovery
    Mai, Guizhen
    Peng, Shiguo
    Hong, Yinghan
    Chen, Pinghua
    2017 IEEE INTERNATIONAL CONFERENCE ON COMPUTATIONAL SCIENCE AND ENGINEERING (CSE) AND IEEE/IFIP INTERNATIONAL CONFERENCE ON EMBEDDED AND UBIQUITOUS COMPUTING (EUC), VOL 1, 2017, : 291 - 296
  • [2] Towards Robust Relational Causal Discovery
    Lee, Sanghack
    Honavar, Vasant
    35TH UNCERTAINTY IN ARTIFICIAL INTELLIGENCE CONFERENCE (UAI 2019), 2020, 115 : 345 - 355
  • [3] Towards Robust and Versatile Causal Discovery for Business Applications
    Borboudakis, Giorgos
    Tsamardinos, Ioannis
    KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, : 1435 - 1444
  • [4] Coresets for fast causal discovery with the additive noise model
    Zhao, Boxiang
    Wang, Shuliang
    Chi, Lianhua
    Yuan, Hanning
    Yuan, Ye
    Li, Qi
    Geng, Jing
    Zhang, Shao-Liang
    PATTERN RECOGNITION, 2024, 148
  • [5] Causal discovery using a Bayesian local causal discovery algorithm
    Mani, S
    Cooper, GF
    MEDINFO 2004: PROCEEDINGS OF THE 11TH WORLD CONGRESS ON MEDICAL INFORMATICS, PT 1 AND 2, 2004, 107 : 731 - 735
  • [6] Choosing optimal causal backgrounds for causal discovery
    Barberia, Itxaso
    Baetu, Irina
    Sansa, Joan
    Baker, Andy G.
    QUARTERLY JOURNAL OF EXPERIMENTAL PSYCHOLOGY, 2010, 63 (12): : 2413 - 2431
  • [7] Methods and tools for causal discovery and causal inference
    Nogueira, Ana Rita
    Pugnana, Andrea
    Ruggieri, Salvatore
    Pedreschi, Dino
    Gama, Joao
    WILEY INTERDISCIPLINARY REVIEWS-DATA MINING AND KNOWLEDGE DISCOVERY, 2022, 12 (02)
  • [8] Causal Discovery via Causal Star Graphs
    Zhao, Boxiang
    Wang, Shuliang
    Chi, Lianhua
    Li, Qi
    Liu, Xiaojia
    Geng, Jing
    ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA, 2023, 17 (07)
  • [9] Local Causal Discovery for Estimating Causal Effects
    Gupta, Shantanu
    Childers, David
    Lipton, Zachary C.
    CONFERENCE ON CAUSAL LEARNING AND REASONING, VOL 213, 2023, 213 : 408 - 447
  • [10] Causal discovery for the microbiome
    Corander, Jukka
    Hanage, William P.
    Pensar, Johan
    LANCET MICROBE, 2022, 3 (11): : E881 - E887