Trust Your del: Gradient-based Intervention Targeting for Causal Discovery

被引:0
|
作者
Olko, Mateusz [1 ,2 ]
Zajac, Michal [3 ]
Nowak, Aleksandra [2 ,3 ,4 ]
Scherrer, Nino [5 ]
Annadani, Yashas [6 ]
Bauer, Stefan [6 ]
Kucinski, Lukasz [2 ,7 ]
Milos, Piotr [2 ,7 ,8 ]
机构
[1] Warsaw Univ, Warsaw, Poland
[2] IDEAS NCBR, Warsaw, Poland
[3] Jagiellonian Univ, Fac Math & Comp Sci, Krakow, Poland
[4] Jagiellonian Univ, Doctoral Sch Exact & Nat Sci, Krakow, Poland
[5] Swiss Fed Inst Technol, Zurich, Switzerland
[6] Tech Univ Munich, Helmholtz, Munich, Germany
[7] Deepsense Ai, Warsaw, Poland
[8] Polish Acad Sci, Inst Math, Warsaw, Poland
关键词
NETWORKS;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Inferring causal structure from data is a challenging task of fundamental importance in science. Often, observational data alone is not enough to uniquely identify a system's causal structure. The use of interventional data can address this issue, however, acquiring these samples typically demands a considerable investment of time and physical or financial resources. In this work, we are concerned with the acquisition of interventional data in a targeted manner to minimize the number of required experiments. We propose a novel Gradient-based Intervention Targeting method, abbreviated GIT, that 'trusts' the gradient estimator of a gradient-based causal discovery framework to provide signals for the intervention targeting function. We provide extensive experiments in simulated and real-world datasets and demonstrate that GIT performs on par with competitive baselines, surpassing them in the low-data regime.
引用
收藏
页数:31
相关论文
共 11 条
  • [1] Gradient-based causal discovery with latent variables
    Ni, Haotian
    Wang, Tian-Zuo
    Tao, Hong
    Huang, Xiuqi
    Hou, Chenping
    MACHINE LEARNING, 2025, 114 (02)
  • [2] BayesDAG: Gradient-Based Posterior Inference for Causal Discovery
    KTH Royal Institute of Technology, Stockholm, Sweden
    不详
    不详
    不详
    arXiv,
  • [3] Masked Gradient-Based Causal Structure Learning
    Ng, Ignavier
    Zhu, Shengyu
    Fang, Zhuangyan
    Li, Haoyang
    Chen, Zhitang
    Wang, Jun
    PROCEEDINGS OF THE 2022 SIAM INTERNATIONAL CONFERENCE ON DATA MINING, SDM, 2022, : 424 - 432
  • [4] Gradient-Based Local Causal Structure Learning
    Liang, Jiaxuan
    Wang, Jun
    Yu, Guoxian
    Domeniconi, Carlotta
    Zhang, Xiangliang
    Guo, Maozu
    IEEE TRANSACTIONS ON CYBERNETICS, 2024, 54 (01) : 486 - 495
  • [5] Radius of trust: Gradient-based conceptualization and measurement
    Hu, Anning
    SOCIAL SCIENCE RESEARCH, 2017, 68 : 147 - 162
  • [6] Gradient-based MCMC samplers for dynamic causal modelling
    Sengupta, Biswa
    Friston, Karl J.
    Penny, Will D.
    NEUROIMAGE, 2016, 125 : 1107 - 1118
  • [7] Toward a connectivity gradient-based framework for reproducible biomarker discovery
    Hong, Seok-Jun
    Xu, Ting
    Nikolaidis, Aki
    Smallwood, Jonathan
    Margulies, Daniel S.
    Bernhardt, Boris
    Vogelstein, Joshua
    Milham, Michael P.
    NEUROIMAGE, 2020, 223
  • [8] Bicycle: Intervention-Based Causal Discovery with Cycles
    Rohbeck, Martin
    Clarke, Brian
    Mikulik, Katharina
    Pettet, Alexandra
    Stegle, Oliver
    Ueltzhoeffer, Kai
    CAUSAL LEARNING AND REASONING, VOL 236, 2024, 236 : 209 - 242
  • [9] A gradient-based trust radius update suitable for saddle point and transition state optimization
    Ayers, Paul W.
    Rabi, Sandra
    INDIAN JOURNAL OF CHEMISTRY SECTION A-INORGANIC BIO-INORGANIC PHYSICAL THEORETICAL & ANALYTICAL CHEMISTRY, 2014, 53 (8-9): : 1036 - 1042
  • [10] Hard Prompts Made Easy: Gradient-Based Discrete Optimization for Prompt Tuning and Discovery
    Wen, Yuxin
    Jain, Neel
    Kirchenbauer, John
    Goldblum, Micah
    Geiping, Jonas
    Goldstein, Tom
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,