Causal discovery using dynamically requested knowledge

被引:0
|
作者
Kitson, Neville K. [1 ]
Constantinou, Anthony C. [1 ]
机构
[1] Queen Mary Univ London QMUL, Sch Elect Engn & Comp Sci, Bayesian Artificial Intelligence Res Lab, Machine Intelligence & Decis Syst MInDS Res Grp, London E1 4NS, England
关键词
Causal discovery; Active learning; Information fusion; Structure learning; Knowledge constraints; Bayesian networks; LEARNING ALGORITHMS; NETWORK STRUCTURES; SEARCH; MODEL;
D O I
10.1016/j.knosys.2025.113185
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Causal Bayesian Networks (CBNs) are an important tool for reasoning under uncertainty in complex real-world systems. Determining the graphical structure of a CBN remains a key challenge and is undertaken either by eliciting it from humans, using machine learning to learn it from data, or using a combination of these two approaches. In the latter case, human knowledge is generally provided to the algorithm before it starts, but here we investigate a novel approach where the structure learning algorithm itself dynamically identifies and requests knowledge for relationships that the algorithm identifies as "uncertain"during structure learning. We integrate this approach into the Tabu structure learning algorithm and show that it offers considerable gains in structural accuracy, which are generally larger than those offered by existing approaches for integrating knowledge. We suggest that a variant which requests only arc orientation information may be particularly useful where the practitioner has little preexisting knowledge of the causal relationships. As well as offering improved accuracy, the approach can use human expertise more effectively and contributes to making the structure learning process more transparent.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Knowledge transfer for causal discovery
    Rodriguez-Lopez, Veronica
    Sucar, Luis Enrique
    INTERNATIONAL JOURNAL OF APPROXIMATE REASONING, 2022, 143 : 1 - 25
  • [2] Knowledge Mining using Generative AI for Causal Discovery in Electronics Production
    Meier, Sven
    Toeper, Florian
    Gebele, Jonas
    Rachinger, Ben
    Klarmann, Steffen
    Franke, Joerg
    2024 47TH INTERNATIONAL SPRING SEMINAR ON ELECTRONICS TECHNOLOGY, ISSE 2024, 2024,
  • [3] 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
  • [4] ARISTA causal knowledge discovery from texts
    Kontos, J
    Elmaoglou, A
    Malagardi, I
    DISCOVERY SCIENCE, PROCEEDINGS, 2002, 2534 : 348 - 355
  • [5] Causality, causal discovery, causal inference and counterfactuals in Civil Engineering: Causal machine learning and case studies for knowledge discovery
    Naser, M. Z.
    Tapeh, Arash Teymori Gharah
    COMPUTERS AND CONCRETE, 2023, 31 (04): : 277 - 292
  • [6] Knowledge discovery from observational data for process control using causal Bayesian networks
    Li, Jing
    Shi, Jianjun
    IIE TRANSACTIONS, 2007, 39 (06) : 681 - 690
  • [7] Actionable knowledge discovery from social networks using causal structures of structural features
    Kalanat, Nasrin
    Khanshan, Alireza
    Khanjari, Eynollah
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2020, 39 (01) : 489 - 501
  • [8] Integrating Ontological Knowledge for Iterative Causal Discovery and Visualization
    Ben Messaoud, Montassar
    Leray, Philippe
    Ben Amor, Nahla
    SYMBOLIC AND QUANTITATIVE APPROACHES TO REASONING WITH UNCERTAINTY, PROCEEDINGS, 2009, 5590 : 168 - +
  • [9] Causal Rule Mining for Knowledge Discovery from Databases
    Bhoopathi, Harchana
    Rama, B.
    2017 INTERNATIONAL CONFERENCE ON INTELLIGENT COMPUTING AND CONTROL SYSTEMS (ICICCS), 2017, : 978 - 984
  • [10] Reliable Knowledge Discovery with A Minimal Causal Model Inducer
    Dai, Honghua
    Keble-Johnston, Sarah
    Gan, Min
    12TH IEEE INTERNATIONAL CONFERENCE ON DATA MINING WORKSHOPS (ICDMW 2012), 2012, : 629 - 634