KR2026Proceedings of the 23rd International Conference on Principles of Knowledge Representation and ReasoningProceedings of the 23rd International Conference on Principles of Knowledge Representation and Reasoning

Lisbon, Portugal. July 20-23, 2026.

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ISSN: 2334-1033
ISBN: 978-1-956792-18-8

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Copyright © 2026 International Joint Conferences on Artificial Intelligence Organization

Causal Discovery as Dialectical Aggregation: A Quantitative Argumentation Framework

  1. Sheng Wei(The College of Computer Science and Technology, Zhejiang University, ZLAIRE, Zhejiang University, The State Key Lab of Brain-Machine Intelligence)
  2. Yulin Chen(The College of Computer Science and Technology, Zhejiang University)
  3. Beishui Liao(School of Philosophy, Zhejiang University, ZLAIRE, Zhejiang University, The State Key Lab of Brain-Machine Intelligence)

Keywords

  1. null-Causal Discovery
  2. null-Quantitative Argumentation
  3. null-Conditional Independence Tests
  4. null-Constraint-based Learning
  5. null-Bayesian Networks

Abstract

Constraint-based causal discovery is brittle in finite-sample regimes because erroneous conditional-independence (CI) decisions can cascade into substantial structural errors. We propose Quantitative Argumentation for Causal Discovery (QACD), a semantics-driven framework that represents CI outcomes as graded, defeasible arguments rather than irreversible constraints. QACD maps statistical test outcomes to argument strengths and aggregates conflicting evidence through connectivity-mediated witness propagation, producing a fixed-point acceptability labeling over candidate adjacencies. Experiments on standard benchmark Bayesian networks suggest that QACD improves structural coherence and interventional reliability in several noisy or inconsistent CI regimes, while remaining competitive with classical constraint-based, hybrid, and prior argumentation-based baselines.