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The Causal Uncertainty Principle: Manifold Tearing and the Topological Limits of Counterfactual Interventions

arXiv cs.LG / 3/19/2026

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Key Points

  • The paper defines the Counterfactual Event Horizon and proves the Manifold Tearing Theorem, showing that deterministic flows inevitably develop finite-time singularities under extreme interventions.
  • It articulates the Causal Uncertainty Principle, describing a trade-off between intervention extremity and identity preservation.
  • The authors propose Geometry-Aware Causal Flow (GACF), a scalable algorithm that uses a topological radar to bypass manifold tearing.
  • GACF is validated on high-dimensional scRNA-seq data, demonstrating practical applicability to complex biological data.

Abstract

Judea Pearl's do-calculus provides a foundation for causal inference, but its translation to continuous generative models remains fraught with geometric challenges. We establish the fundamental limits of such interventions. We define the Counterfactual Event Horizon and prove the Manifold Tearing Theorem: deterministic flows inevitably develop finite-time singularities under extreme interventions. We establish the Causal Uncertainty Principle for the trade-off between intervention extremity and identity preservation. Finally, we introduce Geometry-Aware Causal Flow (GACF), a scalable algorithm that utilizes a topological radar to bypass manifold tearing, validated on high-dimensional scRNA-seq data.