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.
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