Towards Effective Causal Partitioning by Edge Cutting of Adjoint Graph
Causal partitioning is an effective approach for causal discovery based on the divide-and-conquer strategy. Up to now, various heuristic methods based on conditional independence (CI) tests have been proposed for causal partitioning. However, most of these methods fail to achieve satisfactory partit...
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Veröffentlicht in: | IEEE transactions on pattern analysis and machine intelligence 2024-12, Vol.46 (12), p.10259-10271 |
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Zusammenfassung: | Causal partitioning is an effective approach for causal discovery based on the divide-and-conquer strategy. Up to now, various heuristic methods based on conditional independence (CI) tests have been proposed for causal partitioning. However, most of these methods fail to achieve satisfactory partitioning without violating d d -separation, leading to poor inference performance. In this work, we transform causal partitioning into an alternative problem that can be more easily solved. Concretely, we first construct a superstructure G G of the true causal graph G_{\mathcal {T}} GT by performing a set of low-order CI tests on the observed data D D . Then, we leverage point-line duality to obtain a graph G_\mathcal {A} GA adjoint to G G . We show that the solution of minimizing edge-cut ratio on G_\mathcal {A} GA can lead to a valid causal partitioning with smaller causal-cut ratio on G G and without violating d d |
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ISSN: | 0162-8828 1939-3539 1939-3539 2160-9292 |
DOI: | 10.1109/TPAMI.2024.3435503 |