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arxiv: 2606.03719 · v1 · pith:CUVSMCO6new · submitted 2026-06-02 · 💻 cs.AI

Unveiling the Structure of Do-Calculus Reasoning via Derivation Graphs

classification 💻 cs.AI
keywords do-calculusrulescausalequivalentgraphsinterventionalapplicationsderivation
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The do-calculus defines a general system of inference for interventional queries, allowing causal quantities to be transformed through successive applications of its rules. This process induces a rich space of equivalent interventional expressions, but combining and ordering these rules remains challenging. In this work, we introduce derivation graphs, which represent how do-calculus rules are applied and combined, and characterize the full space of observational and interventional probabilities which are equivalent under the do-calculus. The structure of these graphs yields a simple procedure that uses at most four applications of do-calculus rules. Finally, we show how applying identification algorithms to equivalent causal queries produces multiple valid estimands for the same causal quantity, eventually yielding more efficient estimators.

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