A causal discovery protocol using per-edge RESOLVED/IMPOSSIBLE certificates and gated tiers (LSNM, IGCI, Stein, MDL, PEIT) plus meta-hub and node-children oracle queries to achieve a 1+K expert interaction upper bound for any DAG.
On the Number of Experiments Sufficient and in the Worst Case Necessary to Identify All Causal Relations Among N Variables
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
We show that if any number of variables are allowed to be simultaneously and independently randomized in any one experiment, log2(N) + 1 experiments are sufficient and in the worst case necessary to determine the causal relations among N >= 2 variables when no latent variables, no sample selection bias and no feedback cycles are present. For all K, 0 < K < 1/(2N) we provide an upper bound on the number experiments required to determine causal structure when each experiment simultaneously randomizes K variables. For large N, these bounds are significantly lower than the N - 1 bound required when each experiment randomizes at most one variable. For kmax < N/2, we show that (N/kmax-1)+N/(2kmax)log2(kmax) experiments aresufficient and in the worst case necessary. We over a conjecture as to the minimal number of experiments that are in the worst case sufficient to identify all causal relations among N observed variables that are a subset of the vertices of a DAG.
fields
stat.ML 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Iterative Causal Discovery: Per-Edge Impossibility Certificates, Tier-Aware Oracle Queries, and the $1+K$ Lower Bound
A causal discovery protocol using per-edge RESOLVED/IMPOSSIBLE certificates and gated tiers (LSNM, IGCI, Stein, MDL, PEIT) plus meta-hub and node-children oracle queries to achieve a 1+K expert interaction upper bound for any DAG.