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Transferring Information Across Interventions in Causal Bayesian Optimization

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Bayesian optimization is a popular way to optimize expensive systems, where every experiment, simulation, or intervention costs time or money. In its standard form, it treats the variables we control as plain inputs to a black box and cannot tell apart mere correlation from a real cause and effect. Causal Bayesian optimization closes part of this gap by using a known causal graph together with observational data to decide which variables are worth intervening on. Existing methods, however, learn the effect of each possible intervention almost in isolation, even though in a causal system these effects usually share the same underlying mechanisms. We propose graph-coupled causal Bayesian optimization, which ties the different intervention effects together through the uncertainty we have about a small set of shared causal parameters. The result is a causal kernel that lets evidence collected from one intervention improve our estimate of related interventions. For identifiable linear Gaussian causal models, we show that this kernel has low rank, bounded by the number of shared parameters rather than by the size of the intervention menu. This in turn yields an information-gain bound that grows only logarithmically in the optimization horizon, and a regret bound that cleanly separates three sources of error: optimization, causal estimation, and the choice of which intervention sets to consider. We also describe nonlinear and adaptive extensions. Across theory-aligned Gaussian systems, shared-mechanism stress tests, and standard causal optimization benchmarks, the method keeps the benefits of causal Bayesian optimization while transferring information across related interventions, with the clearest gains when direct interventions on the target's parents are unavailable and sparse interventional data must be reused across a large family of candidate interventions.

Mohammad Ali Javidian• 2026

Related benchmarks

TaskDatasetResultRank
Causal Bayesian OptimizationECOLI70 target #1583, no-parent intervention (intervention sweep)
Mean Score0.893
6
Causal Bayesian OptimizationToy chain
Mean-2.1693
3
Causal Bayesian OptimizationSynthetic DAG
Mean-1.9105
3
Causal Bayesian OptimizationHealthcare PSA
Mean5.1488
3
Causal Bayesian OptimizationECOLI70 yaeM
Mean-4.6304
3
Causal Bayesian OptimizationECOLI70 b1583 no-parent
Mean0.35
2
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