Optimal Observation-Intervention Trade-Off in Optimisation Problems with
Causal Structure
- URL: http://arxiv.org/abs/2309.02287v1
- Date: Tue, 5 Sep 2023 14:46:06 GMT
- Title: Optimal Observation-Intervention Trade-Off in Optimisation Problems with
Causal Structure
- Authors: Kim Hammar and Neil Dhir
- Abstract summary: We show that observation-intervention trade-off can be formulated as a non-myopic optimal stopping problem.
We show that our formulation can enhance existing algorithms on real and synthetic benchmarks.
- Score: 1.724169474984623
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: We consider the problem of optimising an expensive-to-evaluate grey-box
objective function, within a finite budget, where known side-information exists
in the form of the causal structure between the design variables. Standard
black-box optimisation ignores the causal structure, often making it
inefficient and expensive. The few existing methods that consider the causal
structure are myopic and do not fully accommodate the observation-intervention
trade-off that emerges when estimating causal effects. In this paper, we show
that the observation-intervention trade-off can be formulated as a non-myopic
optimal stopping problem which permits an efficient solution. We give
theoretical results detailing the structure of the optimal stopping times and
demonstrate the generality of our approach by showing that it can be integrated
with existing causal Bayesian optimisation algorithms. Experimental results
show that our formulation can enhance existing algorithms on real and synthetic
benchmarks.
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