BoGrape : Bayesian optimization over graphs with shortest-path encoded

XIE, YILIN and ZHANG, SHIQIANG and Qing, Jixiang and Misener, Ruth and Tsay, Calvin (2026) BoGrape : Bayesian optimization over graphs with shortest-path encoded. In: ICLR 2026, 2026-04-23 - 2026-04-27.

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Abstract

Graph-structured data are central to many scientific and industrial applications where the goal is to optimize expensive black-box objectives defined over graph structures or node configurations---as seen in molecular design, supply chains, and sensor placement. Bayesian optimization offers a principled approach for such settings, but existing methods largely focus on functions defined over nodes of a fixed graph. Moreover, graph optimization is often approached heuristically, and it remains unclear how to systematically incorporate structural constraints into BO. To address these gaps, we build on shortest-path graph kernels to develop a principled framework for acquisition optimization over unseen graph structures and associated node attributes. Through a novel formulation based on mixed-integer programming, we enable global exploration of the combinatorial domain over graph structures and explicit embedding of problem-specific constraints. We demonstrate that our method, BoGrape, is competitive both on general synthetic benchmarks and representative molecular design case studies with application-specific constraints.

Item Type:
Contribution to Conference (Poster)
Journal or Publication Title:
ICLR 2026 : The Fourteenth International Conference on Learning Representations
ID Code:
236952
Deposited By:
Deposited On:
28 May 2026 08:20
Refereed?:
Yes
Published?:
Published
Last Modified:
28 May 2026 22:15