Abstract

Preferential Bayesian Optimization (PBO) is a sample-efficient method to learn latent user utilities from preferential feedback over a pair of designs. It relies on a statistical surrogate model for the latent function, usually a Gaussian process, and an acquisition strategy to select the next candidate pair to get user feedback on. Due to the non-conjugacy of the associated likelihood, every PBO step requires a significant amount of computations with various approximate inference techniques. This computational overhead is incompatible with the way humans interact with computers, hindering the use of PBO in real-world cases. Building on the recent advances of amortized BO, we propose to circumvent this issue by fully amortizing PBO, meta-learning both the surrogate and the acquisition function. Our method comprises a novel transformer neural process architecture, trained using reinforcement learning and tailored auxiliary losses. On a benchmark composed of synthetic and real-world datasets, our method is several orders of magnitude faster than the usual Gaussian process-based strategies and often outperforms them in accuracy.

Original languageEnglish
Title of host publication13th International Conference on Learning Representations, ICLR 2025
PublisherCurran Associates Inc.
Pages98689-98713
Number of pages25
ISBN (Electronic)9798331320850
Publication statusPublished - 2025
MoE publication typeA4 Conference publication
EventInternational Conference on Learning Representations - Singapore, Singapore, Singapore
Duration: 24 Apr 202528 Apr 2025
Conference number: 13
https://iclr.cc/

Conference

ConferenceInternational Conference on Learning Representations
Abbreviated titleICLR
Country/TerritorySingapore
CitySingapore
Period24/04/202528/04/2025
Internet address

Funding

XZ, DH and SK were supported by the Research Council of Finland (Flagship programme: Finnish Center for Artificial Intelligence FCAI and decision 341763). SK was also supported by the UKRI Turing AI World-Leading Researcher Fellowship, [EP/W002973/1]. The authors wish to thank Aalto Science-IT project, for the computational and data storage resources provided.

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  • Science-IT

    Hakala, M. (Manager)

    School of Science

    Facility/equipment: Facility

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