Bounce: Reliable High-Dimensional Bayesian Optimization for Combinatorial and Mixed Spaces

Leonard Papenmeier, Luigi Nardi, Matthias Poloczek

Forskningsoutput: Kapitel i bok/rapport/Conference proceedingKonferenspaper i proceedingPeer review

Sammanfattning

Impactful applications such as materials discovery, hardware design, neural architecture search, or portfolio optimization require optimizing high-dimensional black-box functions with mixed and combinatorial input spaces. While Bayesian optimization has recently made significant progress in solving such problems, an in-depth analysis reveals that the current state-of-the-art methods are not reliable. Their performances degrade substantially when the unknown optima of the function do not have a certain structure. To fill the need for a reliable algorithm for combinatorial and mixed spaces, this paper proposes Bounce that relies on a novel map of various variable types into nested embeddings of increasing dimensionality. Comprehensive experiments show that Bounce reliably achieves and often even improves upon state-of-the-art performance on a variety of high-dimensional problems.

Originalspråkengelska
Titel på värdpublikationAdvances in Neural Information Processing Systems
Volym36
StatusPublished - 2023
Evenemang37th Conference on Neural Information Processing Systems, NeurIPS 2023 - New Orleans, USA
Varaktighet: 2023 dec. 102023 dec. 16

Publikationsserier

NamnAdvances in Neural Information Processing Systems
FörlagMorgan Kaufmann Publishers
ISSN (tryckt)1049-5258

Konferens

Konferens37th Conference on Neural Information Processing Systems, NeurIPS 2023
Land/TerritoriumUSA
OrtNew Orleans
Period2023/12/102023/12/16

Ämnesklassifikation (UKÄ)

  • Signalbehandling

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