Towards Self-Adjusting Weighted Expected Improvement for Bayesian Optimization
- verfasst von
- Carolin Benjamins, Elena Raponi, Anja Jankovic, Carola Doerr, Marius Lindauer
- Abstract
In optimization, we often encounter expensive black-box problems
with unknown problem structures. Bayesian Optimization (BO) is
a popular, surrogate-assisted and thus sample-efficient approach
for this setting. The BO pipeline itself is highly configurable with
many different design choices regarding the initial design, surrogate
model and acquisition function (AF). Unfortunately, our understand-
ing of how to select suitable components for a problem at hand is
very limited. In this work, we focus on the choice of the AF, whose
main purpose it is to balance the trade-off between exploring re-
gions with high uncertainty and those with high promise for good
solutions. We propose Self-Adjusting Weighted Expected Improve-
ment (SAWEI), where we let the exploration-exploitation trade-off
self-adjust in a data-driven manner based on a convergence crite-
rion for BO. On the BBOB functions of the COCO benchmark, our
method performs favorably compared to handcrafted baselines and
serves as a robust default choice for any problem structure. With
SAWEI, we are a step closer to on-the-fly, data-driven and robust
BO designs that automatically adjust their sampling behavior to
the problem at hand.- Organisationseinheit(en)
-
Fachgebiet Maschinelles Lernen
Institut für Künstliche Intelligenz
- Externe Organisation(en)
-
Computer Lab of Paris 6 (Lip6)
Sorbonne Université
Centre national de la recherche scientifique (CNRS)
- Typ
- Aufsatz in Konferenzband
- Publikationsdatum
- 2023
- Publikationsstatus
- Angenommen/Im Druck
- Peer-reviewed
- Ja