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Main Authors: Cissé, Abdoulatif, Evangelopoulos, Xenophon, Gusev, Vladimir V., Cooper, Andrew I.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.16224
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author Cissé, Abdoulatif
Evangelopoulos, Xenophon
Gusev, Vladimir V.
Cooper, Andrew I.
author_facet Cissé, Abdoulatif
Evangelopoulos, Xenophon
Gusev, Vladimir V.
Cooper, Andrew I.
contents Many important scientific problems involve multivariate optimization coupled with slow and laborious experimental measurements. These complex, high-dimensional searches can be defined by non-convex optimization landscapes that resemble needle-in-a-haystack surfaces, leading to entrapment in local minima. Contextualizing optimizers with human domain knowledge is a powerful approach to guide searches to localized fruitful regions. However, this approach is susceptible to human confirmation bias and it is also challenging for domain experts to keep track of the rapidly expanding scientific literature. Here, we propose the use of Large Language Models (LLMs) for contextualizing Bayesian optimization (BO) via a hybrid optimization framework that intelligently and economically blends stochastic inference with domain knowledge-based insights from the LLM, which is used to suggest new, better-performing areas of the search space for exploration. Our method fosters user engagement by offering real-time commentary on the optimization progress, explaining the reasoning behind the search strategies. We validate the effectiveness of our approach on synthetic benchmarks with up to 15 independent variables and demonstrate the ability of LLMs to reason in four real-world experimental tasks where context-aware suggestions boost optimization performance substantially.
format Preprint
id arxiv_https___arxiv_org_abs_2501_16224
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Language-Based Bayesian Optimization Research Assistant (BORA)
Cissé, Abdoulatif
Evangelopoulos, Xenophon
Gusev, Vladimir V.
Cooper, Andrew I.
Machine Learning
Artificial Intelligence
Many important scientific problems involve multivariate optimization coupled with slow and laborious experimental measurements. These complex, high-dimensional searches can be defined by non-convex optimization landscapes that resemble needle-in-a-haystack surfaces, leading to entrapment in local minima. Contextualizing optimizers with human domain knowledge is a powerful approach to guide searches to localized fruitful regions. However, this approach is susceptible to human confirmation bias and it is also challenging for domain experts to keep track of the rapidly expanding scientific literature. Here, we propose the use of Large Language Models (LLMs) for contextualizing Bayesian optimization (BO) via a hybrid optimization framework that intelligently and economically blends stochastic inference with domain knowledge-based insights from the LLM, which is used to suggest new, better-performing areas of the search space for exploration. Our method fosters user engagement by offering real-time commentary on the optimization progress, explaining the reasoning behind the search strategies. We validate the effectiveness of our approach on synthetic benchmarks with up to 15 independent variables and demonstrate the ability of LLMs to reason in four real-world experimental tasks where context-aware suggestions boost optimization performance substantially.
title Language-Based Bayesian Optimization Research Assistant (BORA)
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2501.16224