Accelerating material discovery with a threshold-driven hybrid acquisition policy-based Bayesian optimization
Ahmed Shoyeb Raihan, Hamed Khosravi, Srinjoy Das, Imtiaz Ahmed

TL;DR
This paper presents a novel hybrid Bayesian Optimization method that adaptively switches between exploration and exploitation strategies to accelerate material discovery, reducing experimental costs and development time.
Contribution
It introduces the Threshold-Driven UCB-EI Bayesian Optimization (TDUE-BO) that dynamically balances exploration and exploitation for high-dimensional material design spaces.
Findings
TDUE-BO outperforms traditional BO methods in RMSE scores.
The method achieves faster convergence in material datasets.
Efficient navigation of high-dimensional spaces is demonstrated.
Abstract
Advancements in materials play a crucial role in technological progress. However, the process of discovering and developing materials with desired properties is often impeded by substantial experimental costs, extensive resource utilization, and lengthy development periods. To address these challenges, modern approaches often employ machine learning (ML) techniques such as Bayesian Optimization (BO), which streamline the search for optimal materials by iteratively selecting experiments that are most likely to yield beneficial results. However, traditional BO methods, while beneficial, often struggle with balancing the trade-off between exploration and exploitation, leading to sub-optimal performance in material discovery processes. This paper introduces a novel Threshold-Driven UCB-EI Bayesian Optimization (TDUE-BO) method, which dynamically integrates the strengths of Upper Confidence…
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Taxonomy
TopicsMachine Learning in Materials Science · Manufacturing Process and Optimization · Industrial Vision Systems and Defect Detection
