Heteroscedastic Gaussian Process Regression for material structure–property relationship modeling

IF 6.9 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
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引用次数: 0

Abstract

Uncertainty quantification is a critical aspect of machine learning models for material property predictions. Gaussian Process Regression (GPR) is a popular technique for capturing uncertainties, but most existing models assume homoscedastic aleatoric uncertainty (noise), which may not adequately represent the heteroscedastic behavior observed in real-world datasets. Heteroscedasticity arises from various factors, such as measurement errors and inherent variability in material properties. Ignoring heteroscedasticity can lead to lower model performance, biased uncertainty estimates, and inaccurate predictions. Existing Heteroscedastic Gaussian Process Regression (HGPR) models often employ complicated structures to capture input-dependent noise but may lack interpretability. In this paper, we propose an HGPR approach that combines GPR with polynomial regression-based noise modeling to capture and quantify uncertainties in material property predictions while providing interpretable noise models. We demonstrate the effectiveness of our approach on both synthetic and physics-based simulation datasets, including mechanical properties (effective stress) of porous materials. We also introduce an approximated expected log predictive density method for model selection, which eliminates the need for retraining the model during leave-one-out cross-validation, allowing for efficient hyperparameter tuning and model evaluation. By capturing heteroscedastic behavior, enhancing interpretability, and improving model selection, our approach contributes to the development of more robust and reliable machine learning models for material property predictions, enabling informed decision-making in material design and optimization.

用于材料结构-性能关系建模的异方差高斯过程回归
不确定性量化是材料特性预测机器学习模型的一个重要方面。高斯过程回归(GPR)是一种捕捉不确定性的流行技术,但大多数现有模型都假定存在同弹性的不确定性(噪声),这可能无法充分反映真实世界数据集中观察到的异弹性行为。异方差产生于多种因素,如测量误差和材料属性的固有变异性。忽略异方差会导致模型性能降低、不确定性估计偏差和预测不准确。现有的异方差高斯过程回归(HGPR)模型通常采用复杂的结构来捕捉输入相关噪声,但可能缺乏可解释性。在本文中,我们提出了一种 HGPR 方法,它将 GPR 与基于多项式回归的噪声建模相结合,以捕捉和量化材料属性预测中的不确定性,同时提供可解释的噪声模型。我们在合成数据集和基于物理的模拟数据集(包括多孔材料的机械属性(有效应力))上演示了这种方法的有效性。我们还介绍了一种用于模型选择的近似预期对数预测密度方法,该方法无需在留一交叉验证过程中重新训练模型,从而实现了高效的超参数调整和模型评估。通过捕捉异方差行为、提高可解释性和改进模型选择,我们的方法有助于为材料性能预测开发更稳健可靠的机器学习模型,从而在材料设计和优化方面做出明智的决策。
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来源期刊
CiteScore
12.70
自引率
15.30%
发文量
719
审稿时长
44 days
期刊介绍: Computer Methods in Applied Mechanics and Engineering stands as a cornerstone in the realm of computational science and engineering. With a history spanning over five decades, the journal has been a key platform for disseminating papers on advanced mathematical modeling and numerical solutions. Interdisciplinary in nature, these contributions encompass mechanics, mathematics, computer science, and various scientific disciplines. The journal welcomes a broad range of computational methods addressing the simulation, analysis, and design of complex physical problems, making it a vital resource for researchers in the field.
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