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为何线性机器学习在铁电薄膜的机电切换中“表现”得如此出色是一件憾事。

Why it is Unfortunate that Linear Machine Learning "Works" so well in Electromechanical Switching of Ferroelectric Thin Films.

作者信息

Qin Shuyu, Guo Yichen, Kaliyev Alibek T, Agar Joshua C

机构信息

Department of Computer Science and Engineering, Lehigh University, Bethlehem, PA, 18015, USA.

Department of Materials Science and Engineering, Lehigh University, Bethlehem, PA, 18015, USA.

出版信息

Adv Mater. 2022 Nov;34(47):e2202814. doi: 10.1002/adma.202202814. Epub 2022 Oct 17.

Abstract

Machine learning (ML) is relied on for materials spectroscopy. It is challenging to make ML models fail because statistical correlations can mimic the physics without causality. Here, using a benchmark band-excitation piezoresponse force microscopy polarization spectroscopy (BEPS) dataset the pitfalls of the so-called "better", "faster", and "less-biased" ML of electromechanical switching are demonstrated and overcome. Using a toy and real experimental dataset, it is demonstrated how linear nontemporal ML methods result in physically reasonable embedding (eigenvalues) while producing nonsensical eigenvectors and generated spectra, promoting misleading interpretations. A new method of unsupervised multimodal hyperspectral analysis of BEPS is demonstrated using long-short-term memory (LSTM) β-variational autoencoders (β-VAEs) . By including LSTM neurons, the ordinal nature of ferroelectric switching is considered. To improve the interpretability of the latent space, a variational Kullback-Leibler-divergency regularization is imposed . Finally, regularization scheduling of β as a disentanglement metric is leveraged to reduce user bias. Combining these experiment-inspired modifications enables the automated detection of ferroelectric switching mechanisms, including a complex two-step, three-state one. Ultimately, this work provides a robust ML method for the rapid discovery of electromechanical switching mechanisms in ferroelectrics and is applicable to other multimodal hyperspectral materials spectroscopies.

摘要

材料光谱学依赖于机器学习(ML)。使ML模型失效具有挑战性,因为统计相关性可以在没有因果关系的情况下模拟物理现象。在这里,使用一个基准带激发压电响应力显微镜偏振光谱(BEPS)数据集,展示并克服了所谓机电开关的“更好”、“更快”和“偏差更小”的ML的陷阱。使用一个玩具和真实实验数据集,展示了线性非时间ML方法如何在产生无意义的特征向量和生成光谱的同时,导致物理上合理的嵌入(特征值),从而促进误导性的解释。使用长短期记忆(LSTM)β-变分自编码器(β-VAE)展示了一种新的BEPS无监督多模态高光谱分析方法。通过纳入LSTM神经元,考虑了铁电开关的有序性质。为了提高潜在空间的可解释性,施加了变分库尔贝克-莱布勒散度正则化。最后,利用β作为解纠缠度量的正则化调度来减少用户偏差。结合这些受实验启发的修改,可以自动检测铁电开关机制,包括复杂的两步、三态机制。最终,这项工作为快速发现铁电体中的机电开关机制提供了一种强大的ML方法,并且适用于其他多模态高光谱材料光谱学。

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