Encoder–decoder neural networks in interpretation of X-ray spectra

IF 1.8 4区 物理与天体物理 Q2 SPECTROSCOPY
Jalmari Passilahti, Anton Vladyka, Johannes Niskanen
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引用次数: 0

Abstract

Encoder–decoder neural networks (EDNN) condense information most relevant to the output of the feedforward network to activation values at a bottleneck layer. We study the use of this architecture in emulation and interpretation of simulated X-ray spectroscopic data with the aim to identify key structural characteristics for the spectra, previously studied using emulator-based component analysis (ECA). We find an EDNN to outperform ECA in covered target variable variance, but also discover complications in interpreting the latent variables in physical terms. As a compromise of the benefits of these two approaches, we develop a network where the linear projection of ECA is used, thus maintaining the beneficial characteristics of vector expansion from the latent variables for their interpretation. These results underline the necessity of information recovery after its condensation and identification of decisive structural degrees of freedom for the output spectra for a justified interpretation.
解读 X 射线光谱的编码器-解码器神经网络
编码器-解码器神经网络(EDNN)将与前馈网络输出最相关的信息浓缩为瓶颈层的激活值。我们研究了这种结构在模拟和解释模拟 X 射线光谱数据中的应用,目的是识别光谱的关键结构特征。我们发现,EDNN 在覆盖目标变量方差方面优于 ECA,但也发现了用物理术语解释潜变量的复杂性。作为这两种方法优点的折中,我们开发了一种使用 ECA 线性投影的网络,从而保持了潜变量向量扩展的有利特性,以便对其进行解释。这些结果表明,有必要在信息浓缩后对其进行恢复,并确定输出频谱的决定性结构自由度,以便进行合理的解释。
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来源期刊
CiteScore
3.30
自引率
5.30%
发文量
64
审稿时长
60 days
期刊介绍: The Journal of Electron Spectroscopy and Related Phenomena publishes experimental, theoretical and applied work in the field of electron spectroscopy and electronic structure, involving techniques which use high energy photons (>10 eV) or electrons as probes or detected particles in the investigation.
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