可转让性
极化率
外推法
拉曼光谱
谱线
分子
人工智能
计算机科学
拉曼散射
化学
机器学习
计算化学
物理
数学
光学
统计
量子力学
罗伊特
有机化学
作者
Mandi Fang,Shi Tang,Zheyong Fan,Yao Shi,Nan Xu,Yi He
标识
DOI:10.1021/acs.jpca.3c07109
摘要
Theoretical prediction of vibrational Raman spectra enables a detailed interpretation of experimental spectra, and the advent of machine learning techniques makes it possible to predict Raman spectra while achieving a good balance between efficiency and accuracy. However, the transferability of machine learning models across different molecules remains poorly understood. This work proposed a new strategy whereby machine learning-based polarizability models were trained on similar but smaller alkane molecules to predict spectra of larger alkanes, avoiding extensive first-principles calculations on certain systems. Results showed that the developed polarizability model for alkanes with a maximum of nine carbon atoms can exhibit high accuracy in the predictions of polarizabilities and Raman spectra for the n-undecane molecule (11 carbon atoms), validating its reasonable extrapolation capability. Additionally, a descriptor space analysis method was further introduced to evaluate the transferability, demonstrating potentials for accurate and efficient Raman predictions of large molecules using limited training data labeled for smaller molecules.
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