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Feature Learning applied to the Estimation of Tensile Strength at Break in Polymeric Material Design

机译:特征学习在聚合物材料设计中的断裂拉伸强度估算中的应用

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摘要

Several feature extraction approaches for QSPR modelling in Cheminformatics are discussed in this paper. In particular, this work is focused on the use of these strategies for predicting mechanical properties, which are relevant for the design of polymeric materials. The methodology analysed in this study employs a feature learning method that uses a quantification process of 2D structural characterization of materials with the autoencoder method. Alternative QSPR models inferred for tensile strength at break (a well-known mechanical property of polymers) are presented. These alternative models are contrasted to QSPR models obtained by feature selection technique by using accuracy measures and a visual analytic tool. The results show evidence about the benefits of combining feature learning approaches with feature selection methods for the design of QSPR models.
机译:本文讨论了化学信息学中用于QSPR建模的几种特征提取方法。特别地,这项工作集中于使用这些策略来预测机械性能,这与聚合物材料的设计有关。本研究中分析的方法采用一种特征学习方法,该方法使用自动编码器方法对材料的2D结构表征进行量化。提出了推断断裂强度(聚合物的众所周知的机械性能)的替代QSPR模型。这些替代模型与通过特征选择技术通过使用精度度量和视觉分析工具获得的QSPR模型形成对比。结果表明,将特征学习方法与特征选择方法相结合可用于QSPR模型的设计。

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