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Deep learning based domain knowledge integration for small datasets: Illustrative applications in materials informatics

机译:针对小型数据集的基于深度学习的领域知识集成:材料信息学中的说明性应用

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Deep learning has shown its superiority to traditional machine learning methods in various fields, and in general, its success depends on the availability of large amounts of reliable data. However, in some scientific fields such as materials science, such big data is often expensive or even impossible to collect. Thus given relatively small datasets, most of data-driven methods are based on traditional machine learning methods, and it is challenging to apply deep learning for many tasks in these fields. In order to take the advantage of deep learning even for small datasets, a domain knowledge integration approach is proposed in this work. The efficacy of the proposed approach is tested on two materials science datasets with different types of inputs and outputs, for which domain knowledge-aware convolutional neural networks (CNNs) are developed and evaluated against traditional machine learning methods and standard CNN-based approaches. Experiment results demonstrate that integrating domain knowledge into deep learning can not only improve the model’s performance for small datasets, but also make the prediction results more explainable based on domain knowledge.
机译:深度学习在各个领域已显示出优于传统机器学习方法的优势,总的来说,其成功取决于大量可靠数据的可用性。但是,在某些科学领域(例如材料科学)中,这样的大数据通常很昂贵,甚至无法收集。因此,在给定相对较小的数据集的情况下,大多数数据驱动方法都基于传统的机器学习方法,因此将深度学习应用于这些领域中的许多任务具有挑战性。为了即使对于小型数据集也能利用深度学习的优势,本文提出了一种领域知识整合方法。在具有不同输入和输出类型的两个材料科学数据集上测试了该方法的有效性,为此,他们开发了领域知识感知卷积神经网络(CNN),并针对传统的机器学习方法和基于标准CNN的方法进行了评估。实验结果表明,将领域知识整合到深度学习中不仅可以提高模型在小型数据集上的性能,而且可以使预测结果基于领域知识更具可解释性。

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