Abstract
AbstractApplied machine learning has rapidly spread throughout the physical sciences. In fact, machine learning-based data analysis and experimental decision-making have become commonplace. Here, we reflect on the ongoing shift in the conversation from proving that machine learning can be used, to how to effectively implement it for advancing materials science. In particular, we advocate a shift from a big data and large-scale computations mentality to a model-oriented approach that prioritizes the use of machine learning to support the ecosystem of computational models and experimental measurements. We also recommend an open conversation about dataset bias to stabilize productive research through careful model interrogation and deliberate exploitation of known biases. Further, we encourage the community to develop machine learning methods that connect experiments with theoretical models to increase scientific understanding rather than incrementally optimizing materials. Moreover, we envision a future of radical materials innovations enabled by computational creativity tools combined with online visualization and analysis tools that support active outside-the-box thinking within the scientific knowledge feedback loop.
Publisher
Springer Science and Business Media LLC
Subject
Mechanics of Materials,General Materials Science
Reference80 articles.
1. Rosenblatt, F. Perceptron simulation experiments. Proc. IRE 48, 301–309 (1960).
2. Brown, T. et al. Language models are few-shot learners. Adv. Neural Inform. Proc. Syst. 33, 1877–1901 (2020).
3. Deng, J. et al. Imagenet: A large-scale hierarchical image database. In 2009 IEEE conference on computer vision and pattern recognition, 248–255 (Ieee, 2009).
4. D’Amour, A. et al. Underspecification presents challenges for credibility in modern machine learning. arXiv preprint arXiv:2011.03395 (2020).
5. Hattrick-Simpers, J. R., Choudhary, K. & Corgnale, C. A simple constrained machine learning model for predicting high-pressure-hydrogen-compressor materials. Mol. Syst. Design Eng. 3, 509–517 (2018).
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