Abstract
AbstractInformation Extraction (IE) in Natural Language Processing (NLP) aims to extract structured information from unstructured text to assist a computer in understanding natural language. Machine learning-based IE methods bring more intelligence and possibilities but require an extensive and accurate labeled corpus. In the materials science domain, giving reliable labels is a laborious task that requires the efforts of many professionals. To reduce manual intervention and automatically generate materials corpus during IE, in this work, we propose a semi-supervised IE framework for materials via automatically generated corpus. Taking the superalloy data extraction in our previous work as an example, the proposed framework using Snorkel automatically labels the corpus containing property values. Then Ordered Neurons-Long Short-Term Memory (ON-LSTM) network is adopted to train an information extraction model on the generated corpus. The experimental results show that the F1-score of γ’ solvus temperature, density and solidus temperature of superalloys are 83.90%, 94.02%, 89.27%, respectively. Furthermore, we conduct similar experiments on other materials, the experimental results show that the proposed framework is universal in the field of materials.
Funder
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Subject
Library and Information Sciences,Statistics, Probability and Uncertainty,Computer Science Applications,Education,Information Systems,Statistics and Probability
Reference36 articles.
1. Galassi, A., Lippi, M. & Torroni, P. Attention in natural language processing. IEEE Transactions on Neural Networks Learn. Syst. 15, 3709–3721 (2020).
2. Mooney, R. J. & Bunescu, R. C. Mining knowledge from text using information extraction. Acm Sigkdd Explor. Newsl. 7, 3–10 (2005).
3. Rickman, J. M., Lookman, T. & Kalinin, S. V. Materials informatics: From the atomic-level to the continuum. Acta Materialia 168, 473–510 (2019).
4. Wen, C. et al. Machine learning assisted design of high entropy alloys with desired property. Acta Materialia 170, 109–117 (2019).
5. Xue, D. et al. Accelerated search for materials with targeted properties by adaptive design. Nat. communications 7, 1–9 (2016).
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