期刊文献+

Materials discovery and design using machine learning 被引量:66

原文传递
导出
摘要 The screening of novel materials with good performance and the modelling of quantitative structureactivity relationships(QSARs),among other issues,are hot topics in the field of materials science.Traditional experiments and computational modelling often consume tremendous time and resources and are limited by their experimental conditions and theoretical foundations.Thus,it is imperative to develop a new method of accelerating the discovery and design process for novel materials.Recently,materials discovery and design using machine learning have been receiving increasing attention and have achieved great improvements in both time efficiency and prediction accuracy.In this review,we first outline the typical mode of and basic procedures for applying machine learning in materials science,and we classify and compare the main algorithms.Then,the current research status is reviewed with regard to applications of machine learning in material property prediction,in new materials discovery and for other purposes.Finally,we discuss problems related to machine learning in materials science,propose possible solutions,and forecast potential directions of future research.By directly combining computational studies with experiments,we hope to provide insight into the parameters that affect the properties of materials,thereby enabling more efficient and target-oriented research on materials discovery and design.
出处 《Journal of Materiomics》 SCIE EI 2017年第3期159-177,共19页 无机材料学学报(英文)
基金 This work was supported by the National Natural Science Foundation of China(Grant Nos.U1630134,51622207 and 51372228) the National Key Research and Development Program of China(Grant Nos.2017YFB0701600 and 2017YFB0701500) the Shanghai Institute of Materials Genome from the Shanghai Municipal Science and Technology Commission(Grant No.14DZ2261200) the Shanghai Municipal Education Commission(Grant No.14ZZ099) the Natural Science Foundation of Shanghai(Grant No.16ZR1411200).
  • 相关文献

参考文献2

二级参考文献36

  • 1Quinlan J R. Comparing connectionist and symbolic learning methods. In Computational Learning Theory and Natural Learning Systems, Rivest R L (Ed.), Vol.1,Cambridge, MA, MIT Press, 1994, pp.445-456.
  • 2Chalup S, Hayward R, Diederich J. Rule extraction from artificial neural networks trained on elementary number classification tasks. In Proc. the 9th Australian Conference on Neural Networks, Brisbane, Australia, 1998,pp.265-270.
  • 3Maire F. Rule-extraction by backpropagation of polyhedra. Neural Networks, 1999, 12(4-5): 717-725.
  • 4Bologna G. Rule extraction from a multi layer perceptron with staircase activation functions. In Proc. the IEEE-INNS-ENNS International Joint Conference on Neural Networks, Como, Italy, 2000, 3: 419-424.
  • 5Vahed A, Omlin C W. Rule extraction from recurrent neural networks using a symbolic machine learning algorithm. In Proc. the 6th International Conference on Neural Information Processing, Dunedin, New Zealand,1999, pp.712-717.
  • 6Golea M. On the complexity of rule extraction from neural networks and network querying. In Proc. theAISB'96 Workshop on Rule Eztraction from TrainedNeural Networks, Brighton, UK, 1996, pp.51-59.
  • 7Roy A. On connectionism, rule extraction, and brainlike learning. IEEE Trans. Fuzzy Systems, 2000, 8(2):222-227.
  • 8Duch W, Adamczak R, Grabczewski K. A new methodology of extraction, optimization and application of crisp and fuzzy logical rules. IEEE Trans. Neural Networks, 2001, 12(2): 277-306.
  • 9Zhou Z H, Jiang Y, Chen S F, Extracting symbolic rules from trained neural network ensembles. AI Communications, 2003, 16(1): 3-15.
  • 10Towell G, Shavlilk J. The extraction of refined rules from knowledge based neural networks. Machine Learning,1993, 13(1): 71-101.

共引文献100

同被引文献326

引证文献66

二级引证文献228

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部