Error assessment and optimal cross-validation approaches in machine learning applied to impurity diffusion

被引:50
|
作者
Lu, Hai-Jin [1 ,2 ]
Zou, Nan [1 ]
Jacobs, Ryan [2 ]
Afflerbach, Ben [2 ]
Lu, Xiao-Gang [1 ,3 ]
Morgans, Dane [2 ]
机构
[1] Shanghai Univ, Sch Mat Sci & Engn, Shanghai 200072, Peoples R China
[2] Univ Wisconsin, Dept Mat Sci & Engn, Madison, WI 53706 USA
[3] Shanghai Univ, Mat Genome Inst, Shanghai 200072, Peoples R China
基金
美国国家科学基金会;
关键词
Machine learning; Diffusion; Gaussian process; Error assessment; ALLOYING ELEMENTS; COEFFICIENTS;
D O I
10.1016/j.commatsci.2019.06.010
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Machine learning models have been widely utilized in materials science to discover trends in existing data and then make predictions to generate large databases, providing powerful tools for accelerating materials discovery and design. However, there is a significant need to refine approaches both for developing the best models and assessing the uncertainty in their predictions. In this work, we evaluate the performance of Gaussian kernel ridge regression (GKRR) and Gaussian process regression (GPR) for modeling ab-initio predicted impurity diffusion activation energies, using a database with 15 pure metal hosts and 408 host-impurity pairs. We demonstrate the advantages of basing the feature selection on minimizing the Leave-Group-Out (LOG) cross-validation (CV) root mean squared error (RMSE) instead of the more commonly used random K-fold CV RMSE. For the best descriptor and hyperparameter sets, the LOG RMSE from the GKRR (GPR) model is only 0.148 eV (0.155 eV) and the corresponding 5-fold RMSE is 0.116 eV (0.129 eV), demonstrating the model can effectively predict diffusion activation energies. We also show that the ab-initio impurity migration barrier can be employed as a feature to increase the accuracy of the model significantly while still yielding a significant speedup in the ability to predict the activation energy of new systems. Finally, we define r as the magnitude of the ratio of the actual error (residual) in a left-out data point during CV to the predicted standard deviation for that same data point in the GPR model, and compare the distribution of r to a normal distribution. Deviations of r from a normal distribution can be used to quantify the accuracy of the machine learning error estimates, and our results generally show that the approach yields accurate, normally-distributed error estimates for this diffusion data set.
引用
收藏
页数:9
相关论文
共 50 条
  • [1] A THEORY OF CROSS-VALIDATION ERROR
    TURNEY, P
    JOURNAL OF EXPERIMENTAL & THEORETICAL ARTIFICIAL INTELLIGENCE, 1994, 6 (04) : 361 - 391
  • [2] A cross-validation scheme for machine learning algorithms in shotgun proteomics
    Viktor Granholm
    William Stafford Noble
    Lukas Käll
    BMC Bioinformatics, 13
  • [3] A cross-validation scheme for machine learning algorithms in shotgun proteomics
    Granholm, Viktor
    Noble, William Stafford
    Kall, Lukas
    BMC BIOINFORMATICS, 2012, 13
  • [4] Cross-Validation Approaches for Replicability in Psychology
    Koul, Atesh
    Becchio, Cristina
    Cavallo, Andrea
    FRONTIERS IN PSYCHOLOGY, 2018, 9
  • [5] Random Cross-Validation Produces Biased Assessment of Machine Learning Performance in Regional Landslide Susceptibility Prediction
    Kumar, Chandan
    Walton, Gabriel
    Santi, Paul
    Luza, Carlos
    REMOTE SENSING, 2025, 17 (02)
  • [6] Cross-validation and cross-study validation of chronic lymphocytic leukaemia with exome sequences and machine learning
    Aljouie, Abdulrhman
    Patel, Nihir
    Jadhav, Bharati
    Roshan, Usman
    INTERNATIONAL JOURNAL OF DATA MINING AND BIOINFORMATICS, 2016, 16 (01) : 47 - 63
  • [7] Cross-validation and cross-study validation of chronic lymphocytic leukemia with exome sequences and machine learning
    Patel, Nihir
    Ihadav, Bharati
    Aljouie, Abdulrhman
    Roshan, Usman
    PROCEEDINGS 2015 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE, 2015, : 1367 - 1374
  • [8] THEORETICAL ANALYSES OF CROSS-VALIDATION ERROR AND VOTING IN INSTANCE-BASED LEARNING
    TURNEY, P
    JOURNAL OF EXPERIMENTAL & THEORETICAL ARTIFICIAL INTELLIGENCE, 1994, 6 (04) : 331 - 360
  • [9] Cross-validation approaches for penalized Cox regression
    Dai, Biyue
    Breheny, Patrick
    STATISTICAL METHODS IN MEDICAL RESEARCH, 2024, 33 (04) : 702 - 715
  • [10] METRIC LEARNING VIA CROSS-VALIDATION
    Dai, Linlin
    Chen, Kani
    Li, Gang
    Lin, Yuanyuan
    STATISTICA SINICA, 2022, 32 (03) : 1701 - 1721