Interpretable machine learning for imbalanced credit scoring datasets

被引:44
作者
Chen, Yujia [1 ]
Calabrese, Raffaella [1 ]
Martin-Barragan, Belen [1 ]
机构
[1] Univ Edinburgh, Business Sch, 29 Buccleuch Pl, Edinburgh EH8 9JS, Scotland
关键词
OR in banking; Interpretability; Stability; Credit scoring; Machine learning; CLASSIFICATION ALGORITHMS; LOGISTIC-REGRESSION; PREDICTION; MODELS; OPTIMIZATION; CHALLENGES; TREES; SMOTE; AREA;
D O I
10.1016/j.ejor.2023.06.036
中图分类号
C93 [管理学];
学科分类号
12 ; 1201 ; 1202 ; 120202 ;
摘要
The class imbalance problem is common in the credit scoring domain, as the number of defaulters is usually much less than the number of non-defaulters. To date, research on investigating the class imbalance problem has mainly focused on indicating and reducing the adverse effect of the class imbalance on the predictive accuracy of machine learning techniques, while the impact of that on machine learning interpretability has never been studied in the literature. This paper fills this gap by analysing how the stability of Local Interpretable Model-agnostic Explanations (LIME) and SHapley Additive exPlanations (SHAP), two popular interpretation methods, are affected by class imbalance. Our experiments use 2016-2020 UK residential mortgage data collected from European Datawarehouse. We evaluate the stability of LIME and SHAP on datasets of progressively increased class imbalance. The results show that interpretations generated from LIME and SHAP are less stable as the class imbalance increases, which indicates that the class imbalance does have an adverse effect on machine learning interpretability. To check the robustness of our outcomes, we also analyse two open-source credit scoring datasets and we obtain similar results.& COPY; 2023 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license ( http://creativecommons.org/licenses/by/4.0/ )
引用
收藏
页码:357 / 372
页数:16
相关论文
共 75 条
  • [1] Alvarez-Melis David., 2018, 2018 ICML WORKSHOP H
  • [2] A comparative analysis of the UK and Italian small businesses using Generalised Extreme Value models
    Andreeva, Galina
    Calabrese, Raffaella
    Osmetti, Silvia Angela
    [J]. EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2016, 249 (02) : 506 - 516
  • [3] [Anonymous], 2018, SSRN Electronic Journal, DOI DOI 10.2139/SSRN.2799443
  • [4] A Compact Evolutionary Interval-Valued Fuzzy Rule-Based Classification System for the Modeling and Prediction of Real-World Financial Applications With Imbalanced Data
    Antonio Sanz, Jose
    Bernardo, Dario
    Herrera, Francisco
    Bustince, Humberto
    Hagras, Hani
    [J]. IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2015, 23 (04) : 973 - 990
  • [5] Visualizing the effects of predictor variables in black box supervised learning models
    Apley, Daniel W.
    Zhu, Jingyu
    [J]. JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY, 2020, 82 (04) : 1059 - 1086
  • [6] Bank of England, 2019, Technical report
  • [7] Forecasting Loan Default in Europe with Machine Learning*
    Barbaglia, Luca
    Manzan, Sebastiano
    Tosetti, Elisa
    [J]. JOURNAL OF FINANCIAL ECONOMETRICS, 2023, 21 (02) : 569 - 596
  • [8] Bracke P., 2019, Machine Learning Explainability in Finance: An Application to Default Risk Analysis
  • [9] An experimental comparison of classification algorithms for imbalanced credit scoring data sets
    Brown, Iain
    Mues, Christophe
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2012, 39 (03) : 3446 - 3453
  • [10] Transparency, auditability, and explainability of machine learning models in credit scoring
    Buecker, Michael
    Szepannek, Gero
    Gosiewska, Alicja
    Biecek, Przemyslaw
    [J]. JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY, 2022, 73 (01) : 70 - 90