Forecasting Bank Failure: Base Learners, Ensembles and Hybrid Ensembles

被引:0
|
作者
Aykut Ekinci
Halil İbrahim Erdal
机构
[1] Development Bank of Turkey,
[2] Turkish Cooperation and Coordination Agency,undefined
来源
Computational Economics | 2017年 / 49卷
关键词
Financial crisis; Bank failure; Bagging; Hybrid classifier ensembles; Logistic regression; J48; Multi-boosting; Random sub-spaces; Voted perceptron; C11; C13; E37; E44;
D O I
暂无
中图分类号
学科分类号
摘要
The prediction of bankruptcy for financial companies, especially banks, has been extensively researched area and creditors, auditors, stockholders and senior managers are all interested in bank bankruptcy prediction. In this paper, three common machine learning models namely Logistic, J48 and Voted Perceptron are used as the base learners. In addition, an attribute-base ensemble learning method namely Random Subspaces and two instance-base ensemble learning methods namely Bagging and Multi-Boosting are employed to enhance the prediction accuracy of conventional machine learning models for bank failure prediction. The models are grouped in the following families of approaches: (i) conventional machine learning models, (ii) ensemble learning models and (iii) hybrid ensemble learning models. Experimental results indicate a clear outperformance of hybrid ensemble machine learning models over conventional base and ensemble models. These results indicate that hybrid ensemble learning models can be used as a reliable predicting model for bank failures.
引用
收藏
页码:677 / 686
页数:9
相关论文
共 50 条
  • [21] Soil Moisture Forecasting Using Ensembles of Classifiers
    Rajathi, N.
    Jayashree, L. S.
    PROCEEDINGS OF FIRST INTERNATIONAL CONFERENCE ON INFORMATION AND COMMUNICATION TECHNOLOGY FOR INTELLIGENT SYSTEMS: VOL 1, 2016, 50 : 235 - 244
  • [22] Using ensembles for short-range forecasting
    Stensrud, DJ
    Brooks, HE
    Du, J
    Tracton, MS
    Rogers, E
    MONTHLY WEATHER REVIEW, 1999, 127 (04) : 433 - 446
  • [23] Learning Based Fusion in Ensembles for Weather Forecasting
    Haidar, Ali
    Verma, Brijesh
    2017 13TH INTERNATIONAL CONFERENCE ON NATURAL COMPUTATION, FUZZY SYSTEMS AND KNOWLEDGE DISCOVERY (ICNC-FSKD), 2017, : 72 - 78
  • [24] An approach to aggregating ensembles of lazy learners that supports explanation
    Zenobi, G
    Cunningham, P
    ADVANCES IN CASE-BASED REASONING, 2002, 2416 : 436 - 447
  • [25] Ensembles of strong learners for multi-cue classification
    Marton, Zoltan-Csaba
    Seidel, Florian
    Balint-Benczedi, Ferenc
    Beetz, Michael
    PATTERN RECOGNITION LETTERS, 2013, 34 (07) : 754 - 761
  • [26] Concurrent optimization of multiple base learners in neural network ensembles: An adaptive niching differential evolution approach
    Huang, Ting
    Duan, Dan-Ting
    Gong, Yue-Jiao
    Ye, Long
    Ng, Wing W. Y.
    Zhang, Jun
    NEUROCOMPUTING, 2020, 396 (24-38) : 24 - 38
  • [27] Historical perspective: earlier ensembles and forecasting forecast skill
    Kalnay, Eugenia
    QUARTERLY JOURNAL OF THE ROYAL METEOROLOGICAL SOCIETY, 2019, 145 (S1) : 25 - 34
  • [28] Application of meteorological ensembles for Danube flood forecasting and warning
    Balint, Gabor
    Csik, Andras
    Bartha, Peter
    Gauzer, Balazs
    Bonta, Imre
    TRANSBOUNDARY FLOODS: REDUCING RISKS THROUGH FLOOD MANAGEMENT, 2006, 72 : 57 - +
  • [29] Weather forecasting models using ensembles of neural networks
    Maqsood, M
    Khan, MR
    Abraham, A
    INTELLIGENT SYSTEMS DESIGN AND APPLICATIONS, 2003, : 33 - 42
  • [30] Demonstrating the value of larger ensembles in forecasting physical systems
    Machete, Reason L.
    Smith, Leonard A.
    TELLUS SERIES A-DYNAMIC METEOROLOGY AND OCEANOGRAPHY, 2016, 68