Review of Machine Learning models for Credit Scoring Analysis

被引:6
|
作者
Kumar, Madapuri Rudra [1 ]
Gunjan, Vinit Kumar [2 ]
机构
[1] Annamacharya Inst Technol & Sci, Dept CSE, Rajampet 516126, AP, India
[2] CMR Inst Technol, Dept Comp Sci & Engn, Hyderabad, Telangana, India
来源
INGENIERIA SOLIDARIA | 2020年 / 16卷 / 01期
关键词
Creditworthiness Evaluation; Credit Score Evaluation; Machine Learning for A Credit Score; Solutions for Credit Score Models; Information and Communication Technologies;
D O I
10.16925/2357-6014.2020.01.11
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Introduction: Increase in computing power and the deeper usage of the robust computing systems in the financial system is propelling the business growth, improving the operational efficiency of the financial institutions, and increasing the effectiveness of the transaction processing solutions used by the organizations. Problem: Despite that the financial institutions are relying on the credit scoring patterns for analyzing the credit worthiness of the clients, still there are many factors that are imminent for improvement in the credit score evaluation patterns. There is need for improving the pattern to enhance the quality of analysis. Objective: Machine learning is offering immense potential in Fintech space and determining a personal credit score. Organizations by applying deep learning and machine learning techniques can tap individuals who are not being serviced by traditional financial institutions. Methodology: One of the major insights into the system is that the traditional models of banking intelligence solutions are predominantly the programmed models that can align with the information and banking systems that are used by the banks. But in the case of the machine-learning models that rely on algorithmic systems require more integral computation which is intrinsic. Hence, it can be advocated that the models usually need to have some decision lines wherein the dynamic calibration model must be streamlined. Such structure demands the dynamic calibration to have a decision tree system to empower with more integrated model changes. Results: The test analysis of the proposed machine learning model indicates effective and enhanced analysis process compared to the non-machine learning solutions. The model in terms of using various classifiers indicate potential ways in which the solution can be significant. Conclusion: If the systems can be developed to align with more pragmatic terms for analysis, it can help in improving the process conditions of customer profile analysis, wherein the process models have to be developed for comprehensive analysis and the ones that can make a sustainable solution for the credit system management. Originality: The proposed solution is effective and the one conceptualized to improve the credit scoring system patterns. If the model can be improved with more effective parameters and learning metrics, it can be sustainable outcome. Limitations: The model is tested in isolation and not in comparison to any of the existing credit scoring patterns. Only the inputs in terms of shortcomings from the existing models are taken in to account and accordingly the proposed solution is developed.
引用
收藏
页数:16
相关论文
共 50 条
  • [41] Network-aware credit scoring system for telecom subscribers using machine learning and network analysis
    Gao, Hongming
    Liu, Hongwei
    Ma, Haiying
    Ye, Cunjun
    Zhan, Mingjun
    [J]. ASIA PACIFIC JOURNAL OF MARKETING AND LOGISTICS, 2022, 34 (05) : 1010 - 1030
  • [42] FROM CREDIT SCORING TO REGULATORY SCORING: COMPARING CREDIT SCORING MODELS FROM A REGULATORY PERSPECTIVE
    Xia, Yufei
    Liao, Zijun
    Xu, Jun
    LI, Yinguo
    [J]. TECHNOLOGICAL AND ECONOMIC DEVELOPMENT OF ECONOMY, 2022, 28 (06) : 1954 - 1990
  • [43] Estimating credit and profit scoring of a Brazilian credit union with logistic regression and machine-learning techniques
    Vasconcellos de Paula, Daniel Abreu
    Artes, Rinaldo
    Ayres, Fabio
    Accioly Fonseca Minardi, Andrea Maria
    [J]. RAUSP MANAGEMENT JOURNAL, 2019, 54 (03): : 321 - 336
  • [44] A Fourier Spectral Pattern Analysis to Design Credit Scoring Models
    Saia, Roberto
    Carta, Salvatore
    [J]. PROCEEDINGS OF THE 1ST INTERNATIONAL CONFERENCE ON INTERNET OF THINGS AND MACHINE LEARNING (IML'17), 2017,
  • [45] CREDIT SCORING ANALYSIS
    Medina, Rosa Puertas
    Marti Selva, Maria Luisa
    [J]. RAE-REVISTA DE ADMINISTRACAO DE EMPRESAS, 2013, 53 (03): : 303 - 315
  • [46] Machine learning interpretability for a stress scenario generation in credit scoring based on counterfactuals
    Bueff, Andreas C.
    Cytrynski, Mateusz
    Calabrese, Raffaella
    Jones, Matthew
    Roberts, John
    Moore, Jonathon
    Brown, Iain
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2022, 202
  • [47] A study on credit scoring modeling with different feature selection and machine learning approaches
    Trivedi, Shrawan Kumar
    [J]. TECHNOLOGY IN SOCIETY, 2020, 63
  • [48] Extreme Learning Machine for Credit Risk Analysis
    Qasem, Mais Haj
    Nemer, Loai
    [J]. JOURNAL OF INTELLIGENT SYSTEMS, 2020, 29 (01) : 640 - 652
  • [49] Machine Learning Analysis of Mortgage Credit Risk
    Pillai, Sivakumar G.
    Woodbury, Jennifer
    Dikshit, Nikhil
    Leider, Avery
    Tappert, Charles C.
    [J]. PROCEEDINGS OF THE FUTURE TECHNOLOGIES CONFERENCE (FTC) 2019, VOL 1, 2020, 1069 : 107 - 123
  • [50] A comparison study of credit scoring models
    Zhang, Defu
    Huang, Hongyi
    Chen, Qingshan
    Jiang, Yi
    [J]. ICNC 2007: THIRD INTERNATIONAL CONFERENCE ON NATURAL COMPUTATION, VOL 1, PROCEEDINGS, 2007, : 15 - +