Understanding and predicting lapses in mortgage life insurance using a machine learning approach

被引:0
|
作者
Manteigas, Carlos [1 ]
Antonio, Nuno [1 ]
机构
[1] Univ Nova Lisboa, NOVA Informat Management Sch NOVA IMS, Campus Campolide, P-1070312 Lisbon, Portugal
关键词
External data sources; Lapse risk; Machine learning; Mortgage life insurance; RATES;
D O I
10.1016/j.eswa.2024.124753
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Mortgage Life Insurance (MLI) offers lucrative opportunities for insurers. However, customer retention has proven to be a daunting challenge, particularly following the regulatory changes of 2009 in Europe. New market entrants strategically employing low-premium tactics have reshaped the competitive landscape, leading established insurers and banks to grapple with retaining their MLI clientele. Consequently, increasing policy lapses hold critical implications for these financial entities. Responding to this intricate landscape, our research presents a predictive model that pinpoints the MLI policies at risk of lapse and disentangles the underlying factors propelling this risk. The objective is to provide insurers with a practical and strategic tool to improve customer retention, enabling them to identify specific actions to reduce customer attrition, improve financial stability, and strengthen customer loyalty. We used a dataset obtained from an insurance company and its partner bank to build the model. The effectiveness of four machine learning models, namely Logistic Regression, Random Forest, Neural Networks, and XGBoost, is investigated, with XGBoost outperforming the others. SHapley Additive exPlanations (SHAP) were utilized to bolster interpretability, thereby facilitating the conception and explication of the predictive model's most influential features. Underpinning the benefits of a nuanced exploration, the study's focus on a solitary insurance protection product and integrating bank data enabled us to apprehend the multifaceted drivers of lapse behavior. The study accentuates the merit of comprehensive data encapsulating a holistic perspective, with the four most influential features originating from bank data. From an insurer's standpoint, this research provides a strategic vantage point to proactively identify and engage with customers at risk of policy lapse and reformulate their policies to mitigate customer attrition.
引用
收藏
页数:21
相关论文
共 50 条
  • [41] Predicting Quality of Life using Machine Learning: case of World Happiness Index
    Jannani, Ayoub
    Sael, Nawal
    Benabbou, Faouzia
    2021 4TH INTERNATIONAL SYMPOSIUM ON ADVANCED ELECTRICAL AND COMMUNICATION TECHNOLOGIES (ISAECT), 2021,
  • [42] Predicting Anxiety, Depression and Stress in Modem Life using Machine Learning Algorithms
    Priya, Anu
    Garg, Shruti
    Tigga, Neha Prerna
    INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE AND DATA SCIENCE, 2020, 167 : 1258 - 1267
  • [43] Predicting chattering alarms: A machine Learning approach
    Tamascelli, Nicola
    Paltrinieri, Nicola
    Cozzani, Valerio
    COMPUTERS & CHEMICAL ENGINEERING, 2020, 143
  • [44] A Machine Learning Approach for Predicting Nicotine Dependence
    Kharabsheh, Mohammad
    Meqdadi, Omar
    Alabed, Mohammad
    Veeranki, Sreenivas
    Abbadi, Ahmad
    Alzyoud, Sukaina
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2019, 10 (03) : 179 - 184
  • [45] Machine Learning Approach for Predicting Bumps on Road
    Ghadge, Manjusha
    Pandey, Dheeraj
    Kalbande, Dhananjay
    PROCEEDINGS OF THE 2015 INTERNATIONAL CONFERENCE ON APPLIED AND THEORETICAL COMPUTING AND COMMUNICATION TECHNOLOGY (ICATCCT), 2015, : 481 - 485
  • [46] A Machine Learning Approach to Predicting MPN Patients
    Greenfield, Graeme
    Blayney, Jaine
    McMullin, Mary Frances
    Mills, Ken
    BRITISH JOURNAL OF HAEMATOLOGY, 2021, 193 : 61 - 61
  • [47] A Machine Learning Approach to Predicting Diabetes Complications
    Jian, Yazan
    Pasquier, Michel
    Sagahyroon, Assim
    Aloul, Fadi
    HEALTHCARE, 2021, 9 (12)
  • [48] Predicting the Loan Using Machine Learning
    Yamparala, Rajesh
    Saranya, Jonnakuti Raja
    Anusha, Papanaboina
    Pragathi, Saripudi
    Sri, Panguluri Bhavya
    SOFT COMPUTING FOR SECURITY APPLICATIONS, ICSCS 2022, 2023, 1428 : 701 - 712
  • [49] Predicting Phospholipidosis Using Machine Learning
    Lowe, Robert
    Glen, Robert C.
    Mitchell, John B. O.
    MOLECULAR PHARMACEUTICS, 2010, 7 (05) : 1708 - 1714
  • [50] Machine Learning Approaches for Predicting Willingness to Pay for Shrimp Insurance in Vietnam
    Nguyen, Kim Anh Thi
    Nguyen, Tram Anh Thi
    Nguelifack, Brice M.
    Jolly, Curtis M.
    MARINE RESOURCE ECONOMICS, 2022, 37 (02) : 155 - 182