Enhancing Customer Experience: Exploring Deep Learning Models for Banking Customer Journey Analysis

被引:0
作者
Dwivedi, Dwijendra Nath [1 ]
Batra, Saurabh [2 ]
Pathak, Yogesh Kumar [3 ]
机构
[1] Cracow Univ Econ, Krakow, Poland
[2] Delhi Univ, New Delhi, India
[3] Indian Inst Management, Lucknow, Uttar Pradesh, India
来源
ARTIFICIAL INTELLIGENCE: THEORY AND APPLICATIONS, VOL 1, AITA 2023 | 2024年 / 843卷
关键词
Banking analytics; Deep learning; Customer journey analytics; Customer engagements; Customer experience; Cross-sell; Up-sell; ARTIFICIAL-INTELLIGENCE;
D O I
10.1007/978-981-99-8476-3_39
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Customer journey analytics is the process of monitoring and analyzing how customers use combinations of points of contact, services, or products to interact with an organization. Companies use customer journey analytics because it is one of the most effective ways to increase long-term customer value, improve customer loyalty, and drive revenue growth. Customer journey analysis provides teams with a window on customer behavior that provides valuable information that they can then use to inform their decisions. These points of contact are called events and they define the customer's behavioral model across an organization. In a typical big bank, about 100,000 events are carried out per second. Several dynamic events are associated with a bank such as an ATM withdrawal, a POS transaction, a cash deposit. This series of customer journey events can be used for different use cases such as cross-selling, account reactivation, hard rolling, soft rolling to name a few. This paper uses deep neural network-based, recurrent neural network (RNN) algorithm to capture these customer journey events across a bank and how these events can be used to predict cross-sell propensity for other bank products. We developed various RNN models using both time series and static data layers to estimate the likelihood of cross-selling credit card facility to existing customers on hypothetical dataset. A highly predictable model is developed with an AUC of 0.92 on training and 0.90 on validation sample. This model can capture around 91% of the cross-sell events in first two deciles for training sample, indicating that by targeting a small proportion of the portfolio, a bank can achieve maximum conversions from cross-sell programs.
引用
收藏
页码:477 / 486
页数:10
相关论文
共 31 条
  • [1] Intelligent purchasing: How artificial intelligence can redefine the purchasing function
    Allal-Cherif, Oihab
    Simon-Moya, Virginia
    Cuenca Ballester, Antonio Carlos
    [J]. JOURNAL OF BUSINESS RESEARCH, 2021, 124 : 69 - 76
  • [2] Budale D., 2013, Em: International Journal of Engineering and Advanced Technology, V2, P508
  • [3] CBInsights, 2015, Goldman sachs investment activity into FinTech startups intensifies
  • [4] Chiu I, 2019, J Financ Compliance, V3, P67
  • [5] AI-chatbots on the services frontline addressing the challenges and opportunities of agency
    Chong, Terrence
    Yu, Ting
    Keeling, Debbie Isobel
    de Ruyter, Ko
    [J]. JOURNAL OF RETAILING AND CONSUMER SERVICES, 2021, 63
  • [6] Cuthell K, 2021, As digital banking takes off, hidden defection of consumers is Rampant
  • [7] Daigler J, 2019, Market guide for customer journey analytics
  • [8] The different roles of switching costs on the satisfaction-loyalty relationship
    de Matos, Celso Augusto
    Henrique, Jorge Luiz
    de Rosa, Fernando
    [J]. INTERNATIONAL JOURNAL OF BANK MARKETING, 2009, 27 (07) : 506 - 523
  • [9] Deb M., 2010, South Asian Journal of Management, V17, P43
  • [10] Hassani H., 2020, ANN DATA SCI, V7, P433, DOI DOI 10.1007/S40745-020-00300-1