International Journal of Neutrosophic Science

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https://doi.org/10.54216/IJNS

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2690-6805ISSN (Online) 2692-6148ISSN (Print)

Volume 27 , Issue 1 , PP: 193-205, 2026 | Cite this article as | XML | Html | PDF | Full Length Article

A Predictive Analytics for Customer Lifetime Value Estimation in Digital Banking using Interval-Valued Neutrosophic Set with Fine Tuning Approach

Alisher Sherov 1 , Ziyodulla Khakimov 2 , Yurii Vorobev 3 * , Emil Hajiyev 4 , Tatyana Khorolskaya 5

  • 1 Department of Economics, Mamun University, Khiva, 220900, Uzbekistan; Department of Finance and Tourism, Termez University of Economics and Service, Termez, 190111, Uzbekistan - (sherov_alisher@mamunedu.uz)
  • 2 Department of Management and Marketing, Alfraganus University, Tashkent, 100000, Uzbekistan - (z.xakimov@afu.uz)
  • 3 Department of Economics and Finance, Financial University under the Government of the Russian Federation, Moscow, 125167, Russian Federation - (ynvorobev@fa.ru)
  • 4 Department of Business Management, Azerbaijan State University of Economics (UNEC), Baku, AZ1001, Republic of Azerbaijan - (hajiyev.emil@unec.edu.az)
  • 5 Department of Money Circulation and Credit, Kuban State Agrarian University named after I.T. Trubilin, Krasnodar, 350044, Russian Federation - (xorolskaya.t@edu.kubsau.ru)
  • Doi: https://doi.org/10.54216/IJNS.270118

    Received: March 03, 2025 Revised: May 31, 2025 Accepted: July 06, 2025
    Abstract

    As a generality of fuzzy sets (FS) and intuitionistic FS (IFS), neutrosophic sets (NS) was progressed by F. Smarandache for signifying incomplete, inaccurate, and uneven data present in the real world. Neutrosophic Logic (NL) is a neonate research field in which every proposition was projected to have the proportion of truth in a sub-set T, I, and F. Neutrosophic sets (NS) have been well employed for indeterminate information handling, and determine benefits to tackle indeterminate data. A NS is categorized by indeterminacy-, truth-, and a falsity- membership functions. Atanassov as a major simplification of FS presented the notion of IFS. IFS are very beneficial in conditions when problem description by linguistic variables, assumed with only a membership function, appears to be difficult. In recent times, IFS have been employed to numerous areas like medical diagnosis, logic programming, decision-making issues, etc. An interval NS (INS) is an example of NS, which is employed in real engineering and scientific applications. Owing to the competition in the banking industry and the importance, access to customer information is vital to establish a successful relationship that benefits both parties. Representing longer-term customer relationships and building brand equity are essential in modern banking, and therefore increasing relationship quality plays a significant part in the development of new services and customer lifetime value (CLV) approximation.  CLV is an estimated profit that can be achieved by the organization from a customer for some time. Presently, the development of Machine Learning (ML) methods has resulted in better precision and effectiveness. Therefore, by utilizing ML methods of real-time customer data, predictions of a more precise future value of the customer are gained by businesses, which helps in establishing a more personal marketing approach. In this manuscript, we propose a Customer Lifetime Value Estimation using Interval-Valued Neutrosophic Set and Parameter Optimization Algorithms (CLVE-IVNSPOA). The foremost main of this paper is to progress a predictive analytics model for estimating customer lifetime value in digital banking utilizing advanced optimization methods. Initially, the data pre-processing phase was employed by using the Z-score method. Moreover, the pelican optimization algorithm (POA) is mainly executed by the feature subset selection in order to select the most optimal features from a dataset. For CLV prediction, the Interval-Valued Neutrosophic Set (IVNS) technique is exploited. At last, the model parameter adjustment process is performed through improved shark optimization (ISHO) algorithm for improving the prediction performance. The experimental evaluation of the CLVE-IVNSPOA occurs using benchmark database. The experimental outcomes indicated out an improved performance of CLVE-IVNSPOA compared to existing systems.

    Keywords :

    Customer Lifetime Value , Neutrosophic set , Digital Banking , Interval-Valued Neutrosophic Set , Improved Shark Optimization Algorithm , Neutrosophic Logic

    References

    [1]       Smarandache, "Neutrosophic set is a generalization of intuitionistic fuzzy set, inconsistent intuitionistic fuzzy set (picture fuzzy set, ternary fuzzy set), pythagorean fuzzy set, spherical fuzzy set, and q-rung orthopair fuzzy set, while neutrosophication is a generalization of regret theory, grey system theory, and three-ways decision (revisited)," Journal of New Theory, no. 29, pp. 1–31, 2019.

     

    [2]       A. M. et al., "Fuzzy decision-making framework for renewable energy investment," Energy Reports, vol. 6, pp. 123–130, 2021.

     

    [3]       J. Smith, R. Johnson, and L. Brown, "An overview of fuzzy logic applications in decision-making processes," Journal of Fuzzy Logic and Applications, vol. 15, no. 3, pp. 45–56, 2023.

     

    [4]       S. R. A. et al., "Applications of neutrosophic logic in decision-making," Neutrosophic Sets and Systems, vol. 38, pp. 100–112, 2022.

     

    [5]       H. K. M. H. et al., "Soft computing models for predicting market trends," Journal of Computational Intelligence and Applications, vol. 19, no. 1, pp. 77–89, 2024.

     

    [6]       X. Jiang, J. Zhang, and L. Zhang, "FedRadar: Federated multi-task transfer learning for radar-based Internet of Medical Things," IEEE Trans. Netw. Service Manag., vol. 20, no. 2, pp. 1459–1469, 2023.

     

    [7]       J. B. G. D. Brito, "Enhancing customer-centricity in financial institutions through open banking: a machine learning approach to potential customer lifetime value," M.S. thesis, NOVA Sch. of Sci. and Technol., Caparica, Portugal, 2024.

     

    [8]       Todupunuri, "Develop Machine Learning Models to Predict Customer Lifetime Value for Banking Customers, Helping Banks Optimize Services," Int. J. All Res. Educ. Sci. Methods, vol. 12, no. 10, pp. 10–56 025, 2024.

     

    [9]       Y. Sun, H. Liu, and Y. Gao, "Research on customer lifetime value based on machine learning algorithms and customer relationship management analysis model," Heliyon, vol. 9, no. 2, 2023.

     

    [10]    J. Bauer and D. Jannach, "Improved customer lifetime value prediction with sequence-to-sequence learning and feature-based models," ACM Trans. Knowl. Discov. Data, vol. 15, no. 5, pp. 1–37, 2021.

     

    [11]    Z. Khan, A. Ali, S. Aldahmani, H. Nordmark, and B. Lausen, "Customer lifetime value modelling via two stage selected trees ensembles," IEEE Access, 2025.

     

    [12]    R. Saturi, R. Siripothula, Z. Siddiqui, and R. Nikhitha, "Quantum-enhanced customer retention: Leveraging predictive analytics for optimized supply chain strategies," in Quantum Computing and Artificial Intelligence in Logistics and Supply Chain Management. Boca Raton, FL, USA: Chapman and Hall/CRC, 2025, pp. 183–198.

     

    [13]    Y. Gaidhani et al., "AI-Driven Predictive Analytics for CRM to Enhance Retention Personalization and Decision-Making," Int. J. Adv. Comput. Sci. Appl., vol. 16, no. 4, 2025.

     

    [14]    S. A. Umezurike et al., "Predictive Analytics for Customer Lifetime Value in Subscription-Based Digital Service Platforms," 2025.

     

    [15]    N. Kaluarachchi and D. Sedera, "Improving efficiency through AI-powered customer engagement by providing personalized solutions in the banking industry," in Integrating AI-Driven Technologies into Service Marketing. IGI Global, 2024, pp. 299–342.

     

    [16]    S. Curiskis, X. Dong, F. Jiang, and M. Scarr, "A novel approach to predicting customer lifetime value in B2B SaaS companies," J. Mark. Anal., vol. 11, no. 4, pp. 587–601, 2023.

     

    [17]    N. Bose, A. Chopra, P. Joshi, and A. Reddy, "Leveraging Reinforcement Learning and Predictive Analytics for Enhanced Customer Lifetime Value Optimization," Int. J. AI Adv., vol. 12, no. 8, 2023.

     

    [18]    W. Liang, "Energy optimization in intelligent sensor networks: application of particle swarm optimization algorithm in the deployment of electronic information sensing nodes," Energy Inform., vol. 8, no. 1, pp. 1–17, 2025.

     

    [19]    H. P. Varade et al., "Novel Model for Classifying the Toxicity of Metal Oxide Nanoparticles," 2025.

     

    [20]    Fatima Abdullah, Z. Abdullah, J. Abdullah, J. L. O. Rodríguez, and G. Sidorov, "A Multimodal AI Framework for Automated Multiclass Lung Disease Diagnosis from Respiratory Sounds with Simulated Biomarker Fusion and Personalized Medication Recommendation," Int. J. Mol. Sci., vol. 26, no. 15, p. 7135, 2025.

     

    [21]    K. Mishev, A. Gjorgjevikj, I. Vodenska, L. T. Chitkushev, and D. Trajanov, "Evaluation of sentiment analysis in finance: from lexicons to transformers," IEEE Access, vol. 8, pp. 131 662–131 682, 2020.

     

    [22]    S. Soltani-Gerdefaramarzi, S. Pourebrahim, and M. Ehteram, "Improved Shark Optimization Algorithm-Composite Radial Basis Function Neural Network: A New Version of the RBFNN Model for Forecasting Monthly Solar Radiation," Results Eng., p. 106 339, 2025.

     

    [23]    H. Rai, "Fintech Customer Life Time Value (LTV) Dataset," 2023. [Online]. Available:  https://www.kaggle.com/datasets/harunrai/fintech-customer-life-time-value-ltv-dataset?select=digital_wallet_ltv_dataset.csv

     

    [24]    L. D. Loureiro, V. L. Migueis, A. Costa, and M. Ferreira, "Improving customer retention in taxi industry using travel data analytics: A churn prediction study," J. Retail. Consum. Serv., vol. 85, p. 104 288, 2025.

     

    [25]    M. Haddadi and H. Hamidi, "A hybrid model for improving customer lifetime value prediction using stacking ensemble learning algorithm," Comput. Hum. Behav. Rep., vol. 18, p. 100 616, 2025.

    Cite This Article As :
    Sherov, Alisher. , Khakimov, Ziyodulla. , Vorobev, Yurii. , Hajiyev, Emil. , Khorolskaya, Tatyana. A Predictive Analytics for Customer Lifetime Value Estimation in Digital Banking using Interval-Valued Neutrosophic Set with Fine Tuning Approach. International Journal of Neutrosophic Science, vol. , no. , 2026, pp. 193-205. DOI: https://doi.org/10.54216/IJNS.270118
    Sherov, A. Khakimov, Z. Vorobev, Y. Hajiyev, E. Khorolskaya, T. (2026). A Predictive Analytics for Customer Lifetime Value Estimation in Digital Banking using Interval-Valued Neutrosophic Set with Fine Tuning Approach. International Journal of Neutrosophic Science, (), 193-205. DOI: https://doi.org/10.54216/IJNS.270118
    Sherov, Alisher. Khakimov, Ziyodulla. Vorobev, Yurii. Hajiyev, Emil. Khorolskaya, Tatyana. A Predictive Analytics for Customer Lifetime Value Estimation in Digital Banking using Interval-Valued Neutrosophic Set with Fine Tuning Approach. International Journal of Neutrosophic Science , no. (2026): 193-205. DOI: https://doi.org/10.54216/IJNS.270118
    Sherov, A. , Khakimov, Z. , Vorobev, Y. , Hajiyev, E. , Khorolskaya, T. (2026) . A Predictive Analytics for Customer Lifetime Value Estimation in Digital Banking using Interval-Valued Neutrosophic Set with Fine Tuning Approach. International Journal of Neutrosophic Science , () , 193-205 . DOI: https://doi.org/10.54216/IJNS.270118
    Sherov A. , Khakimov Z. , Vorobev Y. , Hajiyev E. , Khorolskaya T. [2026]. A Predictive Analytics for Customer Lifetime Value Estimation in Digital Banking using Interval-Valued Neutrosophic Set with Fine Tuning Approach. International Journal of Neutrosophic Science. (): 193-205. DOI: https://doi.org/10.54216/IJNS.270118
    Sherov, A. Khakimov, Z. Vorobev, Y. Hajiyev, E. Khorolskaya, T. "A Predictive Analytics for Customer Lifetime Value Estimation in Digital Banking using Interval-Valued Neutrosophic Set with Fine Tuning Approach," International Journal of Neutrosophic Science, vol. , no. , pp. 193-205, 2026. DOI: https://doi.org/10.54216/IJNS.270118