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 25 , Issue 3 , PP: 206-218, 2025 | Cite this article as | XML | Html | PDF | Full Length Article

Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods for FinTech Applications

Maksim Kuznetsov 1 * , Irina Kosorukova 2 , Veronika Denisovich 3 , Elena Klochko 4 , Alexey Dengaev 5

  • 1 Department of Economics and Management of Elabuga Institute, Kazan Federal University, Kazan, 420008, Russia; Department of Economics and Management, Khorezm University of Economics, Urgench, 220100, Uzbekistan - (kuznetsov.m.s@inbox.ru)
  • 2 Department of Valuation and Corporate Finance, Moscow University for Industry and Finance "Synergy", Moscow, 125315, Russia; Department of Corporate Finance and Corporate Governance, Financial University under the Government of the Russian Federation, Moscow, 125993, Russia - (i.v.kosorukova@yandex.ru)
  • 3 Institute of Digital Technologies and Law, Kazan Innovative University named after V. G. Timiryasov, Kazan, 420111, Russia; Department of International Relations Political Science and Regional Studies, South Ural State University (National Research University), Chelyabinsk, 454080, Russia - (veronika.denisovich@inbox.ru)
  • 4 Department of Management, Kuban State Agrarian University named after I.T. Trubilin, Krasnodar, 350044, Russia - (klochko.e.n@yandex.ru)
  • 5 Faculty of Oil and Gas Fields Development, Gubkin Russian State University of Oil and Gas, Moscow, 119991, Russia - (dengaev.a@gubkin.ru)
  • Doi: https://doi.org/10.54216/IJNS.250319

    Received: February 26, 2024 Revised: May 28, 2024 Accepted: October 05, 2024
    Abstract

    Neutrosophic set (NS) is particularly appropriate in applications where data is incomplete, unclear, or inconsistent, which offers an effectual means for analyzing and exhibiting complex mechanisms. An NS is a mathematical technique to manage uncertainty, indeterminacy, and imprecision. It enlarges classical sets, IF sets, and fuzzy sets by presenting three degrees such as indeterminacy (I), false (F), and truth (T). Financial technology (Fintech) plays an essential part in advancing modern society, technology, economies, and various fields. Financial crisis prediction (FCP) plays a crucial role in shaping economic outcomes. Past research has predominantly focused on using deep learning (DL), machine learning (ML), and statistical methods to forecast the financial stability of business. In this manuscript, we focus on the development of Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods and Multi-Strategy Improved Butterfly Optimization (EDCINCRS-MSIBO) Algorithm for FinTech Applications. It contains distinct kinds of stages such as data normalization, feature selection, classification, and parameter tuning. In the EDCINCRS-MSIBO technique, a min-max normalization-based data pre-processing model to scale the raw data into a uniform format. For feature subset selection, the whale optimizer algorithm (WOA) is employed to reduce the dimensionality and improve model efficiency by selecting the most relevant features. In addition, the EDCINCRS-MSIBO technique takes place interval neutrosophic covering rough sets (INCRS) classifier is utilized for detection and classification of a financial crisis. Finally, a multi-strategy improved butterfly optimization algorithm (MSIBOA) is exploited for the optimum parameter adjustment of the INCRS model. To confirm the better predictive solution of the EDCINCRS-MSIBO model, a wide range of simulations are executed on the two benchmark databases. The comparative result analysis displays the encouraging outcomes of the EDCINCRS-MSIBO method on the existing techniques

    Keywords :

    Neutrosophic Set , Rough Sets , Financial Crisis Prediction , Neutrosophic Covering Rough Sets , FinTech , Feature Subset Selection

    References

    [1] Almuhur, E., Miqdad, H., Al-labadi, M. and Idrisi, M.I., 2024. μ-L-Closed Subsets of Noetherian Generalized Topological Spaces. International Journal of Neutrosophic Science, 23(3), pp.148-48.

    [2] Tashtemirovich, A.O., Balba, M.E., Ibrohimjon, F. and Batirova, N., Investigating the Impact of Artificial Intelligence on Digital Marketing Tactics Strategies Using Neutrosophic Set.

    [3] Sivakumar, C., Al-Qadri, M.O., Alsaraireh, A.A., Al-Husban, A., Meenakshi, P.M., Rajesh, N. and Palanikumar, M., 2024. q-rung square root interval-valued neutrosophic sets with respect to aggregated operators using multiple attribute decision making. International Journal of Neutrosophic Science, 23(3), pp.154-54.

    [4] Gharib, M., Fakhry, A.E., Ali, A.M., Abdelhafeez, A. and Elbehiery, H., 2024. Single Valued Neutrosophic Sets for Analysis Opinions of Customer in Waste Management. International Journal of Neutrosophic Science, 23(3), pp.184-84.

    [5] Ali Alqazzaz. "Integrated Neutrosophic methodology and Machine Learning Models for Cybersecurity Risk Assessment: An exploratory study." International Journal of Neutrosophic Science, Vol. 23, No. 3, 2024 ,PP. 195-207.

    [6] Balmaseda, V.; Coronado, M.; de Cadenas-Santiagoc, G. Predicting Systemic Risk in Financial Systems Using Deep Graph Learning. Intell. Syst. Appl. 2023, 19, 200240.

    [7] Uthayakumar, J.; Metawa, N.; Shankar, K.; Lakshmanaprabu, S.K. An intelligent hybrid model for financial crisis prediction using machine learning techniques. Inf. Syst. e-Bus. Manag. 2020, 18, 617–645.

    [8] Khuwaja, P.; Khowaja, S.A.; Dev, K. Adversarial learning networks for fintech applications using heterogeneous data sources. IEEE Internet Things J. 2021, 10, 2194–2201.

    [9] S. K. S. Tyagi and Q. Boyang, “An intelligent internet of things aided financial crisis prediction model in FinTech,” IEEE Internet of Things Journal, vol. 10, pp. 1, 2021.

    [10] J. Uthayakumar, N. Metawa, K. Shankar and S. K. Lakshmanaprabu, “Financial crisis prediction model using ant colony optimization,” International Journal of Information Management, vol. 50, no. 5, pp. 538–556, 2020.

    [11] Osadchy, E., Abdullayev, I., Bakhvalov, S., Klochko, E. and Tagibova, A., 2024. Jellyfish Search Algorithm Based Feature Selection with Optimal Deep Learning for Predicting Financial Crises in the Economy and Society. Full Length Article, 14(2), pp.186-86.

    [12] Katib, I., Assiri, F.Y., Althaqafi, T., AlKubaisy, Z.M., Hamed, D. and Ragab, M., 2023. Hybrid Hunter–Prey Optimization with Deep Learning-Based Fintech for Predicting Financial Crises in the Economy and Society. Electronics, 12(16), p.3429.

    [13] Wu, C., Jiang, C., Wang, Z. and Ding, Y., 2024. Predicting financial distress using current reports: A novel deep learning method based on user-response-guided attention. Decision Support Systems, 179, p.114176.

    [14] Kalaivani, R. and Saravanan, A., 2023, November. Exploiting pattern recognition using chimp optimization algorithm with machine learning for financial crisis prediction. In 2023 International Conference on Sustainable Communication Networks and Application (ICSCNA) (pp. 944-950). IEEE.

    [15] Chen, S., Huang, Y. and Ge, L., 2024. An early warning system for financial crises: a temporal convolutional network approach. Technological and Economic Development of Economy, 30(3), pp.688-711.

    [16] Muthukumaran, K., Hariharanath, K. and Haridasan, V., 2023. Feature Selection with Optimal Variational Auto Encoder for Financial Crisis Prediction. Computer Systems Science & Engineering, 45(1).

    [17] Shantal, M., Othman, Z. and Bakar, A.A., 2023. A novel approach for data feature weighting using correlation coefficients and min–max normalization. Symmetry, 15(12), p.2185.

    [18] Song, W., Han, X. and Qi, J., 2023. Prediction of Gas Emission in the Working Face Based on LASSO-WOA-XGBoost. Atmosphere, 14(11), p.1628.

    [19] Xu, D., Xian, H. and Lu, X., 2021. Interval neutrosophic covering rough sets based on neighborhoods. Infinite Study.

    [20] Wang, R., Dong, Y. and Lu, J., 2024. Short-term Wind Power Forecasts based on VMD-KPCA and CFSBOA-BiLSTM. International Journal of Electric Power and Energy Studies, 2(1), pp.39-55.

    [21] https://archive.ics.uci.edu/ml/datasets/statlog+(german+credit+data)

    [22] http://archive.ics.uci.edu/ml/datasets/statlog+(australian+credit+approval)

    Cite This Article As :
    Kuznetsov, Maksim. , Kosorukova, Irina. , Denisovich, Veronika. , Klochko, Elena. , Dengaev, Alexey. Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods for FinTech Applications. International Journal of Neutrosophic Science, vol. , no. , 2025, pp. 206-218. DOI: https://doi.org/10.54216/IJNS.250319
    Kuznetsov, M. Kosorukova, I. Denisovich, V. Klochko, E. Dengaev, A. (2025). Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods for FinTech Applications. International Journal of Neutrosophic Science, (), 206-218. DOI: https://doi.org/10.54216/IJNS.250319
    Kuznetsov, Maksim. Kosorukova, Irina. Denisovich, Veronika. Klochko, Elena. Dengaev, Alexey. Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods for FinTech Applications. International Journal of Neutrosophic Science , no. (2025): 206-218. DOI: https://doi.org/10.54216/IJNS.250319
    Kuznetsov, M. , Kosorukova, I. , Denisovich, V. , Klochko, E. , Dengaev, A. (2025) . Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods for FinTech Applications. International Journal of Neutrosophic Science , () , 206-218 . DOI: https://doi.org/10.54216/IJNS.250319
    Kuznetsov M. , Kosorukova I. , Denisovich V. , Klochko E. , Dengaev A. [2025]. Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods for FinTech Applications. International Journal of Neutrosophic Science. (): 206-218. DOI: https://doi.org/10.54216/IJNS.250319
    Kuznetsov, M. Kosorukova, I. Denisovich, V. Klochko, E. Dengaev, A. "Effective Data Classification using Interval Neutrosophic Covering Rough Sets based on Neighborhoods for FinTech Applications," International Journal of Neutrosophic Science, vol. , no. , pp. 206-218, 2025. DOI: https://doi.org/10.54216/IJNS.250319