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 2 , PP: , 2025 | Cite this article as | XML | Html | PDF | Full Length Article

Significant Features with M-Polar Neutrosophic Topological Spaces and Grey Wolf Optimization Algorithm for Bankruptcy Prediction Model

Sergey Bakhvalov 1 , Rustem Shichiyakh 2 , Irina Gladysheva 3 , M. Ilayaraja 4 , K. Shankar 5 *

  • 1 Department of Economics and Management of Elabuga Institute, Kazan Federal University, Kazan, 420008, Russia - (bakhvalov.s.yu@yandex.ru)
  • 2 Department of Management, Kuban State Agrarian University named after I.T. Trubilin, Krasnodar, 350044, Russia - (shichiyakh.r.a@mail.ru)
  • 3 - (gladysheva.i@yahoo.com)
  • 4 Department of Computer Science and Information Technology, School of Computing, Kalasalingam Academy of Research and Education, Krishnankoil, India - (ilayaraja.m@klu.ac.in)
  • 5 Department of Computer Science and Engineering, Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Chennai, 602105, India - (drkshankar@ieee.org)
  • Doi: https://doi.org/10.54216/IJNS.250225

    Received: February 24, 2024 Revised: May 13, 2024 Accepted: August 22, 2024
    Abstract

    An interval neutrosophic set (INS) is an example of a NS, which is simplified from the theory of fuzzy set (FS), classical set, paradoxist set, intuitionistic FS, paraconsistent set, interval-valued FS, interval-valued intuitionistic FS, and tautological set. The association of an element to an INS is stated by 3 values such as t, i, and f. These values signify memberships of truth, indeterminacy, and false, correspondingly. Bankruptcy prediction is also called a corporate failure or bankruptcy prediction, which is a major focus in the area of finance and accounting, as the condition of a business is extremely substantial to its partners, shareholders, investors, creditors, even its suppliers, and buyers. Practitioners and researchers were reserved for emerging models and approaches to forecast the bankruptcy of companies more rapidly and precisely. With the excessive growth of contemporary information technology, it has developed to use machine learning (ML) or deep learning (DL) techniques to perform the prediction, from the preliminary study of economic statements. This study introduces an Optimized Bankruptcy Prediction using Feature Selection with m-Polar Neutrosophic Topological Spaces (OBPFS-MPNTS) method. The projected OBPFS-MPNTS system uses the parameter tuning and DL method to forecast the presence of bankruptcy. To achieve this, the OBPFS-MPNTS approach uses min-max normalization to convert input data into a uniform format. The OBPFS-MPNTS method begins with a grey wolf optimization (GWO) for selecting feature subsets. In addition, the OBPFS-MPNTS algorithm applies the m-polar neutrosophic topological space (MPNTS) system for bankruptcy prediction. To upsurge the performance of the MPNTS system, the whale optimizer algorithm (WOA) is employed. The experimentation outcome study of the OBPFS-MPNTS system is verified on a benchmark database and the outcomes pointed out the developments of the OBPFS-MPNTS algorithm over other current methodologies.

    Keywords :

    Bankruptcy Prediction , Feature Selection , Neutrosophic Set , m-Polar Neutrosophic Topological Spaces , Fuzzy Set

    References

    [1]       Ashraf, S. and Abdullah, S., 2020. Decision support modeling for agriculture land selection based on sine trigonometric single valued neutrosophic information. International Journal of Neutrosophic Science (IJNS), 9(2), pp.60-73.

    [2]       Ashraf, S. and Abdullah, S., 2020. Decision support modeling for agriculture land selection based on sine trigonometric single valued neutrosophic information. International Journal of Neutrosophic Science (IJNS), 9(2), pp.60-73.

    [3]       Al-Hamido, R.K., Salha, L. and Gharibah, T., 2020. Pre Separation Axioms In Neutrosophic Crisp Topological Spaces. International Journal of Neutrosophic Science, 8(2), pp.72-79.

    [4]       Salama, A.A., Henawy, M.B. and Alhabib, R., 2020. Online Analytical Processing Operations via Neutrosophic Systems. International Journal of Neutrosophic Science, 8(2), pp.87-109.

    [5]       Saha, A. and Paul, A., 2019. Generalized Weighted Exponential Similarity Measures of Single Valued Neutrosophic Sets. Int. J. Neutrosophic Sci, pp.57-66.

    [6]       Agarwal, V., Taffler, R. (2008), “Comparing the Performance of Market-based and Accountingbased Bankruptcy Prediction Models”, Journal of Banking and Finance, vol. 32, n° 8, pp. 1541-1551.

    [7]       Altman, E. I. (1968), “Financial Ratios, Discriminant Analysis and the Prediction of Corporate Bankruptcy”, Journal of Finance, vol. 23, n° 4, pp. 589-609.

    [8]       Altman, E. I., Marco, G., Varetto, F. (1994), “Corporate Distress Diagnosis: Comparisons Using Linear Discriminant Analysis and Neural Network – The Italian Experience”, Journal of Banking and Finance, vol. 18, n° 3, pp. 505-529.

    [9]       Barniv, R., Agarwal, A., & Leach, R. (1997). Predicting the outcome following bankruptcy filing: a three-state classification using neural networks. Intelligent Systems in Accounting, Finance and Management, 6, 177–194.

    [10]    Beaver, W. (1966). Financial ratios as prediction of failure. Empirical research in accounting: selected studies. Journal of Accounting Research, 4, 71–111.

    [11]    Chandok, G.A., Rexy, V., Basha, H.A. and Selvi, H., 2024. Enhancing Bankruptcy Prediction with White Shark Optimizer and Deep Learning: A Hybrid Approach for Accurate Financial Risk Assessment. International Journal of Intelligent Engineering & Systems, 17(1).

    [12]    Muslim, M.A., Dasril, Y., Javed, H., Abror, W.F., Pertiwi, D.A.A. and Mustaqim, T., 2024. An ensemble stacking algorithm to improve model accuracy in bankruptcy prediction. Journal of Data Science and Intelligent Systems, 2(2), pp.79-86.

    [13]    Zhao, J., Ouenniche, J. and De Smedt, J., 2024. A complex network analysis approach to bankruptcy prediction using company relational information-based drivers. Knowledge-Based Systems, 300, p.112234.

    [14]    Khashei, M., Etemadi, S. and Bakhtiarvand, N., 2024. A New Discrete Learning-Based Logistic Regression Classifier for Bankruptcy Prediction. Wireless Personal Communications, 134(2), pp.1075-1092.

    [15]    Sen, P., Assi, S., Assi, J., Liatsis, P., Jayabalan, M. and Al-Jumeily, D., 2023, August. Evaluating Machine Learning and Deep Learning Analytics for Predicting Bankruptcy of Companies. In International Conference on Mechatronics and Intelligent Robotics (pp. 407-419). Singapore: Springer Nature Singapore.

    [16]    Adisa, J.A., Ojo, S., Owolawi, P.A., Pretorius, A. and Ojo, S.O., 2023. Application of an improved optimization using learning strategies and long short term-memory for bankruptcy prediction. IAENG International Journal of Computer Science, 50(2), pp.512-524.

    [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]    Deng, S., Pan, H.Y., Wang, H.G., Xu, S.K., Yan, X.P., Li, C.W., Peng, M.G., Peng, H.P., Shi, L., Cui, M. and Zhao, F., 2024. A hybrid machine learning optimization algorithm for multivariable pore pressure prediction. Petroleum Science, 21(1), pp.535-550.

    [19]    Hashmi, M.R., Riaz, M. and Smarandache, F., 2020. m-Polar neutrosophic topology with applications to multi-criteria decision-making in medical diagnosis and clustering analysis. International Journal of Fuzzy Systems, 22, pp.273-292.

    [20]    Salehnia, T., Montazerolghaem, A., Mirjalili, S., Khayyambashi, M.R. and Abualigah, L., 2023. SDN-based optimal task scheduling method in Fog-IoT network using combination of AO and WOA. Handbook of Whale Optimization Algorithm.

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

    [22]    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.

    Cite This Article As :
    Bakhvalov, Sergey. , Shichiyakh, Rustem. , Gladysheva, Irina. , Ilayaraja, M.. , Shankar, K.. Significant Features with M-Polar Neutrosophic Topological Spaces and Grey Wolf Optimization Algorithm for Bankruptcy Prediction Model. International Journal of Neutrosophic Science, vol. , no. , 2025, pp. . DOI: https://doi.org/10.54216/IJNS.250225
    Bakhvalov, S. Shichiyakh, R. Gladysheva, I. Ilayaraja, M. Shankar, K. (2025). Significant Features with M-Polar Neutrosophic Topological Spaces and Grey Wolf Optimization Algorithm for Bankruptcy Prediction Model. International Journal of Neutrosophic Science, (), . DOI: https://doi.org/10.54216/IJNS.250225
    Bakhvalov, Sergey. Shichiyakh, Rustem. Gladysheva, Irina. Ilayaraja, M.. Shankar, K.. Significant Features with M-Polar Neutrosophic Topological Spaces and Grey Wolf Optimization Algorithm for Bankruptcy Prediction Model. International Journal of Neutrosophic Science , no. (2025): . DOI: https://doi.org/10.54216/IJNS.250225
    Bakhvalov, S. , Shichiyakh, R. , Gladysheva, I. , Ilayaraja, M. , Shankar, K. (2025) . Significant Features with M-Polar Neutrosophic Topological Spaces and Grey Wolf Optimization Algorithm for Bankruptcy Prediction Model. International Journal of Neutrosophic Science , () , . DOI: https://doi.org/10.54216/IJNS.250225
    Bakhvalov S. , Shichiyakh R. , Gladysheva I. , Ilayaraja M. , Shankar K. [2025]. Significant Features with M-Polar Neutrosophic Topological Spaces and Grey Wolf Optimization Algorithm for Bankruptcy Prediction Model. International Journal of Neutrosophic Science. (): . DOI: https://doi.org/10.54216/IJNS.250225
    Bakhvalov, S. Shichiyakh, R. Gladysheva, I. Ilayaraja, M. Shankar, K. "Significant Features with M-Polar Neutrosophic Topological Spaces and Grey Wolf Optimization Algorithm for Bankruptcy Prediction Model," International Journal of Neutrosophic Science, vol. , no. , pp. , 2025. DOI: https://doi.org/10.54216/IJNS.250225