International Journal of Neutrosophic Science

Journal DOI

https://doi.org/10.54216/IJNS

Submit Your Paper

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

Volume 18 , Issue 3 , PP: 125-134, 2022 | Cite this article as | XML | Html | PDF | Full Length Article

Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification Model

Sundus Naji AL-Aziz 1 * , Reem Atassi 2 , Abd Al-Aziz Hosni El-Bagoury 3

  • 1 Department of Mathematical Sciences, Faculty of Science, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia - (snalaziz@pnu.edu.sa)
  • 2 Faculty of Computer Information System, Higher Colleges of Technology, UAE - (ratassi@hct.ac.ae)
  • 3 Higher Institute of Engineering and Technology, El-Mahala El-Kobra, Egypt. - (azizhel2013@yahoo.com)
  • Doi: https://doi.org/10.54216/IJNS.1803011

    Received: February3, 2022 Accepted: April 22, 2022
    Abstract

    Data classification is the procedure of investigating structured or unstructured data and forming it into distinct classes depending upon file types, size, etc. It assist the organizations to derive important solutions based on the data and helps decision making process. The computational intelligence techniques such as neural computing, fuzzy logic, machine learning, etc. can be used to design effective data classification models. This study offers a Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification (HNLQOCO) model. The presented HNLQOCO algorithm aims to integrate the concepts of NL and QOCO algorithm for improved data classification outcomes. Besides, the QOCO algorithm is designed by incorporating the concepts of quasi oppositional based learning (QOBL) with traditional chimp optimization algorithm (COA). Here, the NL is applied to represent various kinds of knowledge and the QOCO algorithm is applied to tune the produced NS rules. The experimental result analysis of the HNLQOCO model is tested using three benchmark medical dataset. The obtained results reported the significant performance of the HNLQOCO model over the other methods.

    Keywords :

    Data classification, Neutrosophic Logic, Chimp optimization algorithm, Rule generation, QOBL.

    References

    [1] Tanha, J., Abdi, Y., Samadi, N., Razzaghi, N. and Asadpour, M., 2020. Boosting methods for multiclass

    imbalanced data classification: an experimental review. Journal of Big Data, 7(1), pp.1-47.

    [2] Griffiths, D. and Boehm, J., 2019. A review on deep learning techniques for 3D sensed data

    classification. Remote Sensing, 11(12), p.1499.

    [3] Basavegowda, H.S. and Dagnew, G., 2020. Deep learning approach for microarray cancer data

    classification. CAAI Trans. Intell. Technol., 5(1), pp.22-33.

    [4] Liu, H., Zhou, M. and Liu, Q., 2019. An embedded feature selection method for imbalanced data

    classification. IEEE/CAA Journal of Automatica Sinica, 6(3), pp.703-715.

    [5] Wang, Y., Gan, W., Yang, J., Wu, W. and Yan, J., 2019. Dynamic curriculum learning for imbalanced

    data classification. In Proceedings of the IEEE/CVF International Conference on Computer Vision (pp.

    5017-5026).

    [6] Sherwani, F., Ibrahim, B.S.K.K. and Asad, M.M., 2021. Hybridized classification algorithms for data

    classification applications: A review. Egyptian Informatics Journal, 22(2), pp.185-192.

    [7] Xia, Y., Li, W., Zhuang, Q. and Zhang, Z., 2021. Quantum-enhanced data classification with a

    variational entangled sensor network. Physical Review X, 11(2), p.021047.

    [8] Chaudhuri, A. and Sahu, T.P., 2021. A hybrid feature selection method based on Binary Jaya algorithm

    for micro-array data classification. Computers & Electrical Engineering, 90, p.106963.

    [9] Jabbar, M.A., 2021. Breast cancer data classification using ensemble machine learning. Engineering

    and Applied Science Research, 48(1), pp.65-72.

    [10] Mirzaei, B., Nikpour, B. and Nezamabadi-pour, H., 2021. CDBH: A clustering and density-based

    hybrid approach for imbalanced data classification. Expert Systems with Applications, 164, p.114035.

    [11] Thanga Selvi, R. and Muthulakshmi, I., 2021. An optimal artificial neural network based big data

    application for heart disease diagnosis and classification model. Journal of Ambient Intelligence and

    Humanized Computing, 12(6), pp.6129-6139.

    [12] Sun, Y. and Platoš, J., 2021. High‐dimensional data classification model based on random projection

    and Bagging‐support vector machine. Concurrency and Computation: Practice and Experience, 33(9),

    p.e6095.

    [13] Ramkissoon, A.N., Mohammed, S. and Goodridge, W., 2021. Determining an Optimal Data

    Classification Model for Credibility-Based Fake News Detection. The Review of Socionetwork

    Strategies, 15(2), pp.347-380.

    [14] Aydadenta, H. and Adiwijaya, A., 2018. A clustering approach for feature selection in microarray data

    classification using random forest. Journal of Information Processing Systems, 14(5), pp.1167-1175.

    [15] Mikail Bal , Katy D. Ahmad , Arwa A. Hajjari , Rozina Ali, The Structure Of Imperfect Triplets In

    Several Refined Neutrosophic Rings, Journal of Neutrosophic and Fuzzy Systems, Vol. 2 , No.

    1, (2022) : 21-30 (Doi : https://doi.org/10.54216/JNFS.020103)

    [16] Jain, A., Nandi, B.P., Gupta, C. and KumarTayal, D., 2019, March. A hybrid framework based on PSO

    and neutrosophic set for document level sentiment analysis. In International Conference on Information

    Technology and Applied Mathematics (pp. 372-379). Springer, Cham.

    [17] Khishe, M. and Mosavi, M.R., 2020. Chimp optimization algorithm. Expert systems with

    applications, 149, p.113338.

    [18] Jia, H., Sun, K., Zhang, W. and Leng, X., 2021. An enhanced chimp optimization algorithm for

    continuous optimization domains. Complex & Intelligent Systems, pp.1-18.

    [19] Dataset Source: https://archive.ics.uci.edu/ml/datasets.php

    [20] Basha, S.H., Abdalla, A.S. and Hassanien, A.E., 2016, December. Gnrcs: hybrid classification system

    based on neutrosophic logic and genetic algorithm. In 2016 12th International Computer Engineering

    Conference (ICENCO) (pp. 53-58). IEEE.

    Cite This Article As :
    Naji, Sundus. , Atassi, Reem. , Al-Aziz, Abd. Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification Model. International Journal of Neutrosophic Science, vol. , no. , 2022, pp. 125-134. DOI: https://doi.org/10.54216/IJNS.1803011
    Naji, S. Atassi, R. Al-Aziz, A. (2022). Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification Model. International Journal of Neutrosophic Science, (), 125-134. DOI: https://doi.org/10.54216/IJNS.1803011
    Naji, Sundus. Atassi, Reem. Al-Aziz, Abd. Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification Model. International Journal of Neutrosophic Science , no. (2022): 125-134. DOI: https://doi.org/10.54216/IJNS.1803011
    Naji, S. , Atassi, R. , Al-Aziz, A. (2022) . Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification Model. International Journal of Neutrosophic Science , () , 125-134 . DOI: https://doi.org/10.54216/IJNS.1803011
    Naji S. , Atassi R. , Al-Aziz A. [2022]. Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification Model. International Journal of Neutrosophic Science. (): 125-134. DOI: https://doi.org/10.54216/IJNS.1803011
    Naji, S. Atassi, R. Al-Aziz, A. "Hybridization of Neutrosophic Logic with Quasi-Oppositional Chimp Optimization based Data Classification Model," International Journal of Neutrosophic Science, vol. , no. , pp. 125-134, 2022. DOI: https://doi.org/10.54216/IJNS.1803011