As of August 2024, International Journal "Notes on Intuitionistic Fuzzy Sets" is being indexed in Scopus.
Please check our Instructions to Authors and send your manuscripts to nifs.journal@gmail.com. Next issue: September/October 2024.

Open Call for Papers: International Workshop on Intuitionistic Fuzzy Sets • 13 December 2024 • Banska Bystrica, Slovakia/ online (hybrid mode).
Deadline for submissions: 16 November 2024.

Issue:Intuitionistic fuzzy evaluation of artificial neural network model

From Ifigenia, the wiki for intuitionistic fuzzy sets and generalized nets
(Redirected from Issue:Nifs/27/4/71-77)
Jump to navigation Jump to search
shortcut
http://ifigenia.org/wiki/issue:nifs/27/4/71-77
Title of paper: Intuitionistic fuzzy evaluation of artificial neural network model
Author(s):
Todor Petkov
“Prof. Dr. Assen Zlatarov” University, 1 “Prof. Yakimov” Blvd, Burgas–8010, Bulgaria
todor_petkov@btu.bg
Veselina Bureva
“Prof. Dr. Assen Zlatarov” University, 1 “Prof. Yakimov” Blvd, Burgas–8010, Bulgaria
vbureva@btu.bg
Stanislav Popov
“Prof. Dr. Assen Zlatarov” University, 1 “Prof. Yakimov” Blvd, Burgas–8010, Bulgaria
stani_popov@yahoo.com
Published in: Notes on Intuitionistic Fuzzy Sets, Volume 27 (2021), Number 4, pages 71-77
DOI: https://doi.org/10.7546/nifs.2021.27.4.71-77
Download:  PDF (1251  Kb, File info)
Abstract: In this paper a method that evaluates a trained artificial neural network is presented. The learning type of an artificial neural network is supervised learning which requires labeled input training vectors. Labeled medical data is provided to train the network, where the labels can either be 1 if the person is alive, or 0 if the person has deceased. The data is divided into training and validation vectors. The validation input vectors are used to evaluate the model and the results are summarized by using intuitionistic fuzzy values.
Keywords: Intuitionistic fuzzy evaluation, Intuitionistic fuzzy sets, Neural network.
AMS Classification: 03E72.
References:
  1. Aggarwal, C. (2018). Neural Networks and Deep Learning: A Textbook. 1st edition, Springer.
  2. Alama, A., Arana-Daniel, N., & Lopez-Franco, C. (2019). Artificial Neural Network for Engineering Applications. 1st Edition, Elsevier Inc.
  3. Atanassov, K. (2012). On Intuitionistic Fuzzy Sets Theory. Springer, Berlin.
  4. Atanassov, K. (2015). Intuitionistic fuzzy logics as tools for evaluation of Data Mining processes. Knowledge-Based Systems, 80, 122–130.
  5. Atanassov, K. (2020). Circular Intuitionistic Fuzzy Sets. Journal of Intelligent and Fuzzy Systems, 39(5), 5981–5986.
  6. Atanassov, K. (2020). Generalized Nets and Intuitionistic Fuzziness in Data Mining. “Prof. Marin Drinov” Publishing House of the Bulgarian Academy of Sciences, Sofia.
  7. Atanassov, K. (2020). Interval-Valued Intuitionistic Fuzzy Sets. Springer, Cham.
  8. Atanassov, K., & Marinov, E. (2021). Four Distances for Circular Intuitionistic Fuzzy Sets. Mathematics, 9(10), Article No. 1121.
  9. Atanassov, K., Szmidt, E., & Kacprzyk, J. (2013). On intuitionistic fuzzy pairs. Notes on Intuitionistic Fuzzy Sets, 19(3), 1–13.
  10. Chicco, D., & Jurman, G. (2020). Machine learning can predict survival of patients with heart failure from serum creatinine and ejection fraction alone. BMC Medical Informatics and Decision Making, 20, Article No. 16.
  11. Hagan, M., Demuth, H., Beale, M., & De Jesús, O. (2014). Neural Network Design. 2nd Edition, Retrieved from: https://hagan.okstate.edu/NNDesign.pdf. Accessed: 27.09.2021.
  12. Haley, W. (2018). Artificial Intelligence. Grey House Publishing.
  13. Sakhiya, Nayan (2021). Python: Heart Fail: Analysis and Quick-prediction, Retrieved from: https://www.kaggle.com/nayansakhiya/heart-fail-analysis-and-quick-prediction/data. Accessed: 27.09.2021.
Citations:

The list of publications, citing this article may be empty or incomplete. If you can provide relevant data, please, write on the talk page.