Impact learning: A learning method from feature’s impact and competition

Article


Prottasha, N. J., Murad, S. A., Muzahid, A. J. M., Rana, M., Kowsher, M., Adhikary, A., Biswas, S. and Bairagi, A. K. 2023. Impact learning: A learning method from feature’s impact and competition. Journal of Computational Science. 69 (Art. 102011). https://doi.org/10.1016/j.jocs.2023.102011
AuthorsProttasha, N. J., Murad, S. A., Muzahid, A. J. M., Rana, M., Kowsher, M., Adhikary, A., Biswas, S. and Bairagi, A. K.
Abstract

Machine learning is the study of computer algorithms that can automatically improve based on data and experience. Machine learning algorithms build a model from sample data, called training data, to make predictions or judgments without being explicitly programmed to do so. A variety of well-known machine learning algorithms have been developed for use in the field of computer science to analyze data. This paper introduced a new machine learning algorithm called impact learning. Impact learning is a supervised learning algorithm that can be consolidated in both classification and regression problems. It can furthermore manifest its superiority in analyzing competitive data. This algorithm is remarkable for learning from the competitive situation and the competition comes from the effects of autonomous features. It is prepared by the impacts of the highlights from the intrinsic rate of natural increase (RNI). We, moreover, manifest the prevalence of impact learning over the conventional machine learning algorithm.

JournalJournal of Computational Science
Journal citation69 (Art. 102011)
ISSN1877-7503
Year2023
PublisherElsevier
Digital Object Identifier (DOI)https://doi.org/10.1016/j.jocs.2023.102011
Publication dates
Online06 Apr 2023
Print11 Apr 2023
Publication process dates
Accepted21 Mar 2023
Deposited10 Apr 2023
Copyright holder© 2023 Elsevier
Permalink -

https://repository.uel.ac.uk/item/8vx4w

  • 62
    total views
  • 0
    total downloads
  • 4
    views this month
  • 0
    downloads this month

Export as

Related outputs

Interoperability Benefits and Challenges in Smart City Services: Blockchain as a Solution
Biswas, S., Yao, Z., Yan, L., Alqhatani, A., Bairagi, A. K., Asiri, F. and Masud, M. 2023. Interoperability Benefits and Challenges in Smart City Services: Blockchain as a Solution. Electronics. 12 (4), p. Art. 1036. https://doi.org/https://doi.org/10.3390/electronics12041036
Blockchain Empowered Federated Learning Ecosystem for Securing Consumer IoT Features Analysis
Alghamdi, A., Zhu, J., Yin, G., Shorfuzzaman, M., Alsufyani, N., Alyami, S. and Biswas, S. 2022. Blockchain Empowered Federated Learning Ecosystem for Securing Consumer IoT Features Analysis. Sensors. 22 (18), p. 6786. https://doi.org/10.3390/s22186786
A Machine Learning-Based Anomaly Prediction Service for Software-Defined Networks
Latif, Z., Umer, Q., Lee, C., Sharif, K., Li, F. and Biswas, S. 2022. A Machine Learning-Based Anomaly Prediction Service for Software-Defined Networks. Sensors. 22 (21), p. Art. 8434. https://doi.org/10.3390/s22218434