Hyper-parameter tuning for support vector machine using an improved cat swarm optimization algorithm
Keywords:
Cat Swarm Optimization, Support Vector Machine, Opposition-based learningAbstract
Support vector machine (SVM) is a supervised machine learning algorithm for classification and regression problems. SVM performs better when combined with other classifiers or optimized with an optimization algorithm. The SVM parameters such as kernel and penalty have good performance on the classification accuracy. Recently, a lot of evolutionary optimization algorithms were used for optimizing the SVM. In this paper, an Improved Cat Swarm Optimization (ICSO) was proposed for optimizing the parameters of SVM with the aim of enhancing its performance. CSOs have the problem of a low convergence rate and are easily trapped in local optima. To address this problem, a new parameter was added to the velocity for the tracing mode and the Opposition-Based Learning (OBL) technique was used to modify the CSO algorithm (ICSO-SVM). A new parameter was introduced to guide the cats’ positions to the local and global best positions in the velocity tracing mode of the CSO algorithm. The proposed algorithm was verified using 15 datasets from the University of California Irvine (UCI) data repository and also six different performance metrics were used. The experimental results clearly indicate that the proposed method performs better than the other state-of-the-art methods.
Published
How to Cite
Issue
Section
Copyright (c) 2023 Silifat Adaramaja Abdulraheem, Salisu Aliyu, Fatima Binta Abdullahi

This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite
Similar Articles
- Timothy Kayode Samson, Francis Olatunbosun Aweda, Wind speed prediction in some major cities in Africa using Linear Regression and Random Forest algorithms , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 4, November 2024
- O. Oderinde, C. L. Mgbechidinma, A. O. Agbeja, A. A. Ajayi, A. O. Ogundiran, O. O. Olaide, O. A. Orelaja, C. A. Mgbechidimma, C. O. Ajanaku, K. D. Oyeyemi, Appraising raw exhaust pollutant gases emissions from industrial generators using statistics and machine learning approaches , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 4, November 2025
- Umaru C. Obini, Chukwu Jeremiah, Sylvester A. Igwe, Development of a machine learning based fileless malware filter system for cyber-security , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 4, November 2024
- Muhammad Dahiru Liman, Salamatu Ibrahim Osanga, Esther Samuel Alu, Sa'adu Zakariya, Regularization Effects in Deep Learning Architecture , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 2, May 2024
- Peter Chibuike Okoye, Samuel Ogochukwu Azi, Taoreed O. Owolabi, Perovskite tetragonality modeling for functional properties enhancement using Newtonian search based support vector regression computational method , Journal of the Nigerian Society of Physical Sciences: Volume 4, Issue 1, February 2022
- L. G. Salaudeen, D. GABI, M. Garba, H. U. Suru, Deep convolutional neural network based synthetic minority over sampling technique: a forfending model for fraudulent credit card transactions in financial institution , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 2, May 2024
- P. O. Odion, M. N. Musa, S. U. Shuaibu, Age Prediction from Sclera Images using Deep Learning , Journal of the Nigerian Society of Physical Sciences: Volume 4, Issue 3, August 2022
- Emmanuel C. Ukekwe, Adaora A. Obayi, Akpa Johnson, Daniel A. Musa, Jonathan C. Agbo, Optimizing data and voice service delivery for mobile phones based on clients' demand and location using affinity propagation machine learning , Journal of the Nigerian Society of Physical Sciences: Volume 7, Issue 2, May 2025
- Constantin Falk, Tarek El Ghayed , Ron van de Sand, Jörg Reiff-Stephan, A Data-Driven Approach Towards the Application of Reinforcement Learning Based HVAC Control , Journal of the Nigerian Society of Physical Sciences: Volume 5, Issue 1, February 2023
- Nneka Ernestina Richard-Nnabu, Chinagolum Ituma, Henry Friday Nweke, Convolutional neural networks method for folded naira currency denominations recognition and analysis , Journal of the Nigerian Society of Physical Sciences: Volume 6, Issue 4, November 2024
You may also start an advanced similarity search for this article.

