Piecewise Linear Approximation-Driven Primal SVM Approach for Improved Iris Classification Efficiency

Authors

  • Shital Solanki  Research Scholar, Gujarat Technological University, Ahmedabad, Gujarat, India
  • Dr. Ramesh Prajapati  Professor, CE/IT Department, Shree Swaminarayan Institute of Technology, Gandhinagar, Gujarat, India

DOI:

https://doi.org/10.32628/CSEIT12390542

Keywords:

SVM, Piecewise Linear Approximation, ROC, AUC

Abstract

Classification, a crucial aspect of machine learning, revolves around the meticulous analysis of data. However, the complexity of diverse life forms on Earth poses a challenge in distinguishing species that share similar attributes. The iris flower, with its subspecies exemplifies this challenge. The aim of the paper is to develop a methodology that not only enhances classification accuracy but also effectively addresses computational efficiency, facilitating faster and more practical categorization of iris patterns. This novel approach named Piecewise Linear Approximation based SVM (PLA-SVM) is applied to flower species classification and is benchmarked against alternative machine learning techniques. Implementation is carried out utilizing MATLAB – GUROBI interface of and GUROBI Solver. The performance metrics such as accuracy, precision, F1 score and ROC – AUC Curve are used to compare proposed algorithm performance. This comprehensive analysis enables a comparative study of diverse algorithms, ultimately validating the proposed PLA-SVM technique using the Iris dataset. The numerical implementation results shows that the PLASVM outperforms the existing standard classifiers in terms of different performance matrices.

References

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Published

2023-10-30

Issue

Section

Research Articles

How to Cite

[1]
Shital Solanki, Dr. Ramesh Prajapati, " Piecewise Linear Approximation-Driven Primal SVM Approach for Improved Iris Classification Efficiency" International Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 9, Issue 5, pp.286-292, September-October-2023. Available at doi : https://doi.org/10.32628/CSEIT12390542