International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed

ISSN: 2319-7064


Downloads: 3

India | Computer Science | Volume 14 Issue 3, March 2025 | Pages: 289 - 296


Optimizing Supervised Classification Algorithms for Real - World Data

G. Divya, Dr. V. Maniraj

Abstract: Supervised Machine Learning (SML) involves the identification of algorithms that learn from externally provided data instances to generate generalized models, which are then used to make predictions about future data. Among the various tasks performed by intelligent systems, supervised classification is one of the most commonly executed. This paper outlines several Supervised Machine Learning (ML) classification techniques, compares different supervised learning algorithms, and identifies the most effective classification method based on dataset characteristics, including the number of instances and features. Seven distinct machine learning algorithms were examined: Decision Table, Random Forest (RF), Na?ve Bayes (NB), Support Vector Machine (SVM), Neural Networks (Perceptron), JRip, and Decision Tree (J48), utilizing the Waikato Environment for Knowledge Analysis (WEKA) tool. For the analysis, a Diabetes dataset containing 786 instances with eight independent attributes and one dependent attribute was used for classification. The findings reveal that SVM achieved the highest precision and accuracy. Na?ve Bayes and Random Forest algorithms followed as the next most accurate methods after SVM. The study highlights that the time required to develop a model, as well as the precision (accuracy), is a critical factor, while Kappa statistic and Mean Absolute Error (MAE) also play significant roles. Thus, for effective supervised predictive machine learning, algorithms must prioritize precision, accuracy, and minimal error to have supervised predictive machine learning.

Keywords: Machine Learning, Classifiers, Data Mining Techniques, Data Analysis, Learning Algorithms, Supervised Machine Learning



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