PERFORMANCE COMPARISON OF ADAPTIVE NEURO FUZZY INFERENCE SYSTEM AND SUPPORT VECTOR MACHINE ALGORITHM IN BALANCED AND UNBALANCED MULTICLASS DATA CLASSIFICATION

  • Muhammad Irfan Saputra Student
  • Irwan Budiman
  • Dwi Kartini
  • Dodon Turianto Nugrahadi
  • Mohammad Reza Faisal

Abstract

Data is a record collection of facts. At first the data in the real world were largely unbalanced. Although, the existence of data on fewer categories is much more important to know data on more categories. However, there are some balanced data. This balanced data is the possibility of a ratio of 1:1 in which, the data in the dataset is the same. In this study, using the ANFIS algorithm and SVM to see affected performance on balanced and imbalanced data with multiclass. Data is taken from the UCI Machine Learning. From the research conducted, it is known that the SVM method on the Wine dataset has an accuracy of 96.6% and the ANFIS method on the Iris dataset has an accuracy of 94.7%.

Published
2022-01-19
How to Cite
Muhammad Irfan Saputra, Irwan Budiman, Dwi Kartini, Dodon Turianto Nugrahadi, & Mohammad Reza Faisal. (2022). PERFORMANCE COMPARISON OF ADAPTIVE NEURO FUZZY INFERENCE SYSTEM AND SUPPORT VECTOR MACHINE ALGORITHM IN BALANCED AND UNBALANCED MULTICLASS DATA CLASSIFICATION. Journal of Data Science and Software Engineering, 2(03), 126-130. Retrieved from https://jurnalmahasiswamipa.ulm.ac.id/index.php/integer/article/view/54
Section
Articles