A REVIEW OF FEATURE EXTRACTION METHODS ON MACHINE LEARNING

Authors

  • Mustazzihim Suhaidi Universiti Kebangsaan Malaysia (UKM)
  • Rabiah Abdul Kadir Universiti Kebangsaan Malaysia (UKM)
  • Sabrina Tiun Universiti Kebangsaan Malaysia (UKM)

Keywords:

Feature Extraction, Classification, Machine Learning

Abstract

Extracting features from input data is vital for successful classification and machine learning tasks. Classification is the process of declaring an object into one of the predefined categories. Many different feature selection and feature extraction methods exist, and they are being widely used. Feature extraction, obviously, is a transformation of large input data into a low dimensional feature vector, which is an input to classification or a machine learning algorithm. The task of feature extraction has major challenges, which will be discussed in this paper. The challenge is to learn and extract knowledge from text datasets to make correct decisions. The objective of this paper is to give an overview of methods used in feature extraction for various applications, with a dataset containing a collection of texts taken from social media.

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Published

2021-09-01

How to Cite

Mustazzihim Suhaidi, Rabiah Abdul Kadir, & Sabrina Tiun. (2021). A REVIEW OF FEATURE EXTRACTION METHODS ON MACHINE LEARNING. JOURNAL INFORMATION AND TECHNOLOGY MANAGEMENT (JISTM), 6(22), 51–59. Retrieved from https://gaexcellence.com/jistm/article/view/1125