Digital Communications and Networks (Feb 2022)

Classification with ensembles and case study on functional magnetic resonance imaging

  • Adnan OM. Abuassba,
  • Zhang Dezheng,
  • Hazrat Ali,
  • Fan Zhang,
  • Khan Ali

Journal volume & issue
Vol. 8, no. 1
pp. 80 – 86

Abstract

Read online

The ensemble is a technique that strategically combines basic models to achieve better accuracy rates. Diversity, combination methods, and selection topology are the main factors determining ensemble performance. Consequently, it is a challenging task to design an efficient ensemble scheme. Even though numerous paradigms have been proposed to classify ensemble schemes, there is still much room for improvement. This paper proposes a general framework for creating ensembles in the context of classification. Specifically, the ensemble framework consists of four stages: objectives, data preparing, model training, and model testing. It is comprehensive to design diverse ensembles. The proposed ensemble approach can be used for a wide variety of machine learning tasks. We validate our approach on real-world datasets. The experimental results show the efficiency of the proposed approach.

Keywords