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Voting and Bagging

In: Machine Learning for Practical Decision Making

Author

Listed:
  • Christo El Morr

    (York University)

  • Manar Jammal

    (York University)

  • Hossam Ali-Hassan

    (York University, Glendon Campus)

  • Walid El-Hallak

    (Ontario Health)

Abstract

The ensemble technique relies on the idea that aggregation of many classifiers and regressors will lead to a better prediction [1]. In this chapter, we will introduce the ensemble technique and cover two ways in which to organize an ensemble (literally, a set) of machine learning methods called voting and bagging [2] and one algorithm to perform bagging called random forest [1, 3]. The other two ways to organize the ensemble methods are called boosting and stacking, which will be covered in the next chapter.

Suggested Citation

  • Christo El Morr & Manar Jammal & Hossam Ali-Hassan & Walid El-Hallak, 2022. "Voting and Bagging," International Series in Operations Research & Management Science, in: Machine Learning for Practical Decision Making, chapter 0, pages 413-430, Springer.
  • Handle: RePEc:spr:isochp:978-3-031-16990-8_14
    DOI: 10.1007/978-3-031-16990-8_14
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