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2020 | OriginalPaper | Chapter

14. Ensemble Classification

Author : Prof. Max Bramer

Published in: Principles of Data Mining

Publisher: Springer London

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Abstract

This chapter is concerned with ensemble classification, i.e. using a set of classifiers to classify unseen data rather than just a single one. The classifiers in the ensemble all predict the correct classification of each unseen instance and their predictions are then combined using some form of voting system.
The idea of a random forest of classifiers is introduced and issues relating to the selection of a different training set and/or a different set of attributes from a given dataset when constructing each of the classifiers are discussed.
A number of alternative ways of combining the classifications produced by an ensemble of classifiers are considered. The chapter concludes with a brief discussion of a distributed processing approach to dealing with the large amount of computation often required to generate an ensemble.

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Literature
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go back to reference Stahl, F., May, D., & Bramer, M. (2012). Parallel random prism: a computationally efficient ensemble learner for classification. In Research and development in intelligent systems XXIX. Springer. Stahl, F., May, D., & Bramer, M. (2012). Parallel random prism: a computationally efficient ensemble learner for classification. In Research and development in intelligent systems XXIX. Springer.
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Metadata
Title
Ensemble Classification
Author
Prof. Max Bramer
Copyright Year
2020
Publisher
Springer London
DOI
https://doi.org/10.1007/978-1-4471-7493-6_14