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Comparison of the Bayesian and randomised decision tree ensembles within an uncertainty envelope technique

  • Vitaly Schetinin
  • , Jonathan E. Fieldsend
  • , Derek Partridge
  • , Wojtek J. Krzanowski
  • , Richard M. Everson
  • , Trevor C. Bailey
  • , Adolfo Hernandez
  • University of Exeter

Research output: Contribution to journalArticlepeer-review

10 Citations (Scopus)

Abstract

Multiple Classifier Systems (MCSs) allow evaluation of the uncertainty of classification outcomes that is of crucial importance for safety critical applications. The uncertainty of classification is determined by a trade-off between the amount of data available for training, the classifier diversity and the required performance. The interpretability of MCSs can also give useful information for experts responsible for making reliable classifications. For this reason Decision Trees (DTs) seem to be attractive classification models for experts. The required diversity of MCSs exploiting such classification models can be achieved by using two techniques, the Bayesian model averaging and the randomised DT ensemble. Both techniques have revealed promising results when applied to real-world problems. In this paper we experimentally compare the classification uncertainty of the Bayesian model averaging with a restarting strategy and the randomised DT ensemble on a synthetic dataset and some domain problems commonly used in the machine learning community. To make the Bayesian DT averaging feasible, we use a Markov Chain Monte Carlo technique. The classification uncertainty is evaluated within an Uncertainty Envelope technique dealing with the class posterior distribution and a given confidence probability. Exploring a full posterior distribution, this technique produces realistic estimates which can be easily interpreted in statistical terms. In our experiments we found out that the Bayesian DTs are superior to the randomised DT ensembles within the Uncertainty Envelope technique.

Original languageEnglish
Pages (from-to)397-416
Number of pages20
JournalJournal of Mathematical Modelling and Algorithms
Volume5
Issue number4
DOIs
Publication statusPublished - 3 Mar 2006

Keywords

  • Bayesian classification
  • Decision tree
  • Ensemble technique
  • Markov Chain Monte Carlo
  • Uncertainty

ASJC Scopus subject areas

  • Modeling and Simulation
  • Applied Mathematics

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