Accurate ensembles for data streams: Combining restricted hoeffding trees using stacking

  • Albert Bifet
  • , Eibe Frank
  • , Geoffrey Holmes
  • , Bernhard Pfahringer

Research output: Contribution to journalConference articlepeer-review

Abstract

The success of simple methods for classification shows that is is often not necessary to model complex attribute interactions to obtain good classification accuracy on practical problems. In this paper, we propose to exploit this phenomenon in the data stream context by building an ensemble of Hoeffding trees that are each limited to a small subset of attributes. In this way, each tree is restricted to model interactions between attributes in its corresponding subset. Because it is not known a priori which attribute subsets are relevant for prediction, we build exhaustive ensembles that consider all possible attribute subsets of a given size. As the resulting Hoeffding trees are not all equally important, we weigh them in a suitable manner to obtain accurate classifications. This is done by combining the log-odds of their probability estimates using sigmoid perceptrons, with one perceptron per class. We propose a mechanism for setting the perceptrons' learning rate using the ADWIN change detection method for data streams, and also use ADWIN to reset ensemble members (i.e. Hoeffding trees) when they no longer perform well. Our experiments show that the resulting ensemble classifier outperforms bagging for data streams in terms of accuracy when both are used in conjunction with adaptive naive Bayes Hoeffding trees, at the expense of runtime and memory consumption.

Original languageEnglish
Pages (from-to)225-240
Number of pages16
JournalJournal of Machine Learning Research
Volume13
Publication statusPublished - 1 Dec 2010
Externally publishedYes
Event2nd Asian Conference on Machine Learning, ACML 2010 - Tokyo, Japan
Duration: 8 Nov 201010 Nov 2010

Keywords

  • Data streams
  • Decision trees
  • Ensemble methods

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