Active learning with drifting streaming data

  • Indre Zliobaite
  • , Albert Bifet
  • , Bernhard Pfahringer
  • , Geoffrey Holmes

Research output: Contribution to journalArticlepeer-review

Abstract

In learning to classify streaming data, obtaining true labels may require major effort and may incur excessive cost. Active learning focuses on carefully selecting as few labeled instances as possible for learning an accurate predictive model. Streaming data poses additional challenges for active learning, since the data distribution may change over time (concept drift) and models need to adapt. Conventional active learning strategies concentrate on querying the most uncertain instances, which are typically concentrated around the decision boundary. Changes occurring further from the boundary may be missed, and models may fail to adapt. This paper presents a theoretically supported framework for active learning from drifting data streams and develops three active learning strategies for streaming data that explicitly handle concept drift. They are based on uncertainty, dynamic allocation of labeling efforts over time, and randomization of the search space. We empirically demonstrate that these strategies react well to changes that can occur anywhere in the instance space and unexpectedly.

Original languageEnglish
Article number6684173
Pages (from-to)27-39
Number of pages13
JournalIEEE Transactions on Neural Networks and Learning Systems
Volume25
Issue number1
DOIs
Publication statusPublished - 1 Jan 2014
Externally publishedYes

Keywords

  • Active learning
  • concept drift
  • data streams
  • user feedback

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