Pessimistic cost-sensitive active learning of decision trees for profit maximizing targeting campaigns

Lior Rokach, Lihi Naamani, Armin Shmilovici

Research output: Contribution to journalArticlepeer-review

19 Scopus citations

Abstract

In business applications such as direct marketing, decision-makers are required to choose the action which best maximizes a utility function. Cost-sensitive learning methods can help them achieve this goal. In this paper, we introduce Pessimistic Active Learning (PAL). PAL employs a novel pessimistic measure, which relies on confidence intervals and is used to balance the exploration/exploitation trade-off. In order to acquire an initial sample of labeled data, PAL applies orthogonal arrays of fractional factorial design. PAL was tested on ten datasets using a decision tree inducer. A comparison of these results to those of other methods indicates PAL's superiority.

Original languageEnglish
Article number2
Pages (from-to)283-316
Number of pages34
JournalData Min. Knowl. Discov.
Volume17
Issue number2
DOIs
StatePublished - 2008

Keywords

  • Active learning
  • Cost-sensitive learning
  • Decision trees
  • Design of experiments
  • Direct marketing
  • Reinforcement learning

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