• Title of article

    Test-cost-sensitive attribute reduction

  • Author/Authors

    Fan Min، نويسنده , , Huaping He، نويسنده , , Yuhua Qian، نويسنده , , William Zhu، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2011
  • Pages
    15
  • From page
    4928
  • To page
    4942
  • Abstract
    In many data mining and machine learning applications, there are two objectives in the task of classification; one is decreasing the test cost, the other is improving the classification accuracy. Most existing research work focuses on the latter, with attribute reduction serving as an optional pre-processing stage to remove redundant attributes. In this paper, we point out that when tests must be undertaken in parallel, attribute reduction is mandatory in dealing with the former objective. With this in mind, we posit the minimal test cost reduct problem which constitutes a new, but more general, difficulty than the classical reduct problem. We also define three metrics to evaluate the performance of reduction algorithms from a statistical viewpoint. A framework for a heuristic algorithm is proposed to deal with the new problem; specifically, an information gain-based λ-weighted reduction algorithm is designed, where weights are decided by test costs and a non-positive exponent λ, which is the only parameter set by the user. The algorithm is tested with three representative test cost distributions on four UCI (University of California – Irvine) datasets. Experimental results show that there is a trade-off while setting λ, and a competition approach can improve the quality of the result significantly. This study suggests potential application areas and new research trends concerning attribute reduction.
  • Keywords
    Attribute reduction , heuristic algorithm , Cost-sensitive learning , Test cost
  • Journal title
    Information Sciences
  • Serial Year
    2011
  • Journal title
    Information Sciences
  • Record number

    1214722