• Title of article

    Benchmarking attribute selection techniques for discrete class data mining

  • Author/Authors

    M.A.، Hall, نويسنده , , G.، Holmes, نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2003
  • Pages
    -1436
  • From page
    1437
  • To page
    0
  • Abstract
    Data engineering is generally considered to be a central issue in the development of data mining applications. The success of many learning schemes, in their attempts to construct models of data, hinges on the reliable identification of a small set of highly predictive attributes. The inclusion of irrelevant, redundant, and noisy attributes in the model building process phase can result in poor predictive performance and increased computation. Attribute selection generally involves a combination of search and attribute utility estimation plus evaluation with respect to specific learning schemes. This leads to a large number of possible permutations and has led to a situation where very few benchmark studies have been conducted. This paper presents a benchmark comparison of several attribute selection methods for supervised classification. All the methods produce an attribute ranking, a useful devise for isolating the individual merit of an attribute. Attribute selection is achieved by cross-validating the attribute rankings with respect to a classification learner to find the best attributes. Results are reported for a selection of standard data sets and two diverse learning schemes C4.5 and naive Bayes.
  • Keywords
    waist circumference , Abdominal obesity , Prospective study , Food patterns
  • Journal title
    IEEE Transactions on Knowledge and Data Engineering
  • Serial Year
    2003
  • Journal title
    IEEE Transactions on Knowledge and Data Engineering
  • Record number

    100628