Evaluating Predictive Ability of Classification Models with Ordered Multiple Categories

  • Oong-Hyun Sung (Associate Professor Department of Statistics Hanshin University)
  • Published : 1999.08.01

Abstract

This study is concerned with the evaluation of predictive ability of classification models with ordered multiple categories. If categories can be ordered or ranked the spread of misclassification should be considered to evaluate the performance of the classification models using loss rate since the apparent error rate can not measure the spread of misclassification. Since loss rate is known to underestimate the true loss rate the bootstrap method were used to estimate the true loss rate. thus this study suggests the method to evaluate the predictive power of the classification models using loss rate and the bootstrap estimate of the true loss rate.

Keywords

References

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