Bootstrap Confidence Intervals of Classification Error Rate for a Block of Missing Observations
Bootstrap Confidence Intervals of Classification Error Rate for a Block of Missing Observations
- 한국통계학회
- Communications for Statistical Applications and Methods
- 16(4)
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2009.07675 - 686 (12 pages)
- 0
In this paper, it will be assumed that there are two distinct populations which are multivariate normal with equal covariance matrix. We also assume that the two populations are equally likely and the costs of misclassification are equal. The classification rule depends on the situation when the training samples include missing values or not. We consider the bootstrap confidence intervals for classification error rate when a block of observation is missing.
In this paper, it will be assumed that there are two distinct populations which are multivariate normal with equal covariance matrix. We also assume that the two populations are equally likely and the costs of misclassification are equal. The classification rule depends on the situation when the training samples include missing values or not. We consider the bootstrap confidence intervals for classification error rate when a block of observation is missing.
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