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Boosting with Noisy Data: Some Views from Statistical Theory
Wenxin Jiang
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Statistics and Data Science
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peer-review
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Keyphrases
Statistical Theory
100%
Noisy Data
100%
AdaBoost
100%
Generalization Error
50%
Training Samples
25%
Comprehensive Account
25%
Overfitting
25%
Optimal Performance
25%
Bayes Error
25%
Mathematics
Statistical Theory
100%
Noisy Data
100%
Training Sample
50%
Weaker Hypothesis
50%
Basic Assumption
50%