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arxiv: 1307.6522 · v1 · pith:WXIOTS7Hnew · submitted 2013-07-24 · 🧮 math.ST · stat.ML· stat.TH

When is the majority-vote classifier beneficial?

classification 🧮 math.ST stat.MLstat.TH
keywords majority-voteaverageclassifierclassifierserrormechanismpositiverate
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In his seminal work, Schapire (1990) proved that weak classifiers could be improved to achieve arbitrarily high accuracy, but he never implied that a simple majority-vote mechanism could always do the trick. By comparing the asymptotic misclassification error of the majority-vote classifier with the average individual error, we discover an interesting phase-transition phenomenon. For binary classification with equal prior probabilities, our result implies that, for the majority-vote mechanism to work, the collection of weak classifiers must meet the minimum requirement of having an average true positive rate of at least 50% and an average false positive rate of at most 50%.

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