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A study on majority-voting classifiers with guarantees on the probability of error ?

机译:关于误差概率的多数投票分类器

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摘要

The Guaranteed Error Machine (GEM) is a classification algorithm that allows the user to seta-priori(i.e., before data are observed) an upper bound on the probability of error. Due to its strong statistical guarantees, GEM is of particular interest for safety critical applications in control engineering. Empirical studies have suggested that a pool of GEM classifiers can be combined in a majority voting scheme to boost the individual performances. In this paper, we investigate the possibility of keeping the probability of error under control in the absence of extra validation or test sets. In particular, we consider situations where the classifiers in the pool may have different guarantees on the probability of error, for which we propose a data-dependent weighted majority voting scheme. The preliminary results presented in this paper are very general and apply in principle to any weighted majority voting scheme involving individual classifiers that come with statistical guarantees, in the spirit of Probably Approximately Correct (PAC) learning.
机译:保证错误机(GEM)是一种分类算法,允许用户对SETA-PRESTI(即,在观察到数据之前)误差概率的上限。由于其强大的统计保障,GEM对控制工程中的安全关键应用特别感兴趣。实证研究表明,宝石分类器池可以在大多数投票方案中组合,以提高个人表演。在本文中,我们调查在没有额外验证或测试集的情况下保持控制误差概率的可能性。特别是,我们考虑池中的分类器可能对误差概率有不同的保证的情况,我们提出了一种数据相关的加权多数表决方案。本文提出的初步结果非常一般,原则上适用于任何加权多数投票方案,涉及统计担保的个别分类器,本着可能大致正确(PAC)学习。

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