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Off-Line Learning with Transductive Confidence Machines: An Empirical Evaluation

机译:换能置信机的离线学习:一项实证评估

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The recently introduced transductive confidence machines (TCMs) framework allows to extend classifiers such that they satisfy the calibration property. This means that the error rate can be set by the user prior to classification. An analytical proof of the calibration property was given for TCMs applied in the on-line learning setting. However, the nature of this learning setting restricts the applicability of TCMs. In this paper we provide strong empirical evidence that the calibration property also holds in the off-line learning setting. Our results extend the range of applications in which TCMs can be applied. We may conclude that TCMs are appropriate in virtually any application domain.
机译:最近推出的转导置信度机器(TCM)框架允许扩展分类器,使其满足校准属性。这意味着错误率可以由用户在分类之前设置。对于在线学习环境中应用的中药,给出了校准特性的分析证明。但是,这种学习设置的性质限制了中医的适用性。在本文中,我们提供了有力的经验证据,表明校准属性在离线学习环境中同样有效。我们的结果扩展了可应用中药的应用范围。我们可能会得出结论,中医几乎适用于任何应用领域。

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