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Multilabel predictions with sets of probabilities: The Hamming and ranking loss cases

机译:具有概率集的多标签预测:汉明损失和等级损失案例

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摘要

In this paper, we study how multilabel predictions can be obtained when our uncertainty is described by a convex set of probabilities. Such predictions, typically consisting of a set of potentially optimal decisions, are hard to make in large decision spaces such as the one considered in multilabel problems. However, we show that when considering the Hamming or the ranking loss, outer-approximating predictions can be efficiently computed from label-wise information, as in the precise case. We also perform some first experiments showing the behaviour of the partial predictions obtained through these approximations. Such experiments also confirm that predictions become partial on those labels where the precise prediction is likely to make an error. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在本文中,我们研究了当我们的不确定性由凸概率集描述时如何获得多标签预测。通常由一组潜在的最佳决策组成的此类预测很难在大型决策空间(如多标签问题中考虑的决策空间)中做出。但是,我们表明,在考虑汉明或排名损失时,可以像精确情况一样,从标签信息中有效地计算出外部近似预测。我们还执行了一些第一个实验,显示了通过这些近似获得的部分预测的行为。这样的实验还证实,在精确的预测可能会产生错误的标签上,预测变得部分不正确。 (C)2015 Elsevier Ltd.保留所有权利。

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