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Histogram-Based Asymmetric Relabeling for Learning from Only Positive and Unlabeled Data

机译:基于直方图的不对称重新标记,仅可从正数和未标记的数据中学习

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In this paper, we demonstrate how to use asymmetric data relabeling based on feature histograms as a pre-processing step for improving the overall classification performance of different classifiers in situations when only positive and unlabeled data is available. Additionally, this strategy can be used to identify with some level of confidence those data instances that should probably be labeled as positive. Moreover, this approach can be adapted to assess the quality of a given dataset, in terms of how many positive instances are not labeled. We examine our approach using synthetic data and demonstrate its applicability using real, publicly available data.
机译:在本文中,我们演示了如何使用基于特征直方图的不对称数据重新标记作为预处理步骤,以在只有正数和未标记数据的情况下提高不同分类器的整体分类性能。此外,此策略可用于以某种程度的置信度识别可能应标记为肯定的那些数据实例。此外,就未标记多少阳性实例而言,此方法可适用于评估给定数据集的质量。我们使用综合数据来检验我们的方法,并使用真实的,公开可用的数据来证明其适用性。

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