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Learning from Ambiguously Labeled Examples

机译:从暧昧标记的例子中学习

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Inducing a classification function from a set of examples in the form of labeled instances is a standard problem in supervised machine learning. In this paper, we are concerned with ambiguous label classification (ALC), an extension of this setting in which several candidate labels may be assigned to a single example. By extending three concrete classification methods to the ALC setting and evaluating their performance on benchmark data sets, we show that appropriately designed learning algorithms can successfully exploit the information contained in ambiguously labeled examples. Our results indicate that the fundamental idea of the extended methods, namely to disambiguate the label information by means of the inductive bias underlying (heuristic) machine learning methods, works well in practice.
机译:以标记实例的形式引导来自一组示例的分类功能是监督机器学习中的标准问题。在本文中,我们涉及模糊标签分类(ALC),该设置的扩展,其中可以将多个候选标签分配给单一示例。通过将三种具体的分类方法扩展到ALC设置并在基准数据集中评估其性能,我们表明适当设计的学习算法可以成功利用模棱两可标记的示例中包含的信息。我们的结果表明,延长方法的基本思想,即通过借助归纳偏差歧视标签信息(启发式)机器学习方法,在实践中运作良好。

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