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Leveraging Reproduction-Error Representations for Multi-Instance Classification

机译:利用再现错误表示法进行多实例分类

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Multi-instance learning deals with the problem of classifying bags of instances, when only the labels of the bags are known for learning, and the instances themselves have no labels. In this work, we propose a method that trains autoencoders for the instances in each class, and recodes each instance into a representation that captures the reproduction error for this instance. The idea behind this approach is that an autoencoder trained on only instances of a single class is unable to reproduce examples from another class properly, which is then reflected in the encoding. The transformed instances are then piped into a propositional classifier that decides the latent instance label. In a second classification layer, the bag label is decided based on the output of the propositional classifier on all the instances in the bag. We show that this reproduction-error encoding creates an advantage compared to the classification of non-encoded data, and that further research into this direction could be beneficial for the cause of multi-instance learning.
机译:多实例学习解决了对实例袋进行分类的问题,当仅袋的标签已知可进行学习,而实例本身没有标签时。在这项工作中,我们提出了一种方法,该方法为每个类中的实例训练自动编码器,并将每个实例重新编码为捕获该实例的再现错误的表示形式。这种方法背后的思想是,仅在单个类的实例上训练的自动编码器无法正确地从另一个类中复制示例,然后在编码中反映出来。然后将转换后的实例传递到命题分类器中,该命题分类器确定潜在实例标签。在第二分类层中,根据命题分类器在袋子中所有实例上的输出确定袋子标签。我们表明,与未编码数据的分类相比,这种再现错误编码具有优势,并且对此方向的进一步研究可能对多实例学习的原因很有帮助。

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