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A Framework of the Semi-supervised Multi-label Classification with Non-uniformly Distributed Incomplete Labels

机译:具有非均匀分布不完整标签的半监控多标签分类的框架

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In real world applications, the problem of incomplete labels is frequently encountered. These incomplete labels decrease the accuracy of the supervised classification model because of a lack of negative examples and the non-uniform distribution of the missing labels. In this paper, we propose a framework of the semi-supervised multi-label classification which can learn with the incompletely labeled training data, especially for the missing labels whose distribution is not a uniform distribution. With a modified instance weighted k nearest neighbor classifier, this framework recovers the labels of the training data, including both the incomplete labeled part and the unlabeled part, by iteratively updating the weight of each training instance in an acceptable execution time. The experimental results verify that the classification model trained from the recovered training data generates better prediction results in the testing phase.
机译:在现实世界应用中,经常遇到不完整标签的问题。这些不完整的标签由于缺乏缺陷标签和缺失标签的不均匀分布而降低了监督分类模型的准确性。在本文中,我们提出了一个半监督多标签分类的框架,该分类可以与未完全标记的训练数据一起学习,特别是对于分布不是统一分布的缺失标签。通过修改实例加权K最近邻分类器,该框架通过在可接受的执行时间中迭代地更新每个训练实例的权重,包括培训数据的标签,包括不完整的标记部分和未标记部分。实验结果验证了从恢复的训练数据训练的分类模型在测试阶段产生更好的预测结果。

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