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Multi-Instance Multi-Label Learning with Weak Label

机译:带有弱标签的多实例多标签学习

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Multi-Instance Multi-Label learning (MIML) deals with data objects that are represented by a bag of instances and associated with a set of class labels simultaneously.Previous studies typically assume that for every training example,all positive labels are tagged whereas the untagged labels are all negative.In many real applications such as image annotation,however,the learning problem often suffers from weak label;that is,users usually tag only a part of positive labels,and the untagged labels are not necessarily negative.In this paper,we propose the MIMLwel approach which works by assuming that highly relevant labels share some common instances,and the underlying class means of bags for each label are with a large margin.Experiments validate the effectiveness of MIMLwel in handling the weak label problem.
机译:多实例多标签学习(MIML)处理由一包实例表示并同时与一组类标签关联的数据对象。以前的研究通常假定,对于每个训练示例,所有肯定标签都带有标签,而未标签标签都是负面的。但是,在许多实际应用中,例如图像标注,学习问题常常会受到标签薄弱的困扰;也就是说,用户通常只对正面标签的一部分加标签,而未加标签的标签不一定是负面标签。因此,我们提出了MIMLwel方法,该方法通过假设高度相关的标签共享一些常见的实例,并且每个标签的包装袋的基础分类方法具有很大的优势。实验证明了MIMLwel在处理弱标签问题方面的有效性。

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