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Simultaneous instance annotation and clustering in multi-instance multi-label learning

机译:多实例多标签学习中的同时实例注释和聚类

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Multi-instance multi-label learning (MIML) is a framework that addresses label ambiguity when data contains bags, each bag contains instances, and a bag label set is provided for each bag. Instance annotation in the MIML setting is the problem of finding an instance level classifier given training data consisting of labeled bags of instances. Current approaches for instance annotation mainly focus on identifying a class label for each instance without considering inner clusters within each class. Simultaneously learning to annotate and cluster may not only yield better model fit but also help to discovery cluster structure inside each class for future investigation. This paper addresses the challenge of simultaneously annotating and clustering by proposing a graphical model that takes into account inner clusters within each class. An expectation maximization inference based on maximum likelihood is proposed for the model. Results on bird song, image annotation, and two synthetic datasets illustrate the effectiveness of the proposed framework compared to current state-of-the-art approaches.
机译:多实例多标签学习(MIML)是一个框架,用于在数据包含袋子,每个袋子包含实例以及为每个袋子提供袋子标签集时解决标签歧义的问题。 MIML设置中的实例注释是在给定训练数据(由标记的实例包组成)的情况下找到实例级别分类器的问题。当前的实例标注方法主要集中于为每个实例标识一个类标签,而不考虑每个类中的内部簇。同时学习注释和聚类不仅可以产生更好的模型拟合,而且还可以帮助发现每个类内部的聚类结构以供将来研究。本文提出了一种图形模型来解决同时注释和聚类的挑战,该模型考虑了每个类中的内部聚类。针对该模型,提出了基于最大似然的期望最大化推断。鸟类歌曲,图像注释和两个综合数据集的结果说明了与当前最先进方法相比所提出框架的有效性。

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