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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步实例注释和群集

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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,当数据包含袋子时,每个袋子包含实例,每个袋子都提供了一个框架。 MIML设置中的实例注释是找到由标记的实例组成的培训数据的实例级分类器的问题。实例批注的当前方法主要侧重于识别每个实例的类标签而不考虑每个类内的内部群集。同时学习注释和群集可能不仅可以产生更好的模型适合,而且有助于发现每个课程内的集群结构以供将来调查。本文通过提出在每个类内考虑内部集群的图形模型来解决同时注释和聚类的挑战。提出了基于最大可能性的期望最大化推断,用于该模型。结果鸟歌,图像注释和两个合成数据集说明了与当前最先进的方法相比提出框架的有效性。

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