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Constrained instance clustering in multi-instance multi-label learning

机译:多实例多标签学习中的约束实例聚类

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摘要

In multi-instance multi-label (MIML) learning, datasets are given in the form of bags, each of which contains multiple instances and is associated with multiple labels. This paper considers a novel instance clustering problem in MIML learning, where the bag labels are used as background knowledge to help group instances into clusters. The goal is to recover the class labels or to find the subclasses within each class. Prior work on constraint-based clustering focuses on pairwise constraints and cannot fully utilize the bag-level label information. We propose to encode the bag-label knowledge into soft bag constraints that can be easily incorporated into any optimization based clustering algorithm. As a specific example, we demonstrate how the bag constraints can be incorporated into a popular spectral clustering algorithm. Empirical results on both synthetic and real-world datasets show that the proposed method achieves promising performance compared to state-of-the-art methods that use pairwise constraints.
机译:在多实例多标签(MIML)学习中,以袋子的形式给出数据集,每个袋子包含多个实例并与多个标签关联。本文考虑了MIML学习中的一个新颖的实例聚类问题,其中袋标签用作背景知识来帮助将实例分组到聚类中。目的是恢复类标签或在每个类中找到子类。基于约束的聚类的先前工作集中于成对约束,并且不能充分利用袋级标签信息。我们建议将袋子标签知识编码为软袋子约束,可以轻松地将其结合到任何基于优化的聚类算法中。作为一个具体示例,我们演示了如何将袋约束纳入流行的光谱聚类算法中。在合成数据集和实际数据集上的经验结果表明,与使用成对约束的最新方法相比,该方法具有令人满意的性能。

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