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Multi-label Learning with Emerging New Labels

机译:新兴标签的多标签学习

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Multi-label learning is widely applied in many tasks, where an object possesses multiple concepts with each represented by a class label. Previous studies on multi-label learning have focused on a fixed set of class labels, i.e., the class label set of test data is the same as that in the training set. In many applications, however, the environment is open and new concepts may emerge with previously unseen instances. In order to maintain good predictive performance in this environment, a multi-label learning method must have the ability to detect and classify those instances with emerging new labels. To this end, we propose a new approach called Multi-label learning with Emerging New Labels (MuENL). It builds models with three functions: classify instances on currently known labels, detect the emergence of a new label in new instances, and construct a new classifier for each new label that works collaboratively with the classifier for known labels. Our empirical evaluation shows the effectiveness of MuENL.
机译:多标签学习被广泛应用于许多任务中,其中一个对象拥有多个概念,每个概念都由一个类标签表示。先前关于多标签学习的研究集中于一组固定的班级标签,即测试数据的班级标签集与训练集中的班级标签集相同。但是,在许多应用程序中,环境是开放的,并且在以前看不见的实例中可能会出现新的概念。为了在这种环境下保持良好的预测性能,多标签学习方法必须具有使用新兴标签来检测和分类那些实例的能力。为此,我们提出了一种新方法,称为“带有新标签的多标签学习”(MuENL)。它建立具有三个功能的模型:对当前已知标签上的实例进行分类;检测新实例中新标签的出现;为每个新标签构造一个新的分类器,以便与已知标签的分类器协同工作。我们的经验评估显示了MuENL的有效性。

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