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Discover Multiple Novel Labels in Multi-Instance Multi-Label Learning

机译:在多实例多标签学习中发现多个新颖标签

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Multi-instance multi-label learning (MIML) is a learning paradigm where an object is represented by a bag of instances and each bag is associated with multiple labels. Ordinary MIML setting assumes a fixed target label set. In real applications, multiple novel labels may exist outside this set, but hidden in the training data and unknown to the MIML learner. Existing MIML approaches are unable to discover the hidden novel labels, let alone predicting these labels in the previously unseen test data. In this paper, we propose the first approach to discover multiple novel labels in MIML problem using an efficient augmented lagrangian optimization, which has a bag-dependent loss term and a bag-independent clustering regularization term, enabling the known labels and multiple novel labels to be modeled simultaneously. The effectiveness of the proposed approach is validated in experiments.
机译:多实例多标签学习(MIML)是一个学习范例,其中对象由一袋实例表示,每个袋子与多个标签相关联。普通MIML设置假定固定目标标签集。在实际应用中,在此集中可能存在多个新颖的标签,但隐藏在培训数据中,并且MIML学习者未知。现有的MIML方法无法发现隐藏的新颖标签,更不用说预测以前看不见的测试数据中的这些标签。在本文中,我们提出了使用高效的增强拉格朗日优化在MIML问题中发现多个新颖标签的第一种方法,该方法具有袋依赖性损耗术语和独立于自主的聚类正则化术语,使已知的标签和多个新颖的标签能够实现同时建模。在实验中验证了所提出的方法的有效性。

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