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A Deep Reinforced Sequence-to-Set Model for Multi-Label Classification

机译:用于多标签分类的深度强化序列设置模型

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Multi-label classification (MLC) aims to predict a set of labels for a given instance. Based on a pre-defined label order, the sequence-to-sequence (Seq2Seq) model trained via maximum likelihood estimation method has been successfully applied to the MLC task and shows powerful ability to capture high-order correlations between labels. However, the output labels are essentially an unordered set rather than an ordered sequence. This inconsistency tends to result in some intractable problems, e.g., sensitivity to the label order. To remedy this, we propose a simple but effective sequence-to-set model. The proposed model is trained via reinforcement learning, where reward feedback is designed to be independent of the label order. In this way, we can reduce the dependence of the model on the label order, as well as capture high-order correlations between labels. Extensive experiments show that our approach can substantially outperform competitive baselines, as well as effectively reduce the sensitivity to the label order.~1
机译:多标签分类(MLC)的目的是为给定实例预测一组标签。基于预定义标签顺序,通过最大似然估计方法训练的序列到序列(Seq2Seq)模型已成功应用于MLC任务,并显示了强大的能力来捕获标签之间的高阶相关性。但是,输出标签本质上是无序集合,而不是有序序列。这种不一致往往会导致一些棘手的问题,例如对标签顺序的敏感性。为了解决这个问题,我们提出了一个简单但有效的序列到模型。通过强化学习来训练提出的模型,在该学习中,奖励反馈被设计为与标签顺序无关。这样,我们可以减少模型对标签顺序的依赖性,以及捕获标签之间的高阶相关性。大量实验表明,我们的方法可以大大超过竞争基准,并有效降低对标签顺序的敏感性。〜1

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