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An Incremental Kernel Extreme Learning Machine for Multi-Label Learning With Emerging New Labels

机译:具有新兴标签的多标签学习的增量内核极端学习机

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摘要

Multi-label learning with emerging new labels is a practical problem that occurs in data streams and has become an important new research issue in the area of machine learning. However, existing models for dealing with this problem require high learning computational times, and there still exists a lack of research. Based on these issues, this paper presents an incremental kernel extreme learning machine for multi-label learning with emerging new labels, consisting of two parts: a novelty detector; and a multi-label classifier. The detector with free-user-setting threshold parameters was developed to identify instances with new labels. A new incremental multi-label classifier and its improved version were developed to predict a label set for each instance, which can add output units incrementally and update themselves in unlabeled instances. Comprehensive evaluations of the proposed method were carried out on the problems of multi-label classification with emerging new labels compared to comparative algorithms, which revealed the promising performance of the proposed method.
机译:具有新兴新标签的多标签学习是数据流中发生的实际问题,并已成为机器学习领域的重要新研究问题。然而,用于处理此问题的现有模型需要高学习的计算时间,并且仍存在缺乏研究。根据这些问题,本文提出了一个增量内核极端学习机,用于多标签学习,具有新兴的新标签,包括两部分:一种新颖的探测器;和多标签分类器。开发了具有自由用户设置阈值参数的检测器,以标识具有新标签的实例。开发了一个新的增量多标签分类器及其改进版本,以预测每个实例的标签集,可以逐步添加输出单元并在未标记的实例中更新自己。与比较算法相比,对新兴标签的多标签分类问题进行了综合评价,揭示了所提出的方法的有希望的性能。

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