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Adaptive Decision Threshold-Based Extreme Learning Machine for Classifying Imbalanced Multi-label Data

机译:基于自适应判定阈值的极限学习机,用于分类不平衡多标签数据

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摘要

Multi-label learning is a popular area of machine learning research as it is widely applicable to many real-world scenarios. In comparison with traditional binary and multi-classification tasks, the multi-label data are more easily impacted or destroyed by an imbalanced data distribution. This paper describes an adaptive decision threshold-based extreme learning machine algorithm (ADT-ELM) that addresses the imbalanced multi-label data classification problem. Specifically, the macro and micro F-measure metrics are adopted as the optimization functions for ADT-ELM, and the particle swarm optimization algorithm is employed to determine the optimal decision threshold combination. We use the optimized thresholds to make decision for future multi-label instances. Twelve baseline multi-label data sets are used in a series of experiments o verify the effectiveness and superiority of the proposed algorithm. The experimental results indicate that the proposed ADT-ELM algorithm is significantly superior to many state-of-the-art multi-label imbalance learning algorithms, and it generally requires less training time than more sophisticated algorithms.
机译:多标签学习是一种流行的机器学习研究领域,因为它广泛适用于许多真实情景。与传统的二进制和多分类任务相比,多标签数据更容易受到不平衡数据分布的影响或销毁。本文介绍了一种基于自适应判定阈值的极端学习机算法(ADT-ELM),其解决了不平衡的多标签数据分类问题。具体地,采用宏和微型F法测量度量作为ADT-ELM的优化功能,并且采用粒子群优化算法来确定最佳决策阈值组合。我们使用优化的阈值来决定未来的多标签实例。在一系列实验O中使用12个基线多标签数据集O验证所提出的算法的有效性和优越性。实验结果表明,所提出的ADT-ELM算法显着优于许多最先进的多标签不平衡学习算法,并且通常需要比更复杂的算法更少的训练时间。

著录项

  • 来源
    《Neural processing letters》 |2020年第3期|2151-2173|共23页
  • 作者单位

    School of Computer Jiangsu University of Science and Technology No. 2 Mengxi Road Zhenjiang 212003 Jiangsu People's Republic of China Artificial Intelligence Key Laboratory of Sichuan Province Sichuan University of Science and Engineering Yibin 644000 People's Republic of China;

    School of Computer Jiangsu University of Science and Technology No. 2 Mengxi Road Zhenjiang 212003 Jiangsu People's Republic of China;

    School of Computer Jiangsu University of Science and Technology No. 2 Mengxi Road Zhenjiang 212003 Jiangsu People's Republic of China;

    School of Computer Jiangsu University of Science and Technology No. 2 Mengxi Road Zhenjiang 212003 Jiangsu People's Republic of China;

    School of Computer Jiangsu University of Science and Technology No. 2 Mengxi Road Zhenjiang 212003 Jiangsu People's Republic of China Artificial Intelligence Key Laboratory of Sichuan Province Sichuan University of Science and Engineering Yibin 644000 People's Republic of China;

    School of Computer Jiangsu University of Science and Technology No. 2 Mengxi Road Zhenjiang 212003 Jiangsu People's Republic of China Artificial Intelligence Key Laboratory of Sichuan Province Sichuan University of Science and Engineering Yibin 644000 People's Republic of China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Multi-label classification; Class imbalance learning; Stochastic optimization; Decision threshold moving; Extreme learning machine;

    机译:多标签分类;班级不平衡学习;随机优化;决策阈值移动;极端学习机器;

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