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Incremental semi-supervised Extreme Learning Machine for Mixed data stream classification

机译:用于混合数据流分类的增量半监督极限学习机

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摘要

With an explosive growth of data generated in the Internet and other fields, the data stream classification has sparked broad interest recently. Nowadays, some of the challenges in data streams, such as concept drift detection and supervised data stream classification, have been well-developed. However, when confronted with mixed data streams (containing categorical and numerical values) or limited available labeled samples, many data stream methods cannot achieve a satisfying performance or even cannot work. To tackle these two problems, we proposed an Incremental Semi-supervised Extreme Learning Machine for Mixed data stream classification (MIS-ELM). To be specific, for the issue of mixed data in data streams, we designed a novel soft one-hot encoding method by combining the coupling object similarity method and the one-hot encoding method, which can embed categorical data into high-quality numerical data and is used in the data preprocessing phase of MIS-ELM; for the issue of limited labeled samples, we introduced an incremental learning method based on unlabeled data, which is employed in the training classifier phase of MIS-ELM. When no concept drift occurs in the data stream, MIS-ELM uses only unlabeled data for incremental learning to fine-tune the classifier trained in the previous sliding window. Also, MIS-ELM instinctively inherits the fast computability of ELM, so it is very suitable for the real-time processing of data streams. Finally, we evaluated the representation performance of the soft one-hot encoding and the classification performance of MIS-ELM, within real data streams. The experimental results demonstrate the superiority of the proposed methods over the state-of-the-art techniques in their areas, respectively.
机译:随着互联网和其他领域生成的数据的爆炸性增长,数据流分类最近引发了广泛的兴趣。如今,数据流中的一些挑战,例如概念漂移检测和监督数据流分类,已经发达。然而,当面对混合数据流(包含分类和数值)或有限标记的样本时,许多数据流方法无法实现满足性能甚至无法工作。为了解决这两个问题,我们提出了一个用于混合数据流分类(MIS-ELM)的增量半监督的极端学习机。具体而言,对于数据流中的混合数据问题,我们通过组合耦合对象相似性方法和单热编码方法设计了一种新颖的软单热编码方法,可以将分类数据嵌入到高质量的数值数据中并用于MIS-ELM的数据预处理阶段;对于有限标记的样本问题,我们介绍了一种基于未标记数据的增量学习方法,该方法在MIS-ELM的训练分类器阶段中使用。当数据流中没有发生概念漂移时,MIS-ELM仅使用未标记的数据进行增量学习,以微调在上一个滑动窗口中培训的分类器。此外,MIS-ELM本能地继承了ELM的快速计算,因此非常适合数据流的实时处理。最后,我们在真实数据流中评估了软单热编码的表示性能和MIS-ELM的分类性能。实验结果证明了所提出的方法的优越性,分别在其区域的最先进技术上。

著录项

  • 来源
    《Expert systems with applications》 |2021年第12期|115591.1-115591.14|共14页
  • 作者单位

    Guizhou Med Univ Sch Biol & Engn Guiyang 550004 Guizhou Peoples R China|Chongqing Univ State Key Lab Power Transmiss Equipment & Syst Se Chongqing 400044 Peoples R China|Chongqing Univ Sch Big Data & Software Engn Chongqing 401331 Peoples R China;

    Chongqing Univ State Key Lab Power Transmiss Equipment & Syst Se Chongqing 400044 Peoples R China|Chongqing Univ Sch Big Data & Software Engn Chongqing 401331 Peoples R China;

    Guizhou Inst Technol Foreign Language Teaching Ctr Guiyang 550003 Guizhou Peoples R China;

    Chongqing Univ State Key Lab Power Transmiss Equipment & Syst Se Chongqing 400044 Peoples R China|Chongqing Univ Sch Big Data & Software Engn Chongqing 401331 Peoples R China;

    Chongqing Univ State Key Lab Power Transmiss Equipment & Syst Se Chongqing 400044 Peoples R China|Chongqing Univ Sch Big Data & Software Engn Chongqing 401331 Peoples R China;

    Chongqing Univ State Key Lab Power Transmiss Equipment & Syst Se Chongqing 400044 Peoples R China|Chongqing Univ Sch Big Data & Software Engn Chongqing 401331 Peoples R China;

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

    Data stream classification; Extreme Learning Machine; Categorical data representation; Incremental learning;

    机译:数据流分类;极端学习机;分类数据表示;增量学习;

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