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Multi-Label Learning Based on Transfer Learning and Label Correlation

机译:基于转移学习和标签相关的多标签学习

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摘要

In recent years, multi-label learning has received a lot of attention. However, most of the existing methods only consider global label correlation or local label correlation. In fact, on the one hand, both global and local label correlations can appear in real-world situation at same time. On the other hand, we should not be limited to pairwise labels while ignoring the high-order label correlation. In this paper, we propose a novel and effective method called GLLCBN for multi-label learning. Firstly, we obtain the global label correlation by exploiting label semantic similarity. Then, we analyze the pairwise labels in the label space of the data set to acquire the local correlation. Next, we build the original version of the label dependency model by global and local label correlations. After that, we use graph theory, probability theory and Bayesian networks to eliminate redundant dependency structure in the initial version model, so as to get the optimal label dependent model. Finally, we obtain the feature extraction model by adjusting the Inception V3 model of convolution neural network and combine it with the GLLCBN model to achieve the multi-label learning. The experimental results show that our proposed model has better performance than other multi-label learning methods in performance evaluating.
机译:近年来,多标签学习得到了很多关注。但是,大多数现有方法仅考虑全局标签关联或本地标签相关性。事实上,一方面,全球和本地标签相关性同时可以在现实世界情况中出现。另一方面,我们不应限于成对标签,同时忽略高阶标签相关性。在本文中,我们提出了一种称为GLLCBN的新颖有效方法,用于多标签学习。首先,我们通过利用标签语义相似性获得全局标签关联。然后,我们分析数据集的标签空间中的成对标签以获取本地相关性。接下来,我们通过全局和本地标签相关性构建标签依赖性模型的原始版本。之后,我们使用图形理论,概率论和贝叶斯网络来消除初始版本模型中的冗余依赖结构,从而获得最佳标签相关模型。最后,我们通过调整卷积神经网络的初始V3模型来获得特征提取模型,并将其与GLLCBN模型相结合,实现多标签学习。实验结果表明,我们所提出的模型比性能评估中的其他多标签学习方法具有更好的性能。

著录项

  • 来源
    《Computers, Materials & Continua》 |2019年第1期|155-169|共15页
  • 作者单位

    College of Computer Science and Electronic Engineering and Key Laboratory for Embedded and Network Computing of Hunan Province Hunan University Changsha 410082 China;

    College of Computer Science and Electronic Engineering and Key Laboratory for Embedded and Network Computing of Hunan Province Hunan University Changsha 410082 China;

    College of Computer Science and Electronic Engineering and Key Laboratory for Embedded and Network Computing of Hunan Province Hunan University Changsha 410082 China;

    Oath Verizon Company Manhattan New York 10007 USA;

    College of Computer Science and Electronic Engineering and Key Laboratory for Embedded and Network Computing of Hunan Province Hunan University Changsha 410082 China;

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

    Bayesian networks; multi-label learning; global and local label correlations; transfer learning;

    机译:贝叶斯网络;多标签学习;全球和本地标签相关;转移学习;

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