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A Supervised Laplacian Eigenmap Algorithm for Visualization of Multi-label Data: SLE-ML

机译:用于可视化多标签数据的Laplacian eIgenMAP算法:SLE-ML

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A novel supervised Laplacian eigenmap algorithm is proposed especially aiming at visualization of multi-label data. Supervised Laplacian eigenmap algorithms proposed so far suffer from hardness in the setting of parameters or the lack of the ability of incorporating the label space information into the feature space information. Most of all, they cannot deal with multi-label data. To cope with these difficulties, we consider the neighborhood relationship between two samples both in the feature space and in the label space. As a result, multiple labels are consistently dealt with as the case of single labels. However, the proposed algorithm may produce apparent/fake separability of classes. To mitigate such a bad effect, we recommend to use two values of the parameter at once. The experiments demonstrated the advantages of the proposed method over the compared four algorithms in the visualization quality and understandability, and in the easiness of parameter setting.
机译:提出了一种新颖的监督拉普拉斯eIgenMAP算法,特别适用于可视化多标签数据。监督Laplacian eIgenMAP算法提出到目前为止在参数的设置中遭受硬度或缺乏将标签空间信息结合到特征空间信息中的能力。最重要的是,他们无法处理多标签数据。为了应对这些困难,我们考虑在特征空间和标签空间中的两个样本之间的邻居关系。因此,随着单个标签的情况,多个标签一致地处理。然而,所提出的算法可能会产生类的明显/假可分离性。为了缓解这种不良效果,我们建议立即使用参数的两个值。实验证明了该方法在可视化质量和可理解性的比较的四种算法中的优点,以及参数设置的容易性。

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