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Supervised discriminative dimensionality reduction by learning multiple transformation operators

机译:通过学习多次转型运营商监督歧视维度减少

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摘要

Analyzing and learning from high dimensional data have always been challenging in machine learning tasks, causing serious computational complexities and poor learning performances. Supervised dimensionality reduction is a popular technique to address such challenges in supervised learning tasks, where data are accompanied with labels. Traditionally, such techniques mostly learn one single transformation to project data into a low-dimensional discriminative subspace. However, learning only one transformation for the whole data could be dominated by one or several classes, and the rest of classes receive less discrimination in the reduced space. That is to say, learning one transformation is insufficient to properly discriminate classes of data in the reduced space because they may have complex and completely dissimilar distributions. This insufficiency becomes even more serious if the number of classes increases, leading to poor discrimination and lessening the learning performance in the reduced space. To overcome this limitation, we propose a novel supervised dimensionality reduction method, which learns per-class transformations by optimizing a newly designed and efficient objective function. The proposed method captures more discriminative information from each single class of data compared to the case of one single transformation. Moreover, the proposed objective function enjoys several desirable properties: (1) maximizing margins between the transformed classes of data, (2) having a closed-form solution, (3) being easily kernelized in the case of nonlinear data, (4) preventing overfitting, and (5) ensuring the transformations are sparse in rows so that discriminative features are learned in the reduced space. Experimental results verify that the proposed method is superior to the related state-of-the-art methods and promising in generating discriminative embeddings.
机译:从高维数据分析和学习在机器学习任务中一直挑战,造成严重的计算复杂性和差的学习表演。监督维度减少是一种流行的技术,以解决监督学习任务中的挑战,数据伴随着标签。传统上,这种技术主要学习一个单一的转换,以将项目数据投入到低维辨别子空间中。然而,仅学习整个数据的一个转换可以由一个或多个类支配,其余的类别在降低空间中接收较少的歧视。也就是说,学习一个转换不足以正确地区分减少空间中的数据类,因为它们可能具有复杂和完全不同的分布。如果课程数量增加,这种不足会变得更加严重,导致歧视性差,减少降低空间中的学习表现。为了克服这一限制,我们提出了一种新颖的监督维度减少方法,通过优化新设计和有效的客观函数来学习每级变换。与一个单一变换的情况相比,所提出的方法从每个单个数据中捕获更多辨别信息。此外,所提出的目标函数享有几种理想的性质:(1)在非线性数据的情况下,(3)在非线性数据的情况下,(3)在具有闭合溶液的变换的数据的数据(2)之间最大化边缘,(2)在非线性数据的情况下容易遍历,(4)过度装备,和(5)确保变换在行中稀疏,以便在降低的空间中学习鉴别特征。实验结果验证了所提出的方法优于相关的最先进的方法,并在产生鉴别的嵌入方面具有前景。

著录项

  • 来源
    《Expert systems with applications》 |2021年第2期|113958.1-113958.10|共10页
  • 作者单位

    Department of Computer Science & Engineering and Information Technology Shiraz University Shiraz Iran;

    Department of Computer Science & Engineering and Information Technology Shiraz University Shiraz Iran;

    Department of statistics and actuarial science University of Waterloo Waterloo Canada;

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