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Kernel logistic PLS: A tool for supervised nonlinear dimensionality reduction and binary classification

机译:内核逻辑物流PLS:一种用于监督非线性降维和二进制分类的工具

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摘要

“Kernel logistic PLS” (KL-PLS) is a new tool for supervised nonlinear dimensionality reduction and binary classification. The principles of KL-PLS are based on both PLS latent variables construction and learning with kernels. The KL-PLS algorithm can be seen as a supervised dimensionality reduction (complexity control step) followed by a classification based on logistic regression. The algorithm is applied to 11 benchmark data sets for binary classification and to three medical problems. In all cases, KL-PLS proved its competitiveness with other state-of-the-art classification methods such as support vector machines. Moreover, due to successions of regressions and logistic regressions carried out on only a small number of uncorrelated variables, KL-PLS allows handling high-dimensional data. The proposed approach is simple and easy to implement. It provides an efficient complexity control by dimensionality reduction and allows the visual inspection of data segmentation.
机译:“内核逻辑物流PLS”(KL-PLS)是一种用于监督非线性降维和二进制分类的新工具。 KL-PLS的原理基于PLS潜在变量的构造和内核学习。 KL-PLS算法可以看作是监督降维(复杂性控制步骤),然后是基于逻辑回归的分类。该算法适用于11个基准数据集以进行二进制分类,并应用于三个医疗问题。在所有情况下,KL-PLS都证明了其与其他最新分类方法(如支持向量机)的竞争优势。而且,由于仅对少量不相关的变量进行了一系列的回归和逻辑回归,因此KL-PLS可以处理高维数据。所提出的方法简单且易于实施。它通过降维提供了有效的复杂性控制,并允许对数据分段进行视觉检查。

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