2019
DOI: 10.48550/arxiv.1906.08110
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PLS Generalized Linear Regression and Kernel Multilogit Algorithm (KMA) for Microarray Data Classification

Abstract: We implement extensions of the partial least squares generalized linear regression (PLSGLR)due to Bastien et al. (2005) through its combination with logistic regression and linear discriminant analysis, to get a partial least squares generalized linear regression-logistic regression model (PLSGLR-log), and a partial least squares generalized linear regression-linear discriminant analysis model (PLSGLRDA). These two classification methods are then compared with classical methodologies like the k-nearest neighbo… Show more

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