Machine Learning in Biological Sciences 2022
DOI: 10.1007/978-981-16-8881-2_7
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Dimensionality Reduction Methods in Machine Learning

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“…In this paper, we quantify the influence of different railway sections on wheel damage from historical running records using Fisher's linear discriminant analysis (LDA). [22][23][24] LDA is a classical supervised dimension reduction method that aims to find the optimal linear combination of high-dimensional inputs to separate data of two classes. 22,23 In this paper, we use LDA to find the optimal combination of the running mileage of a wheelset on each railway section to achieve the best distinction between the subset of normal wheelsets (C 1 ) and the subset of defective wheelsets (C 2 ).…”
Section: Linear Discriminant Analysis (Lda)mentioning
confidence: 99%
“…In this paper, we quantify the influence of different railway sections on wheel damage from historical running records using Fisher's linear discriminant analysis (LDA). [22][23][24] LDA is a classical supervised dimension reduction method that aims to find the optimal linear combination of high-dimensional inputs to separate data of two classes. 22,23 In this paper, we use LDA to find the optimal combination of the running mileage of a wheelset on each railway section to achieve the best distinction between the subset of normal wheelsets (C 1 ) and the subset of defective wheelsets (C 2 ).…”
Section: Linear Discriminant Analysis (Lda)mentioning
confidence: 99%