Combinatorial projection pursuit analysis for exploring multivariate chemical data

Volume: 1174, Pages: 338716 - 338716
Published: Aug 1, 2021
Abstract
Kurtosis-based projection pursuit analysis (kPPA) has demonstrated the ability to visualize multivariate data in a way that complements other exploratory data analysis tools, such as principal components analysis (PCA). It is especially useful for partitioning binary data sets (2k classes) with a balanced design. Since kPPA is not a variance-based method, it can often provide unsupervised class separation where other methods fail. However, when...
Paper Details
Title
Combinatorial projection pursuit analysis for exploring multivariate chemical data
Published Date
Aug 1, 2021
Volume
1174
Pages
338716 - 338716
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