Group-wise Partial Least Square Regression
Metadatos
Mostrar el registro completo del ítemMateria
Sparsity Partial Least Squares Sparse Partial Least Squares Group-wise Principal Component Analysis Exploratory Data Analysis
Fecha
2017-12Referencia bibliográfica
Camacho, J, Saccenti, E. Group‐wise partial least square regression. Journal of Chemometrics. 2018; 32:e2964. https://doi.org/10.1002/cem.2964
Resumen
This paper introduces the Group-wise Partial Least Squares (GPLS) regression.
GPLS is a new Sparse PLS (SPLS) technique where the sparsity structure is
de ned in terms of groups of correlated variables, similarly to what is done in
the related Group-wise Principal Component Analysis (GPCA). These groups
are found in correlation maps derived from the data to be analyzed. GPLS is
especially useful for exploratory data analysis, since suitable values for its metaparameters can be inferred upon visualization of the correlation maps. Following
this approach, we show GPLS solves an inherent problem of SPLS: its tendency
to confound the data structure as a result of setting its metaparameters using
standard approaches for optimizing prediction, like cross-validation. Results are
shown for both simulated and experimental data.