Domain-invariant partial-least-squares regression

Autoren Ramin Nikzad-Langerodi
Werner Zellinger
Edwin Lughofer
Susanne Saminger-Platz
Editoren
Titel Domain-invariant partial-least-squares regression
Typ Artikel
Journal Analytical Chemistry
Nummer 11
Band 90
DOI doi:10.1021/acs.analchem.8b00498
Monat May
Jahr 2018
Seiten 6693-6701
SCCH ID# ZELLW1
Abstract

Multivariate calibration models often fail to extrapolate beyond the calibration samples because of changes associated with the instrumental response, environmental condition, or sample matrix. Most of the current methods used to adapt a source calibration model to a target domain exclusively apply to calibration transfer between similar analytical devices, while generic methods for calibration-model adaptation are largely missing. To fill this gap, we here introduce domain-invariant partial-least-squares (di-PLS) regression, which extends ordinary PLS by a domain regularizer in order to align the source and target distributions in the latent-variable space. We show that a domain-invariant weight vector can be derived in closed form, which allows the integration of (partially) labeled data from the source and target domains as well as entirely unlabeled data from the latter.

We test our approach on a simulated data set where the aim is to desensitize a source calibration model to an unknown interfering agent in the target domain (i.e., unsupervised model adaptation). In addition, we demonstrate unsupervised, semisupervised, and supervised model adaptation by di-PLS on two real-world near-infrared (NIR) spectroscopic data sets.