| Literature DB >> 24054659 |
Franco Allegrini1, Alejandro C Olivieri.
Abstract
A new optimization strategy for multivariate partial-least-squares (PLS) regression analysis is described. It was achieved by integrating three efficient strategies to improve PLS calibration models: (1) variable selection based on ant colony optimization, (2) mathematical pre-processing selection by a genetic algorithm, and (3) sample selection through a distance-based procedure. Outlier detection has also been included as part of the model optimization. All the above procedures have been combined into a single algorithm, whose aim is to find the best PLS calibration model within a Monte Carlo-type philosophy. Simulated and experimental examples are employed to illustrate the success of the proposed approach.Keywords: Multivariate calibration; Outlier detection; Partial least-squares; Pre-processing selection; Sample selection; Variable selection
Mesh:
Year: 2013 PMID: 24054659 DOI: 10.1016/j.talanta.2013.06.051
Source DB: PubMed Journal: Talanta ISSN: 0039-9140 Impact factor: 6.057