Pursuit of the
Ultimate Regression Model for Samarium(III),
Europium(III), and LiCl Using Laser-Induced Fluorescence, Design of
Experiments, and a Genetic Algorithm for Feature Selection
Posted on 2023-01-04 - 00:33
Laser-induced fluorescence spectroscopy, Raman scattering,
and
partial least squares regression models were optimized for the quantification
of samarium (0–150 μg mL–1), europium
(0–75 μg mL–1), and lithium chloride
(0.1–12 M) with a transformational preprocessing strategy.
Selecting combinations of preprocessing methods to optimize the prediction
performance of regression models is frequently a major bottleneck
for chemometric analysis. Here, we propose an optimization tool using
an innovative combination of optimal experimental designs for selecting
preprocessing transformation and a genetic algorithm (GA) for feature
selection. A D-optimal design containing 26 samples (i.e., combinations
of preprocessing strategies) and a user-defined design (576 samples)
did not statistically lower the root mean square error of the prediction
(RMSEP). The greatest improvement in prediction performance was achieved
when a GA was used for feature selection. This feature selection greatly
lowered RMSEP statistics by an average of 53%, resulting in the top
models with percent RMSEP values of 0.91, 3.5, and 2.1% for Sm(III),
Eu(III), and LiCl, respectively. These results indicate that preprocessing
corrections (e.g., scatter, scaling, noise, and baseline) alone cannot
realize the optimal regression model; feature selection is a more
crucial aspect to consider. This unique approach provides a powerful
tool for approaching the true optimum prediction performance and can
be applied to numerous fields of spectroscopy and chemometrics to
rapidly construct models.
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Andrews, Hunter
B.; Sadergaski, Luke R.; Cary, Samantha K. (1753). Pursuit of the
Ultimate Regression Model for Samarium(III),
Europium(III), and LiCl Using Laser-Induced Fluorescence, Design of
Experiments, and a Genetic Algorithm for Feature Selection. ACS Publications. Collection. https://doi.org/10.1021/acsomega.2c06610