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      A Review of Genetic Algorithms in near Infrared Spectroscopy and Chemometrics: Past and Future

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          Abstract

          Global optimisation and search problems are abundant in science and engineering, including spectroscopy and its applications. Therefore, it is hardly surprising that general optimisation and search methods such as genetic algorithms (GAs) have also found applications in the area of near infrared (NIR) spectroscopy. A brief introduction to genetic algorithms, their objectives and applications in NIR spectroscopy, as well as in chemometrics, is given. The most popular application for GAs in NIR spectroscopy is wavelength, or more generally speaking, variable selection. GAs are both frequently used and convenient in multi-criteria optimisation; for example, selection of pre-processing methods, wavelength inclusion, and selection of latent variables can be optimised simultaneously. Wavelet transform has recently been applied to pre-processing of NIR data. In particular, hybrid methods of wavelets and genetic algorithms have in a number of research papers been applied to pre-processing, wavelength selection and regression with good success. In all calibrations and, in particular, when optimising, it is essential to validate the model and to avoid over-fitting. GAs have a large potential when addressing these two major problems and we believe that many future applications will emerge. To conclude, optimisation gives good opportunities to simultaneously develop an accurate calibration model and to regulate model complexity and prediction ability within a considered validation framework.

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          Most cited references47

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          Genetic algorithms: principles of natural selection applied to computation.

          A genetic algorithm is a form of evolution that occurs on a computer. Genetic algorithms are a search method that can be used for both solving problems and modeling evolutionary systems. With various mapping techniques and an appropriate measure of fitness, a genetic algorithm can be tailored to evolve a solution for many types of problems, including optimization of a function of determination of the proper order of a sequence. Mathematical analysis has begun to explain how genetic algorithms work and how best to use them. Recently, genetic algorithms have been used to model several natural evolutionary systems, including immune systems.
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            Interval Partial Least-Squares Regression (iPLS): A Comparative Chemometric Study with an Example from Near-Infrared Spectroscopy

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              Application of genetic algorithm-PLS for feature selection in spectral data sets

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                Author and article information

                Journal
                Journal of Near Infrared Spectroscopy
                Journal of Near Infrared Spectroscopy
                IM Publications Open LLP
                0967-0335
                1751-6552
                June 2008
                January 01 2008
                June 2008
                : 16
                : 3
                : 189-197
                Affiliations
                [1 ]Department of Electrical Engineering and Automation, University of Vaasa, PO Box 700, FIN-65101 Vaasa, Finland
                Article
                10.1255/jnirs.778
                33c18697-4cc3-40ae-9ad6-624a6f52f71e
                © 2008

                http://journals.sagepub.com/page/policies/text-and-data-mining-license

                History

                Quantitative & Systems biology,Biophysics
                Quantitative & Systems biology, Biophysics

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