Discriminant analysis and class modelling of spectroscopic data

書誌事項

Discriminant analysis and class modelling of spectroscopic data

E.K. Kemsley

Wiley, c1998

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注記

Book with disc issued in case

System requirements for accompanying computer disc: Microsoft Windows 3.1 or 95

Includes bibliographical references (p. [174]-175) and index

内容説明・目次

内容説明

This unique book and software package ("Win-DAS") is both an introduction to discriminant analysis and class modelling, and a powerful tool for analysis of the user's own spectro8copic data. The software includes worked examples based on real data sets, including distinguishing between different types of coffee, and species identification in fruit pulps. By reading the book and working through these tutorials, the user will be become familiar with the following chemometrics methods.principal component analysis (PCA)partial least squares (PLS) for discriminant analysislinear discriminant analysis (LDA) and canonical variate analysis (CVA)the class modelling methods of UNEQ (UNEQual dispersed classes) and SIMCA (Soft Independent Modelling of Class Analogy).The software also allows users to input their own data and can be installed on any PC connected to a spectrometer for easy and direct transfer of files. This versatile software package can be used in any situation which requires analysis of a large number of spectra, with many examples in the tutorials taken from the author's own field of expertise, food science. System requirements for the Win-DAS software are : CD-ROM drive, Microsoft Windows 3.1 or 95, a mouse compatible with Windows 3.1 or 95, a colour monitor with VGA (640x480) or SVGA (800x600) resolution, and approximately 5Mb of available hard drive space. A spreadsheeting and graphing package such as Microsoft Excel is also useful.

目次

Chemometric Methods for Classification Problems. Installing Win-DAS. Getting Started with Win-DAS. Discriminant Analysis. Class Modelling. Case Studies. Appendices. Index.

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