Corrections for heteroscedasticity in window evolving factor analysis
β Scribed by Christian Ritter; Jean A. Gilliard; Jean Cumps; Bernard Tilquin
- Publisher
- Elsevier Science
- Year
- 1996
- Tongue
- English
- Weight
- 900 KB
- Volume
- 318
- Category
- Article
- ISSN
- 0003-2670
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β¦ Synopsis
Window
evolving factor analysis (WEFA) is a powerful technique for checking peak purity in liquid chromatography with diode array detection (LC-DAD). However, practical application of the technique can be limited by instrumental and experimental non-idealities. One of the problem sources is heteroscedasticity. In this work, we propose two new data transformation procedures and one technique for directly adjusting the log-eigenvalue profiles, which eliminate most of the heteroscedastic effect in the WEFA plots. The pretreatment and the adjustment techniques can be used in combination to obtain even better results. The performance of the techniques are demonstrated on simulated and actual data.
π SIMILAR VOLUMES
Evohng factor analysis (EFA) IS a promwng method for the analysis of multlvarlate data with an mtrmstc order When applymg EFA for assessment of peak homogeneity m hqmd chromatography, one has to be aware of mstrumental and expelvnental d8ficulttes Heteroscedastlclty 1s one of the most serious proble
The aggregation of methylene blue (MB) in water was studied by factor analysis (FA) of the visible spectra over a wide range of concentration from 1β 000 Γ 10 77 to 1β 600 Γ 10 72 M. Abstract factor analysis of data with multiple sources of error (AFA-MSE) revealed three MB species. The concentration