2024
DOI: 10.1002/fft2.395
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Adulteration detection of edible oil by one‐class classification and outlier detection

Xinjing Dou,
Fengqin Tu,
Li Yu
et al.

Abstract: Edible oil adulteration is a mostly practiced phenomenon. However, the traditional discriminant methods fail to detect oil adulteration involving more than one adulterant. Recently, one‐class classifiers were built for food or oil authentication. Unfortunately, as it is hard to determine the application domain of the one‐class classifier, high prediction error was obtained for real samples in market surveillance. In this study, a new method was developed based on one‐class classification and outlier detection … Show more

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