In this work a supervised chemornetric approach to the discrimination of Italian honey samples from different floral origin is presented. The analytical data of 73 Italian honey samples from six varieties (chestnut, eucalyptus, heather, sulla, honeydew, and wildflower) have been processed by Linear Discriminant Analysis (LDA), using two different variable selection procedures (Fisher F-based and stepwise LDA). Three and two variables, respectively have been necessary to obtain a 100% predictive ability as evaluated by cross-validation. Successively, a class modeling approach has been followed, using UNEQ. The resulting models showed 100% sensitivity and specificity.
Supervised pattern recognition applied to the discrimination of the floral origin of italian honey samples / Marini, Federico; Magri', Antonio; Balestrieri, F; Fabretti, F; Marini, D.. - In: ANALYTICA CHIMICA ACTA. - ISSN 0003-2670. - STAMPA. - 515:1(2004), pp. 117-125. [10.1016/j.aca.2004.01.013]
Supervised pattern recognition applied to the discrimination of the floral origin of italian honey samples
MARINI, Federico;MAGRI', Antonio;
2004
Abstract
In this work a supervised chemornetric approach to the discrimination of Italian honey samples from different floral origin is presented. The analytical data of 73 Italian honey samples from six varieties (chestnut, eucalyptus, heather, sulla, honeydew, and wildflower) have been processed by Linear Discriminant Analysis (LDA), using two different variable selection procedures (Fisher F-based and stepwise LDA). Three and two variables, respectively have been necessary to obtain a 100% predictive ability as evaluated by cross-validation. Successively, a class modeling approach has been followed, using UNEQ. The resulting models showed 100% sensitivity and specificity.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.