INVESTIGADORES
GRANITTO Pablo Miguel
congresos y reuniones científicas
Título:
Efficient feature selection for PTR-MS fingerprinting of agroindustrial products
Autor/es:
P. M. GRANITTO; F. BIASIOLI; C. FURLANELLO; F. GASPERI
Lugar:
Prague, Czech Republic
Reunión:
Congreso; 18th International Conference on Artificial Neural Networks - LNCS 5164; 2008
Resumen:
We recently introduced the Random Forest - Recursive Feature Elimination (RF-RFE) algorithm for feature selection. In this paper we apply it to the identification of relevant features in the spectra (fingerprints) produced by Proton Transfer Reaction - Mass Spectrometry (PTR-MS) analysis of four agro-industrial products (two datasets with cultivars of Berries and other two with typical cheeses, all from North Italy). The method is compared with the more traditional Support Vector Machine - Recursive Feature Elimination (SVM-RFE), extended to allow multiclass problems. Using replicated experiments we estimate unbiased generalization errors for both methods. We analyze the stability of the two methods and find that RF-RFE is more stable than SVMRFE in selecting small subsets of features. Our results also show that RF-RFE outperforms SVM-RFE on the task of finding small subsets of features with high discrimination levels on PTR-MS datasets.