Inicio  /  Information  /  Vol: 13 Par: 12 (2022)  /  Artículo
ARTÍCULO
TITULO

Generalized Zero-Shot Learning for Image Classification?Comparing Performance of Popular Approaches

Elie Saad    
Marcin Paprzycki    
Maria Ganzha    
Amelia Badica    
Costin Badica    
Stefka Fidanova    
Ivan Lirkov and Mirjana Ivanovic    

Resumen

There are many areas where conventional supervised machine learning does not work well, for instance, in cases with a large, or systematically increasing, number of countably infinite classes. Zero-shot learning has been proposed to address this. In generalized settings, the zero-shot learning problem represents real-world applications where test instances are present during inference. Separately, recently, there has been increasing interest in meta-classifiers, which combine the results from individual classifications to improve the overall classification quality. In this context, the purpose of the present paper is two-fold: First, the performance of five state-of-the-art, generalized zero-shot learning methods is compared for five popular benchmark datasets. Second, six standard meta-classification approaches are tested by experiment. In the experiments undertaken, all meta-classifiers were applied to the same datasets; their performance was compared to each other and to the original classifiers.