Wuhan University Journal of Natural Sciences | 2019

Learning Multi Labels from Single Label —— An Extreme Weak Label Learning Algorithm

 
 
 

Abstract


This paper presents a novel algorithm for an extreme form of weak label learning, in which only one of all relevant labels is given for each training sample. Using genetic algorithm, all of the labels in the training set are optimally divided into several non-overlapping groups to maximize the label distinguishability in every group. Multiple classifiers are trained separately and ensembled for label predictions. Experimental results show significant improvement over previous weak label learning algorithms.

Volume 24
Pages 161-168
DOI 10.1007/s11859-019-1381-y
Language English
Journal Wuhan University Journal of Natural Sciences

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