浅谈 Active Learning

1. Active Query Driven by Uncertainty and Diversity for Incremental Multi-Label Learning

 

The key task in active learning is to design a selection criterion such that queried labels can improve the classification model most.

many active selection criteria: 

uncertainty measures the confidence of the current model on classifying an instance ,

diversity measures how different an instance is from the labeled data ,

density measures the representativeness of an instance to the whole data set .

 

In traditional supervised classification problems, one instance is assumed to be associated with only one label. However, in many real world applications, an object can have multiple labels simultaneously. Multi-label learning is a framework dealing with such objects.

 

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