Prototypical Examples in Deep Learning: Metrics, Characteristics, and Utility

Machine learning (ML) research has investigated prototypes: examples that are representative of the behavior to be learned. We systematically evaluate five methods for identifying prototypes, both ones previously introduced as well as new ones we propose, finding all of them to provide meaningful but different interpretations... (read more)

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