exemplarsrepresentative
Exemplarsrepresentative is a term used in cognitive science, machine learning, and knowledge representation to denote an exemplar that best represents the core characteristics of a category. It refers to a concrete instance that serves as a standard or benchmark for understanding and communicating what a category entails.
In cognitive science, the concept relates to exemplar theory, which suggests that category judgments are based
In data science and related fields, representative exemplars are used to summarize classes or clusters, enabling
Criteria for representativeness typically include feature salience, frequency of occurrence, coverage of subtypes, and cross-sample consistency.
Limitations include the possibility that a single exemplar cannot capture all variation within a category, risking