Model-Based Approaches to Storage and Retrieval Development

作者: Charles J. Brainerd

DOI: 10.1007/978-1-4613-9541-6_4

关键词: Memory developmentTest trialPrincipal (computer security)Development (topology)Cognitive scienceAssociative propertyComputer scienceFocus (computing)

摘要: As everyone knows, the distinction between processes that lead to formation of traces, commonly called storage, and permit access such retrieval, is fundamental modern theories memory. Students memory literature usually credit Melton (1963) with being first focus attention on storage-retrieval distinction. remarked, “What, then, are principal issues in a theory memory? These about either storage or retrieval traces” (1963, p. 4). Although this observation appeared more than two decades ago, it was only during past decade concepts replaced older associative ideas as cornerstones theories.

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