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Original Articles

A dual-process account of digit invariance learning

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Pages 1664-1680 | Received 15 Jul 2004, Published online: 17 Feb 2007
 

Abstract

Performance in the McGeorge and Burton (1990) digit invariance task was originally thought to be mediated by unconscious abstraction of a “rule” that identified the invariant feature across all study items. Subsequent explanations have suggested explicit strategy use or similarity-to-exemplar matching rather than abstraction. This paper presents data that suggest that both similarity and abstraction can be used under different task demands. Delay between study and test afforded abstraction of the invariant knowledge whereas reducing the pool of study exemplars enhanced responding based on specific similarity. These results parallel effects found in the categorization literature. Rule abstraction in this sense may be due to statistical learning of feature frequency rather than abstraction of a central tendency or a complex/conceptual rule. Categorizing responses into subjective memory states (remember/know/guess) demonstrates that neither the similarity matching nor the abstraction mechanism uses information from episodic memory. Confidence measures show that participants are more confident of responses when the prototypical representation is used but not specific similarity. Taken together, these data suggest that abstracted knowledge is not held consciously but that participants have meta-awareness of when they are using the abstracted representation.

The authors would like to thank Pierre Perruchet, Ben Newell, and an anonymous reviewer for their valuable comments on this manuscript. The authors would also like to thank Peter McGeorge and Mike Burton for helpful discussions regarding the digit invariance task. This research was supported by an ESRC award to SK (R000239754).

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