Cryptotype, Overgeneralization and Competition: A Connectionist Model of the Learning of English Reversive Prefixes
- 1 March 1996
- journal article
- research article
- Published by Taylor & Francis in Connection Science
- Vol. 8 (1) , 3-30
- https://doi.org/10.1080/095400996116938
Abstract
This study examined the role of covert semantic classes or 'cryptotypes' in determining children's overgeneralizations of reversive prefixes such as un - in *unsqueeze or *unpress . A training corpus of 160 English verbs was presented incrementally to a backpropagation network. In three simulations, we showed that the network developed structured representations for the semantic cryptotype associated with the use of the reversive prefix un- . Overgeneralizations produced by the network, such as *unbury or *unpress , match up well with actual overgeneralizations observed in human children, showing that structured cryptotypic semantic representations underlie this overgeneralization behaviour. Simulation 2 points towards a role of lexical competition in morphological acquisition and overgeneralizations. Simulation 3 provides insight into the relationship between plasticity in network learning and the ability to recover from overgeneralizations. Together, these analyses paint a dynamic picture in which competing morphological devices work together to provide the best possible match to underlying covert semantic structures.Keywords
This publication has 0 references indexed in Scilit: