TY - JOUR
T1 - Acquisition of aspect in self-organizing connectionist models
AU - Zhao, Xiaowei
AU - Li, Ping
N1 - Funding Information:
* This research was supported by a grant from the National Science Foundation (BCS-0131829) to PL. Correspondence address: Ping Li, Department of Psychology, Pennsyl-vania State University, 614 Moore Building; University Park, PA 16802-3106, USA. E-mail: [email protected].
PY - 2009/9
Y1 - 2009/9
N2 - Two connectionist networks, DISLEX and DevLex-II, were used in this study to model the acquisition of lexical and grammatical aspect. Both models use multi-layered self-organizing feature maps, connected by associative links trained according to the Hebbian learning rule. Previous empirical research has identified a strong association between lexical aspect and grammatical aspect in child language, on the basis of which some researchers argue for innate semantic categories or prelinguistic predispositions. Our simulations indicate that such an association can emerge from dynamic self-organization and Hebbian learning in connectionist networks, without the need of a priori assumptions about the structure of innate knowledge. Our modeling results further attest to the utility of self-organizing neural networks in the study of language acquisition.
AB - Two connectionist networks, DISLEX and DevLex-II, were used in this study to model the acquisition of lexical and grammatical aspect. Both models use multi-layered self-organizing feature maps, connected by associative links trained according to the Hebbian learning rule. Previous empirical research has identified a strong association between lexical aspect and grammatical aspect in child language, on the basis of which some researchers argue for innate semantic categories or prelinguistic predispositions. Our simulations indicate that such an association can emerge from dynamic self-organization and Hebbian learning in connectionist networks, without the need of a priori assumptions about the structure of innate knowledge. Our modeling results further attest to the utility of self-organizing neural networks in the study of language acquisition.
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U2 - 10.1515/LING.2009.038
DO - 10.1515/LING.2009.038
M3 - Article
AN - SCOPUS:70349404434
SN - 0024-3949
VL - 47
SP - 1075
EP - 1112
JO - Linguistics
JF - Linguistics
IS - 5
ER -