Modeling Age Differences in Infant Category Learning.

We used an encoder version of cascade correlation to simulate Younger and Cohen's (1983, 1986) finding that 10-month-olds recover attention on the basis of correlations among stimulus features, but 4- and 7-month-olds recover attention on the basis of stimulus features. We captured these effects by varying the score threshold parameter in cascade correlation, which controls how deeply training patterns are learned. When networks learned deeply, they showed more error to uncorrelated than to correlated test patterns, indicating that they abstracted correlations during familiarization. When prevented from learning deeply, networks decreased error during familiarization and showed as much error to correlated as to uncorrelated tests but less than to test items with novel features, indicating that they learned features but not correlations among features. Our explanation is that older infants learn more from the same exposure than do younger infants. Unlike previous explanations that postulate unspecified qualitative shifts in processing with age, our explanation focuses on quantitatively deeper learning with increasing age. Finally, we provide some new empirical evidence to support this explanation.

[1]  E. Gould,et al.  Neurogenesis in adulthood: a possible role in learning , 1999, Trends in Cognitive Sciences.

[2]  Thomas R. Shultz,et al.  Computational power and realistic cognitive development , 1996 .

[3]  T. Shultz,et al.  Neural network modeling of developmental effects in discrimination shifts. , 1998, Journal of experimental child psychology.

[4]  Barbara A. Younger,et al.  How Infants form Categories , 1985 .

[5]  Barbara A. Younger,et al.  Developmental change in infants' perception of correlations among attributes. , 1986, Child development.

[6]  R. Case,et al.  Operational efficiency and the growth of short-term memory span , 1982 .

[7]  Thomas R. Shultz,et al.  Modeling cognitive development on balance scale phenomena , 1994, Machine Learning.

[8]  Thomas R. Shultz,et al.  Neural Network Simulation of Infant Familiarization to Artificial Sentences: Rule-Like Behavior Without Explicit Rules and Variables. , 2001, Infancy : the official journal of the International Society on Infant Studies.

[9]  L. Cohen,et al.  Infants' Perception of Causal Chains , 1999 .

[10]  E. W. Ames,et al.  A multifactor model of infant preferences for novel and familiar stimuli. , 1988 .

[11]  L. Cohen,et al.  Infant perception of correlations among attributes. , 1983, Child development.

[12]  Denis Mareschal,et al.  Mechanisms of Categorization in Infancy. , 2000, Infancy : the official journal of the International Society on Infant Studies.

[13]  T. Shultz,et al.  Generative connectionist networks and constructivist cognitive development , 1996 .

[14]  Cara H. Cashon,et al.  A constructivist model of infant cognition , 2002 .

[15]  T. Sejnowski,et al.  Irresistible environment meets immovable neurons , 1997, Behavioral and Brain Sciences.

[16]  R. French,et al.  A connectionist account of asymmetric category learning in early infancy. , 2000, Developmental psychology.

[17]  E. Gibson Principles of Perceptual Learning and Development , 1969 .

[18]  T. Shultz Computational Developmental Psychology , 2003 .

[19]  D. O. Hebb,et al.  The organization of behavior , 1988 .

[20]  Barbara A. Younger,et al.  Infant perception of angular relations , 1984 .