This article provides an introductory overview of
the state of research on Hierarchical Bayesian Modeling in
cognitive development. First, a brief historical summary and
a definition of hierarchies in Bayesian modeling are given.
Subsequently, some model structures are described based
on four examples in the literature. These are models for
the development of the shape bias, for learning ontological
kinds and causal schemata as well as for the categorization
of objects. The Bayesian modeling approach is then compared with the connectionist and nativist modeling paradigms
and considered in view of Marr’s (1982) three description
levels of information-processing mechanisms. In this context, psychologically plausible algorithms and ideas of their
neural implementation are presented. In addition to criticism and limitations of the approach, research needs are
identified.
«This article provides an introductory overview of
the state of research on Hierarchical Bayesian Modeling in
cognitive development. First, a brief historical summary and
a definition of hierarchies in Bayesian modeling are given.
Subsequently, some model structures are described based
on four examples in the literature. These are models for
the development of the shape bias, for learning ontological
kinds and causal schemata as well as for the categorization
of objects. The Bayes...
»