Structured statistical models of inductive reasoning
Psychological Review. Vol 116(1)
"Everyday inductive inferences are often guided by rich background
knowledge. Formal models of induction should aim to incorporate this
knowledge and should explain how different kinds of knowledge lead to
the distinctive patterns of reasoning found in different inductive
contexts. This article presents a Bayesian framework that attempts to
meet both goals and describe 4 applications of the framework: a
taxonomic model, a spatial model, a threshold model, and a causal
model. Each model makes probabilistic inferences about the extensions
of novel properties, but the priors for the 4 models are defined over
different kinds of structures that capture different relationships
between the categories in a domain. The framework therefore shows how
statistical inference can operate over structured background knowledge,
and the authors argue that this interaction between structure and
statistics is critical for explaining the power and flexibility of
human reasoning."