This article explores some of the philosophical implications of the Bayesian modeling paradigm. In particular, it focuses on the ramifications of the fact that Bayesian models pre-specify an inbuilt hypothesis space. To what extent does this pre-specification correspond to simply "building the solution in"? I argue that any learner (whether computer or human) must have a built-in hypothesis space in precisely the same sense that Bayesian models have one. This has implications for the nature of learning, Fodor’s puzzle of concept acquisition, and the role of modeling in cognitive science.Amy Perfor
A series of high-profile critiques of Bayesian models of cognition have recently sparked controversy...
In response to the proposal that cognitive phenomena might be best understood in terms of cognitive ...
I consider the problem of learning concepts from small numbers of positive examples, a feat which h...
There has been a recent explosion in research applying Bayesian models to cognitive phenomena. This ...
A Bayesian framework helps address, in computational terms, what knowledge children start with and h...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
We present an introduction to Bayesian inference as it is used in probabilistic models of cognitive ...
Human thought is remarkably flexible: we can think about infinitely many different situations despit...
Recent debates in the psychological literature have raised questions about what assumptions underpin...
Abstract: The prominence of Bayesian modeling of cognition has increased recently largely because of...
Recent debates in the psychological literature have raised questions about the assumptions that unde...
Probability theory forms a natural framework for explaining the impressive success of people at solv...
ic mo otiv is wo on of the importance of mechanistic explanation, but the specific critiques of our ...
A series of high-profile critiques of Bayesian models of cognition have recently sparked controversy...
In response to the proposal that cognitive phenomena might be best understood in terms of cognitive ...
I consider the problem of learning concepts from small numbers of positive examples, a feat which h...
There has been a recent explosion in research applying Bayesian models to cognitive phenomena. This ...
A Bayesian framework helps address, in computational terms, what knowledge children start with and h...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
Item does not contain fulltextThis chapter provides an introduction to Bayesian models and their app...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
We present an introduction to Bayesian inference as it is used in probabilistic models of cognitive ...
Human thought is remarkably flexible: we can think about infinitely many different situations despit...
Recent debates in the psychological literature have raised questions about what assumptions underpin...
Abstract: The prominence of Bayesian modeling of cognition has increased recently largely because of...
Recent debates in the psychological literature have raised questions about the assumptions that unde...
Probability theory forms a natural framework for explaining the impressive success of people at solv...
ic mo otiv is wo on of the importance of mechanistic explanation, but the specific critiques of our ...
A series of high-profile critiques of Bayesian models of cognition have recently sparked controversy...
In response to the proposal that cognitive phenomena might be best understood in terms of cognitive ...
I consider the problem of learning concepts from small numbers of positive examples, a feat which h...