After people learn to sort objects into categories they see them differently. Members of the same category look more alike and members of different categories look more different. This phenomenon of within-category compression and between-category separation in similarity space is called categorical perception (CP). It is exhibited by human subjects, animals and neural net models. In backpropagation nets trained first to auto-associate 12 stimuli varying along a one-dimensional continuum and then to sort them into 3 categories, CP arises as a natural side-effect because of four factors: (1) Maximal interstimulus separation in hidden-unit space during auto-association learning, (2) movement toward linear separability during categorization le...
In this toy model of the simplest form of categorization performed by neural nets, CP effects arise ...
We report a series of studies designed to determine whether effects similar to those observed in the...
We report simulations with backpropagation networks trained to discriminate and then categorize a se...
After people learn to sort objects into categories they see them differently. Members of the same ca...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
In human cognition, the expansion of perceived between-category distances and compression of within-...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Neural net models of categorical perception (compression of within-category similarities and separat...
The functional role of altered similarity structure in categorization is analyzed. 'Categorical Perc...
Neural network models of categorical perception can help solve the symbol-grounding problem [Harnad,...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
International audienceClassification is one of the major tasks that deep learning is successfully ta...
In this toy model of the simplest form of categorization performed by neural nets, CP effects arise ...
In this toy model of the simplest form of categorization performed by neural nets, CP effects arise ...
We report a series of studies designed to determine whether effects similar to those observed in the...
We report simulations with backpropagation networks trained to discriminate and then categorize a se...
After people learn to sort objects into categories they see them differently. Members of the same ca...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
In human cognition, the expansion of perceived between-category distances and compression of within-...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Neural net models of categorical perception (compression of within-category similarities and separat...
The functional role of altered similarity structure in categorization is analyzed. 'Categorical Perc...
Neural network models of categorical perception can help solve the symbol-grounding problem [Harnad,...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
International audienceClassification is one of the major tasks that deep learning is successfully ta...
In this toy model of the simplest form of categorization performed by neural nets, CP effects arise ...
In this toy model of the simplest form of categorization performed by neural nets, CP effects arise ...
We report a series of studies designed to determine whether effects similar to those observed in the...
We report simulations with backpropagation networks trained to discriminate and then categorize a se...