International audienceClassification is one of the major tasks that deep learning is successfully tackling. Categorization is also a fundamental cognitive ability. A well-known perceptual consequence of categorization in humans and other animals, categorical perception, is notably characterized by a within-category compression and a between-category separation: two items, close in input space, are perceived closer if they belong to the same category than if they belong to different categories. Elaborating on experimental and theoretical results in cognitive science, here we study categorical effects in artificial neural networks. We combine a theoretical analysis that makes use of mutual and Fisher information quantities and a series of num...
Category learning performance is influenced by both the nature of the category's structure and the w...
In innate Categorical Perception (CP) (e.g., colour perception), similarity space is "warped," with ...
One of the best known arguments against the connectionist approach to artificial intelligence and co...
In human cognition, the expansion of perceived between-category distances and compression of within-...
After people learn to sort objects into categories they see them differently. Members of the same ca...
After people learn to sort objects into categories they see them differently. Members of the same ca...
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...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
We report a series of studies designed to determine whether effects similar to those observed in the...
The functional role of altered similarity structure in categorization is analyzed. 'Categorical Perc...
In innate Categorical Perception (CP) (e.g., colour perception), similarity space is "warped," with ...
We report a series of studies designed to determine whether effects similar to those observed in the...
Category learning performance is influenced by both the nature of the category's structure and the w...
In innate Categorical Perception (CP) (e.g., colour perception), similarity space is "warped," with ...
One of the best known arguments against the connectionist approach to artificial intelligence and co...
In human cognition, the expansion of perceived between-category distances and compression of within-...
After people learn to sort objects into categories they see them differently. Members of the same ca...
After people learn to sort objects into categories they see them differently. Members of the same ca...
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...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Some of the features of animal and human categorical perception (CP) for color, pitch and speech are...
We report a series of studies designed to determine whether effects similar to those observed in the...
The functional role of altered similarity structure in categorization is analyzed. 'Categorical Perc...
In innate Categorical Perception (CP) (e.g., colour perception), similarity space is "warped," with ...
We report a series of studies designed to determine whether effects similar to those observed in the...
Category learning performance is influenced by both the nature of the category's structure and the w...
In innate Categorical Perception (CP) (e.g., colour perception), similarity space is "warped," with ...
One of the best known arguments against the connectionist approach to artificial intelligence and co...