A longstanding question in cognitive science concerns the learning mechanisms underlying compositionality in human cognition. Humans can infer the structured relationships (e.g., grammatical rules) implicit in their sensory observations (e.g., auditory speech), and use this knowledge to guide the composition of simpler meanings into complex wholes. Recent progress in artificial neural networks has shown that when large models are trained on enough linguistic data, grammatical structure emerges in their representations. We extend this work to the domain of mathematical reasoning, where it is possible to formulate precise hypotheses about how meanings (e.g., the quantities corresponding to numerals) should be composed according to structured ...
Theory predicts a close structural relation of formal languages with natural languages. Both share t...
Thesis (Ph. D.)--University of Rochester. Department of Brain & Cognitive Sciences, 2019. Chapter...
Humans are remarkably proficient at decomposing and recombiningconcepts they have learned. In contra...
What type of computational system is the mind? I focus on this question from the perspective of lang...
Compositionality, a natural property of symbolic systems, is thought to be a key principle underlyin...
National audienceWe investigate the capacity of neural networks (NNs) to learn compositional structu...
The ability to generalize previously learned knowledge to novel situations is essential for adaptive...
The power of human language and thought arises from systematic compositionality—the algebraic abilit...
In the last decade, deep artificial neural networks have achieved astounding performance in many nat...
A knowledge-based constructive learning algorithm, KBCC, simplifies and accelerates the learning of ...
Much of animal and human cognition is compositional in nature: higher order, complex representations...
The human ability to understand the world in terms of reusable ``building blocks\u27\u27 allows us t...
We investigate how neural networks can learn and process languages with hierarchical, compositional ...
Theory predicts a close structural relation of formal languages with natural languages. Both share t...
We investigate how neural networks can be used for hierarchical, compositional semantics. To this en...
Theory predicts a close structural relation of formal languages with natural languages. Both share t...
Thesis (Ph. D.)--University of Rochester. Department of Brain & Cognitive Sciences, 2019. Chapter...
Humans are remarkably proficient at decomposing and recombiningconcepts they have learned. In contra...
What type of computational system is the mind? I focus on this question from the perspective of lang...
Compositionality, a natural property of symbolic systems, is thought to be a key principle underlyin...
National audienceWe investigate the capacity of neural networks (NNs) to learn compositional structu...
The ability to generalize previously learned knowledge to novel situations is essential for adaptive...
The power of human language and thought arises from systematic compositionality—the algebraic abilit...
In the last decade, deep artificial neural networks have achieved astounding performance in many nat...
A knowledge-based constructive learning algorithm, KBCC, simplifies and accelerates the learning of ...
Much of animal and human cognition is compositional in nature: higher order, complex representations...
The human ability to understand the world in terms of reusable ``building blocks\u27\u27 allows us t...
We investigate how neural networks can learn and process languages with hierarchical, compositional ...
Theory predicts a close structural relation of formal languages with natural languages. Both share t...
We investigate how neural networks can be used for hierarchical, compositional semantics. To this en...
Theory predicts a close structural relation of formal languages with natural languages. Both share t...
Thesis (Ph. D.)--University of Rochester. Department of Brain & Cognitive Sciences, 2019. Chapter...
Humans are remarkably proficient at decomposing and recombiningconcepts they have learned. In contra...