People think and learn abstractly and compositionally. These two key properties of human cognition are shared with natural language: we use a finite, composable vocabulary of nameable concepts to generate and understand a combinatorially large space of new sentence. In this paper, we present a domain of compositional reasoning tasks and an artificial language learning paradigm designed to probe the role language plays in bootstrapping learning. We discuss results from a language-guided program learning model suggesting that language can play an important role in bootstrapping learning by providing an important signal for search on individual problems, and a cue towards named, reusable abstractions across the domain as a whole. We evaluate a...
<p>Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive do...
<p>Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive do...
International audienceWe present a computational model that takes into account semantics for languag...
The human ability to understand the world in terms of reusable ``building blocks\u27\u27 allows us t...
The ability to combine learned knowledge and skills to solve novel tasks is a key aspect of generali...
This article briefly reviews some recent work on artificial language learning in children and adults...
The linguistic-simulation approach to cognition predicts that language can enable more efficient con...
This thesis focuses on a challenging and long-standing problem of learning from language, in other w...
Human language offers a powerful window into our thoughts -- we tell stories, give explanations, and...
Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive domai...
Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive domai...
Aim: Reasoning is the most complex and complete function of the mind. It is also one of the importan...
This article briefly reviews some recent work on artificial language learning in children and adults...
Humans are highly efficient learners, with the ability to grasp the meaning of a new concept from ju...
Core knowledge concepts such as object behavior principles provide a rich inventory of primitives fo...
<p>Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive do...
<p>Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive do...
International audienceWe present a computational model that takes into account semantics for languag...
The human ability to understand the world in terms of reusable ``building blocks\u27\u27 allows us t...
The ability to combine learned knowledge and skills to solve novel tasks is a key aspect of generali...
This article briefly reviews some recent work on artificial language learning in children and adults...
The linguistic-simulation approach to cognition predicts that language can enable more efficient con...
This thesis focuses on a challenging and long-standing problem of learning from language, in other w...
Human language offers a powerful window into our thoughts -- we tell stories, give explanations, and...
Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive domai...
Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive domai...
Aim: Reasoning is the most complex and complete function of the mind. It is also one of the importan...
This article briefly reviews some recent work on artificial language learning in children and adults...
Humans are highly efficient learners, with the ability to grasp the meaning of a new concept from ju...
Core knowledge concepts such as object behavior principles provide a rich inventory of primitives fo...
<p>Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive do...
<p>Whether pattern-parsing mechanisms are specific to language or apply across multiple cognitive do...
International audienceWe present a computational model that takes into account semantics for languag...