International audienceSequence-processing neural networks led to remarkable progress on many NLP tasks. As a consequence, there has been increasing interest in understanding to what extent they process language as humans do. We aim here to uncover which biases such models display with respect to "natural" word-order constraints. We train models to communicate about paths in a simple gridworld, using miniature languages that reflect or violate various natural language trends, such as the tendency to avoid redundancy or to minimize long-distance dependencies. We study how the controlled characteristics of our miniature languages affect individual learning and their stability across multiple network generations. The results draw a mixed pictur...
International audienceSentence comprehension requires inferring, from a sequence of words, the struc...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
Thesis: Ph. D. in Cognitive Science, Massachusetts Institute of Technology, Department of Brain and ...
The universal properties of human languages have been the subject of intense study across the langua...
The ability to acquire and produce a language is a key component of intelligence. If communication i...
Since language models are used to model a wide variety of languages, it is natural to ask whether th...
<div><p>The performance of deep learning in natural language processing has been spectacular, but th...
International audienceWords categorize the semantic fields they refer to in ways that maximize commu...
Recursive processing in sentence comprehension is considered a hallmark of human linguistic abiliti...
Despite renewed interest in emergent language simulations with neural networks, little is known abou...
Natural language involves competition. The sentences we choose to utter activate alternative sentenc...
International audienceSequential behaviors such as language or bird songs are structured in time. Th...
What is the nature of language? How has it evolved in different species? Are there qualitative, well...
Prediction in language has traditionally been studied using simple designs in which neural responses...
Neural networks drive the success of natural language processing. A fundamental property of language...
International audienceSentence comprehension requires inferring, from a sequence of words, the struc...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
Thesis: Ph. D. in Cognitive Science, Massachusetts Institute of Technology, Department of Brain and ...
The universal properties of human languages have been the subject of intense study across the langua...
The ability to acquire and produce a language is a key component of intelligence. If communication i...
Since language models are used to model a wide variety of languages, it is natural to ask whether th...
<div><p>The performance of deep learning in natural language processing has been spectacular, but th...
International audienceWords categorize the semantic fields they refer to in ways that maximize commu...
Recursive processing in sentence comprehension is considered a hallmark of human linguistic abiliti...
Despite renewed interest in emergent language simulations with neural networks, little is known abou...
Natural language involves competition. The sentences we choose to utter activate alternative sentenc...
International audienceSequential behaviors such as language or bird songs are structured in time. Th...
What is the nature of language? How has it evolved in different species? Are there qualitative, well...
Prediction in language has traditionally been studied using simple designs in which neural responses...
Neural networks drive the success of natural language processing. A fundamental property of language...
International audienceSentence comprehension requires inferring, from a sequence of words, the struc...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
Thesis: Ph. D. in Cognitive Science, Massachusetts Institute of Technology, Department of Brain and ...