In order to describe how humans represent meaning in the brain, one must be able to account for not just concrete words but, critically, also abstract words, which lack a physical referent. Hebbian formalism and optimization are basic principles of brain function, and they provide an appealing approach for modeling word meanings based on word co-occurrences. We provide proof of concept that a statistical model of the semantic space can account for neural representations of both concrete and abstract words, using MEG. Here, we built a statistical model using word embeddings extracted from a text corpus. This statistical model was used to train a machine learning algorithm to successfully decode the MEG signals evoked by written words. In the...
Dual coding theories of knowledge suggest that meaning is represented in the brain by a double code,...
We investigate the effects of two types of relationship between the words of a sentence or text – pr...
Introducing the concept of semantic representation in the brain as well as highlighting their releva...
In order to describe how humans represent meaning in the brain, one must be able to account for not ...
How is semantic information stored in the human mind and brain? Some philosophers and cognitive scie...
International audienceDeep learning algorithms trained to predict masked words from large amount of ...
Natural language processing models based on machine learning (ML-NLP models) have been developed to ...
Important advances have recently been made using computational semantic models to decode brain activ...
Item does not contain fulltextIn contextually rich language comprehension settings listeners can rel...
Vector space models (VSMs) represent word meanings as points in a high dimen-sional space. VSMs are ...
This article describes the discovery of a set of biologically-driven semantic dimensions underlying ...
The quantitative modeling of semantic representations in the brain plays a key role in understanding...
This article describes the discovery of a set of biologically-driven semantic dimensions underlying ...
Word embeddings are vectorial semantic representations built with either counting or predicting tech...
The neural principles behind semantic category representation are still under debate. Dominant theor...
Dual coding theories of knowledge suggest that meaning is represented in the brain by a double code,...
We investigate the effects of two types of relationship between the words of a sentence or text – pr...
Introducing the concept of semantic representation in the brain as well as highlighting their releva...
In order to describe how humans represent meaning in the brain, one must be able to account for not ...
How is semantic information stored in the human mind and brain? Some philosophers and cognitive scie...
International audienceDeep learning algorithms trained to predict masked words from large amount of ...
Natural language processing models based on machine learning (ML-NLP models) have been developed to ...
Important advances have recently been made using computational semantic models to decode brain activ...
Item does not contain fulltextIn contextually rich language comprehension settings listeners can rel...
Vector space models (VSMs) represent word meanings as points in a high dimen-sional space. VSMs are ...
This article describes the discovery of a set of biologically-driven semantic dimensions underlying ...
The quantitative modeling of semantic representations in the brain plays a key role in understanding...
This article describes the discovery of a set of biologically-driven semantic dimensions underlying ...
Word embeddings are vectorial semantic representations built with either counting or predicting tech...
The neural principles behind semantic category representation are still under debate. Dominant theor...
Dual coding theories of knowledge suggest that meaning is represented in the brain by a double code,...
We investigate the effects of two types of relationship between the words of a sentence or text – pr...
Introducing the concept of semantic representation in the brain as well as highlighting their releva...