Decoding human brain activities based on linguistic representations has been actively studied in recent years. However, most previous studies exclusively focus on word-level representations, and little is learned about decoding whole sentences from brain activation patterns. This work is our effort to mend the gap. In this paper, we build decoders to associate brain activities with sentence stimulus via distributed representations, the currently dominant sentence representation approach in natural language processing (NLP). We carry out a systematic evaluation, covering both widely-used baselines and state-of-the-art sentence representation models. We demonstrate how well different types of sentence representations decode the brain activati...
Natural language processing models based on machine learning (ML-NLP models) have been developed to ...
Several popular Transformer based language models have been found to be successful for text-driven b...
Item does not contain fulltextThe field of psycholinguistics is currently experiencing an explosion ...
Although it has been possible to identify individual concepts from a concept's brain activation patt...
International audienceDeep learning algorithms trained to predict masked words from large amount of ...
Sentences contain structure that determines their meaning beyond that of individual words. An influe...
Even though much has recently been learned about the neural representation of individual concepts an...
The relation between semantics and syntax and where they are represented in the neural level has bee...
International audienceThe activations of language transformers like GPT-2 have been shown to linearl...
International audienceA popular approach to decompose the neural bases of language consists in corre...
fMRI word decoding refers to decode what the human brain is thinking by interpreting functional Magn...
Slides for a talk at the Exeter Dynamics seminar 2019-02-18 Abstact: How the human cognitive system...
International audienceSeveral popular Transformer based language models have been found to be succes...
How is semantic information stored in the human mind and brain? Some philosophers and cognitive scie...
Human language stands out in the natural world as a biological signal that uses a structured system ...
Natural language processing models based on machine learning (ML-NLP models) have been developed to ...
Several popular Transformer based language models have been found to be successful for text-driven b...
Item does not contain fulltextThe field of psycholinguistics is currently experiencing an explosion ...
Although it has been possible to identify individual concepts from a concept's brain activation patt...
International audienceDeep learning algorithms trained to predict masked words from large amount of ...
Sentences contain structure that determines their meaning beyond that of individual words. An influe...
Even though much has recently been learned about the neural representation of individual concepts an...
The relation between semantics and syntax and where they are represented in the neural level has bee...
International audienceThe activations of language transformers like GPT-2 have been shown to linearl...
International audienceA popular approach to decompose the neural bases of language consists in corre...
fMRI word decoding refers to decode what the human brain is thinking by interpreting functional Magn...
Slides for a talk at the Exeter Dynamics seminar 2019-02-18 Abstact: How the human cognitive system...
International audienceSeveral popular Transformer based language models have been found to be succes...
How is semantic information stored in the human mind and brain? Some philosophers and cognitive scie...
Human language stands out in the natural world as a biological signal that uses a structured system ...
Natural language processing models based on machine learning (ML-NLP models) have been developed to ...
Several popular Transformer based language models have been found to be successful for text-driven b...
Item does not contain fulltextThe field of psycholinguistics is currently experiencing an explosion ...