This study examines whether it is possible to predict successful memorization of previously-learned words in a language learning context from brain activity alone. Participants are tasked with memorizing German-Korean word association pairs, and their retention performance is tested on the day of and the day after learning. To investigate whether brain activity recorded via multi-channel EEG is predictive of memory formation, we perform statistical analysis followed by single-trial classification: first by using linear discriminant analysis, and then with convolutional neural networks. Our preliminary results confirm previous neurophysiological findings, that above-chance prediction of vocabulary memory formation is possible in both LDA and...
Cognitive processes, such as the generation of language, can be mapped onto the brain using fMRI. Th...
International audienceDeep learning algorithms trained to predict masked words from large amount of ...
We present the results using single-trial analyses and pattern classifier to analyze Electroencephal...
Previous Electroencephalography (EEG) and neuroimaging studies have found differences between brain ...
Prediction of memory performance (remembered or forgotten) has various potential applications not on...
In contextually rich language comprehension settings listeners can rely on past context and to gener...
International audienceIn this experiment, event-related potentials were used to examine whether the ...
Language processing differs in native language speakers and language learners, and making progress e...
The present fMRI study aimed to identify neurofunctional predictors of auditory word learning. Twent...
• We attempted to predict whether a subject would later recall studied words pre-sented either visua...
We used pattern classifiers to extract features related to recognition memory retrieval from the tem...
We show that it is possible to successfully predict subsequent memory performance based on single-tr...
Despite the vast number of studies that have examined the relationship between human memory and lear...
Cognitive processes, such as the generation of language, can be mapped onto the brain using fMRI. Th...
Memory traces for words are frequently conceptualized neurobiologically as networks of neurons inter...
Cognitive processes, such as the generation of language, can be mapped onto the brain using fMRI. Th...
International audienceDeep learning algorithms trained to predict masked words from large amount of ...
We present the results using single-trial analyses and pattern classifier to analyze Electroencephal...
Previous Electroencephalography (EEG) and neuroimaging studies have found differences between brain ...
Prediction of memory performance (remembered or forgotten) has various potential applications not on...
In contextually rich language comprehension settings listeners can rely on past context and to gener...
International audienceIn this experiment, event-related potentials were used to examine whether the ...
Language processing differs in native language speakers and language learners, and making progress e...
The present fMRI study aimed to identify neurofunctional predictors of auditory word learning. Twent...
• We attempted to predict whether a subject would later recall studied words pre-sented either visua...
We used pattern classifiers to extract features related to recognition memory retrieval from the tem...
We show that it is possible to successfully predict subsequent memory performance based on single-tr...
Despite the vast number of studies that have examined the relationship between human memory and lear...
Cognitive processes, such as the generation of language, can be mapped onto the brain using fMRI. Th...
Memory traces for words are frequently conceptualized neurobiologically as networks of neurons inter...
Cognitive processes, such as the generation of language, can be mapped onto the brain using fMRI. Th...
International audienceDeep learning algorithms trained to predict masked words from large amount of ...
We present the results using single-trial analyses and pattern classifier to analyze Electroencephal...