Prediction of memory performance (remembered or forgotten) has various potential applications not only for knowledge learning but also for disease diagnosis. Recently, subsequent memory effects (SMEs)-the statistical differences in electroencephalography (EEG) signals before or during learning between subsequently remembered and forgotten events-have been found. This finding indicates that EEG signals convey the information relevant to memory performance. In this paper, based on SMEs we propose a computational approach to predict memory performance of an event from EEG signals. We devise a convolutional neural network for EEG, called ConvEEGNN, to predict subsequently remembered and forgotten events from EEG recorded during memory process. ...
Recent studies have shown that stimulus history can be decoded via the use of broadband sensory impu...
Modern systems (e.g., assistive technology and self-driving) can place significant demands on the us...
Multiple modern methods of statistical feature extraction and machine learning are applied to classi...
We show that it is possible to successfully predict subsequent memory performance based on single-tr...
This study examines whether it is possible to predict successful memorization of previously-learned ...
• We attempted to predict whether a subject would later recall studied words pre-sented either visua...
Previous Electroencephalography (EEG) and neuroimaging studies have found differences between brain ...
We used pattern classifiers to extract features related to recognition memory retrieval from the tem...
We present the results using single-trial analyses and pattern classifier to analyze Electroencephal...
In this work, we explore the topic of forecasting the neural time series using machine-learning base...
Cognitive load refers to the amount of used working memory resources, which is limited in both capac...
Raw EEG data are preprocessed, after which source localization is conducted. Relevant features are e...
A fundamental goal in memory research is to understand how information is represented in distributed...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...
International audienceIn this experiment, event-related potentials were used to examine whether the ...
Recent studies have shown that stimulus history can be decoded via the use of broadband sensory impu...
Modern systems (e.g., assistive technology and self-driving) can place significant demands on the us...
Multiple modern methods of statistical feature extraction and machine learning are applied to classi...
We show that it is possible to successfully predict subsequent memory performance based on single-tr...
This study examines whether it is possible to predict successful memorization of previously-learned ...
• We attempted to predict whether a subject would later recall studied words pre-sented either visua...
Previous Electroencephalography (EEG) and neuroimaging studies have found differences between brain ...
We used pattern classifiers to extract features related to recognition memory retrieval from the tem...
We present the results using single-trial analyses and pattern classifier to analyze Electroencephal...
In this work, we explore the topic of forecasting the neural time series using machine-learning base...
Cognitive load refers to the amount of used working memory resources, which is limited in both capac...
Raw EEG data are preprocessed, after which source localization is conducted. Relevant features are e...
A fundamental goal in memory research is to understand how information is represented in distributed...
We present results from single-trial analyses conducted on Electroencephalography (EEG) data recorde...
International audienceIn this experiment, event-related potentials were used to examine whether the ...
Recent studies have shown that stimulus history can be decoded via the use of broadband sensory impu...
Modern systems (e.g., assistive technology and self-driving) can place significant demands on the us...
Multiple modern methods of statistical feature extraction and machine learning are applied to classi...