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Interpretable deep neural networks for single-trial EEG classification
Irene Sturm
, Sebastian Lapuschkin
, Wojciech Samek
*
,
Klaus Robert Müller
*
Corresponding author for this work
Department of Artificial Intelligence
Research output
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Contribution to journal
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Article
›
peer-review
317
Citations (Scopus)
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Keyphrases
Applications of Deep Neural Networks
12%
Black Box
12%
Class-wise
12%
Classification Accuracy
12%
Classification Performance
12%
Classification Task
12%
Cognitive Neuroscience
12%
Deep Neural Network
100%
EEG Analysis
25%
EEG Classification
100%
Heat Map
50%
High-resolution
12%
Individual Networks
12%
Information Layer
12%
Interpretable Deep Neural Networks
100%
Layer-wise Relevance Propagation
100%
Low Performance
12%
Motor Imagination
12%
Neural Activity
25%
Neural Patterns
12%
Neuroscience
12%
New Quality
12%
Nonlinear Tools
12%
Scalp
12%
Single Time Point
12%
Single-trial EEG
100%
Subject Transfer
12%
Neuroscience
Brain-Computer Interface
10%
Cognitive Neuroscience
10%
Electroencephalography
100%
Neural Network
100%