2022
DOI: 10.3389/fncom.2022.900571
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Biases in BCI experiments: Do we really need to balance stimulus properties across categories?

Abstract: Brain Computer Interfaces (BCIs) consists of an interaction between humans and computers with a specific mean of communication, such as voice, gestures, or even brain signals that are usually recorded by an Electroencephalogram (EEG). To ensure an optimal interaction, the BCI algorithm typically involves the classification of the input signals into predefined task-specific categories. However, a recurrent problem is that the classifier can easily be biased by uncontrolled experimental conditions, namely covari… Show more

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Cited by 2 publications
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“…By adding in synthetic replica samples, an ML model trained using the balanced dataset will be less prone to bias [87]. This serves to improve databases in which motor movement or mental tasks are performed due to the abundance of resting phases present during typical data collection [88].…”
Section: Algorithms Gpu-acceleratedmentioning
confidence: 99%
“…By adding in synthetic replica samples, an ML model trained using the balanced dataset will be less prone to bias [87]. This serves to improve databases in which motor movement or mental tasks are performed due to the abundance of resting phases present during typical data collection [88].…”
Section: Algorithms Gpu-acceleratedmentioning
confidence: 99%