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Machine-Learning Methods for Decoding Intentional Brain States

2010

Talk

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Brain-computer interfaces (BCI) work by making the user perform a specific mental task, such as imagining moving body parts or performing some other covert mental activity, or attending to a particular stimulus out of an array of options, in order to encode their intention into a measurable brain signal. Signal-processing and machine-learning techniques are then used to decode the measured signal to identify the encoded mental state and hence extract the user‘s initial intention. The high-noise high-dimensional nature of brain-signals make robust decoding techniques a necessity. Generally, the approach has been to use relatively simple feature extraction techniques, such as template matching and band-power estimation, coupled to simple linear classifiers. This has led to a prevailing view among applied BCI researchers that (sophisticated) machine-learning is irrelevant since “it doesn‘t matter what classifier you use once your features are extracted.” Using examples from our own MEG and EEG experiments, I‘ll demonstrate how machine-learning principles can be applied in order to improve BCI performance, if they are formulated in a domain-specific way. The result is a type of data-driven analysis that is more than “just” classification, and can be used to find better feature extractors.

Author(s): Hill, NJ.
Year: 2010
Month: March
Day: 30

Department(s): Empirical Inference
Bibtex Type: Talk (talk)

Digital: 0
Event Name: Symposium "Non-Invasive Brain Computer Interfaces: Current Developments and Applications" (BIOMAG 2010)
Event Place: Dubrovnik, Croatia
Language: en
Organization: Max-Planck-Gesellschaft
School: Biologische Kybernetik

Links: PDF
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BibTex

@talk{6430,
  title = {Machine-Learning Methods for Decoding Intentional Brain States},
  author = {Hill, NJ.},
  organization = {Max-Planck-Gesellschaft},
  school = {Biologische Kybernetik},
  month = mar,
  year = {2010},
  doi = {},
  month_numeric = {3}
}