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Guang Ouyang, Ph.D.  postdoctoral fellow in the Department of Physics at
Hong Kong Baptist University, Kowloon
  A toolbox for residue iteration decomposition (RIDE)--A method for the
decomposition, reconstruction, and single trial analysis of event related
potentials

Talk :      February 19, 12:30 pm in the Karp Conference Room, #501 of the
Goodman Cancer Centre, McGill

Workshop:    February 19, 14:05 pm in #208/09 of the McIntyre Medical
Centre, McGill

Registration for Workshop :
http://www.crblm.ca/events/workshop_using_residue_iteration_decomposition_ride_toolbox_erp_data


Event-related brain potential (ERP) is a powerful and popular tool in
cognitive neuroscience, based on the idea that consecutive ERP components
are associated with different and specific cognitive subprocesses,
providing insight into online processing of events at high time resolution.
The traditional averaging method to extract ERPs from the continuous EEG
assumes a fixed temporal relationship between the eliciting event and the
different ERP components. However, this assumption may be substantially
violated in many cases, i.e., the timing of sequential processes vary from
trial to trial. Condition or population differences in temporal component
variability (jitter) may induce or camouflage differences in the amplitudes
of ERP components. Different components within the ERP may be affected to
different degrees by jitter-related distortions. Therefore the conventional
average ERP is a mixing of blurred components. Yet, there has been no
theoretically satisfying and practically applicable solution for this
problem. Guang Ouyang and colleagues have recently developed a new method,
RIDE (Residue Iteration Decomposition), which separates the ERP into
different component clusters with different latency variability. RIDE
provides a tool to (1) separate overlapping components, (2) obtain
information about amplitudes and latencies of each component on a single
trial basis, and (3) reconstruct ERP by compensating the latency
variability. In the seminar, he will give an introduction into the
algorithms and principles and applications of RIDE. He the following
workshop, he will demonstrate the implementation of RIDE.


 Registration is required for the workshop (see link above to access the
registration page)


 Bio:

Guang Ouyang is a postdoctoral fellow in the Department of Physics at Hong
Kong Baptist University, Kowloon. Development of the RIDE toolbox was
completed as part of his PhD thesis.


The workshop and seminar are organized and funded by CRBLM (
http://www.crblm.ca ) and Dr. Karsten Steinhauer's Neurocognition of
Language Laboratory ( http://www.mcgill.ca/neurocoglab/ )


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