Measuring randomness by leave-one-out prediction error. Analysis of EEG after painful stimulation
Academic Article
Publication Date:
2006
abstract:
A parametric approach, to measure randomness in time series, is presented. Time series
are modelled by a kernel machine performing regularized least squares and the
leave-one-out error is used to quantify unpredictability. Analyzing simulated data sets,
we find that structure in data leads to a minimum of the leave-one-out error as the
regularizing parameter is varied. We consider electroencephalographic signals from
migraineurs and healthy humans, after painful stimulation and use the proposed approach
to detect changes of physiological state and to find differences between the response
from patients and healthy subjects. As painful stimulus causes organization of the local
activity in cortex, EEG series become more predictable after stimulation. This phenomenon
is less evident in patients: the inadequate cortical response to pain in migraineurs
separates patients from controls with probability close to $0.005$.
Iris type:
01.01 Articolo in rivista
List of contributors:
Ancona, Nicola
Published in: