In order to study the cognitive processes underlying speech comprehension,
neuro-physiological measures (e.g., EEG and MEG), or behavioural measures
(e.g., reaction times and response accuracy) can be applied. Compared
to behavioural measures, EEG signals can provide a more fine-grained
and complementary view of the processes that take place during the
unfolding of an auditory stimulus.
EEG signals are often
analysed after having chosen specific time windows, which are usually
based on the temporal structure of ERP components expected to be sensitive
to the experimental manipulation. However, as the timing of ERP components
may vary between experiments, trials, and participants, such a-priori
defined analysis time windows may significantly hamper the exploratory
power of the analysis of components of interest. In this paper, we
explore a wide-window analysis method applied to EEG signals collected
in an auditory repetition priming experiment.
This approach is based
on a bank of temporal filters arranged along the time axis in combination
with linear mixed effects modelling. Crucially, it permits a temporal
decomposition of effects in a single comprehensive statistical model
which captures the entire EEG trace.