Decision SincNet: Neurocognitive models of decision making that predict
cognitive processes from neural signals
- URL: http://arxiv.org/abs/2208.02845v1
- Date: Thu, 4 Aug 2022 18:51:29 GMT
- Title: Decision SincNet: Neurocognitive models of decision making that predict
cognitive processes from neural signals
- Authors: Qinhua Jenny Sun, Khuong Vo, Kitty Lui, Michael Nunez, Joachim
Vandekerckhove, Ramesh Srinivasan
- Abstract summary: We adapted a SincNet-based shallow neural network architecture to fit the Drift-Diffusion model using EEG signals.
Single-trial estimates of drift and boundary performed better at predicting RTs than the median estimates in both training and test data sets.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Human decision making behavior is observed with choice-response time data
during psychological experiments. Drift-diffusion models of this data consist
of a Wiener first-passage time (WFPT) distribution and are described by
cognitive parameters: drift rate, boundary separation, and starting point.
These estimated parameters are of interest to neuroscientists as they can be
mapped to features of cognitive processes of decision making (such as speed,
caution, and bias) and related to brain activity. The observed patterns of RT
also reflect the variability of cognitive processes from trial to trial
mediated by neural dynamics. We adapted a SincNet-based shallow neural network
architecture to fit the Drift-Diffusion model using EEG signals on every
experimental trial. The model consists of a SincNet layer, a depthwise spatial
convolution layer, and two separate FC layers that predict drift rate and
boundary for each trial in-parallel. The SincNet layer parametrized the kernels
in order to directly learn the low and high cutoff frequencies of bandpass
filters that are applied to the EEG data to predict drift and boundary
parameters. During training, model parameters were updated by minimizing the
negative log likelihood function of WFPT distribution given trial RT. We
developed separate decision SincNet models for each participant performing a
two-alternative forced-choice task. Our results showed that single-trial
estimates of drift and boundary performed better at predicting RTs than the
median estimates in both training and test data sets, suggesting that our model
can successfully use EEG features to estimate meaningful single-trial Diffusion
model parameters. Furthermore, the shallow SincNet architecture identified time
windows of information processing related to evidence accumulation and caution
and the EEG frequency bands that reflect these processes within each
participant.
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