Yash Shailesh Shah1, Douglas C. Noll, Scott
J. Peltier
1Biomedical Engineering,
Support
Vector Regression is a machine learning technique that learns the mapping
from the training set and labels provided. This creates a model which can
then be used to give predictions for all testing sets. The prediction is
really quick and hence SVR has potential to be used as a tool for real-time
biofeedback applications to evaluate graded potential. In this study, we have
used SVR analysis to evaluate graded activation in multiple neural systems
namely the visual and motor cortex activation. The outputs are encouraging
and advocate prospects of using SVR for future work in building real-time
biofeedback applications in which graded activation needs to be evaluated.