Is it possible to use "reinforcement learning" or a feedback loop on a supervised model?
I have worked on a machine learning problem using a supervised learning model, more precisely a linear regression model, but I would like to improve the results by creating a feedback loop on the outputs of the prediction, i.e, tell the algorithm if it made mistakes on some examples.
As I know, this is basically how reinforcement learning works: the model learns from positive and negative feedbacks.
I found out that we can implement supervised learning and reinforcement learning algorithms using PyBrain, but I couldn't find a way to relate between both.