I have been going over genetic algorithms. My aim is to implement simple simulation where the player (uncontrolled by external human players) avoids obstacles and goes towards the rewards.
I understand that genetic algorithms fall into Evolutionary Algorithms, which is great for this scenario because I don't have to provide training data then. It will learn by itself.
These introductions I have been reading talk about populations which are encoded as binary strings (I think), I don't see how populations and refining populations to produce new generations has anything to do with this problem domain.
Can someone please explain