Artificial Neural Nets Applied to Strategic Games
نویسنده
چکیده
I present a short list of methods that experts have applied to the problem of using a neural network to choose the right action in a strategic game. The list is a quick reference and a source for inspiration for persons who want to solve a strategic decision task using neural nets. The paper is concluded with a few examples, using the game of Connect-4.
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