IQ trainer 1.1
IQ trainer is based on a neurophysiologic mechanism that is called back propagation.
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IQ trainer is based on a neurophysiologic mechanism that is called back propagation. This method is well-known and is widely used in biophysics, psychology and even in artificial neural network modeling.
Since this is a highly specialized and complex science, we cannot offer a complete description here. If you’re interested in doing some research on the internet, use the search engine Google for investigating terms like "backpropagation definition", "backpropagation and biological neural networks", "backpropagation and connectionist systems", etc.
However, it i
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