April 2026
461 pages
17h 56m
English
is referred to as the weight vector. When we talk about learning in neural networks, we’re referring to the adaptation of weights. To understand what a weight is, imagine a connection between two neurons. One neuron, let’s call it A, sends a signal to the second neuron, B. How strong the signal arrives in B controls the weight of the connection. If the weight has a value between 0 and 1, then the signal strength is reduced; if the value is greater than 1, the signal is amplified; and if the value is less than 0, the signal becomes negative. The weight thus regulates the signal strength ...
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