April 2026
461 pages
17h 56m
English
In this chapter, we looked at Frank Rosenblatt’s perceptron in greater detail. We hope that we’ve clearly shown you that a simple learning rule can achieve initial success and that perceptrons learn to learn:
Just as in the ANN history, we followed the path to Adaline, which was subsequently created and motivated by the perceptron. The main difference between the two ANNs is that in Adaline the net input is used for error calculation, in contrast to the step function in the perceptron. This made it possible for Widrow and Hoff ...
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