An Introduction to Neural Computing

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چکیده

Computers are typically not very good at tasks at which humans excel, such as image and speech recognition, reasoning, understanding, and acting in the face of uncertainty. This difference cannot be due directly to a lack of speed, since a computer actually manipulates data thousands of times faster than neurons in the brain. However, computer processors have a structure that is very different from the human brain, and it is natural to wonder whether human superiority in these areas might be related to the difference. Could a computer whose internal operations mimic those of the human brain really “think”? And if it could, would it be as versatile as the brain?

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تاریخ انتشار 1999