Computer Science, asked by hemantsingh21, 6 months ago

An Auto Associative network with give vector input [1 1 1 -1]. Trained the network using Hebb’s Rule and find -
i. The weight matrix.
ii. Test the network when one missing value.
iii. Test the network when two mistakes happened. ​

Answers

Answered by sboy47524
0

Answer:

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