EBK COMPUTER SCIENCE: AN OVERVIEW
12th Edition
ISBN: 8220102744196
Author: BRYLOW
Publisher: PEARSON
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Chapter 11.5, Problem 2QE
Program Plan Intro
Threshold neural network:
In case of the threshold function, any values above or equal to a given thresholds are converted to one, while any value below it is converted to 0.
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Chapter 11 Solutions
EBK COMPUTER SCIENCE: AN OVERVIEW
Ch. 11.1 - Prob. 1QECh. 11.1 - Prob. 2QECh. 11.1 - Prob. 3QECh. 11.1 - Prob. 4QECh. 11.1 - Prob. 5QECh. 11.2 - Prob. 1QECh. 11.2 - Prob. 2QECh. 11.2 - Prob. 3QECh. 11.2 - Prob. 4QECh. 11.2 - Identify the ambiguities involved in translating...
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