Pre-Grant Publication Number: 20080016013
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Prior Art Detail
Summary / Description
| Summary / Description | This is one publication of many (search for 'neural network fitness function' on Google) that describes the use of a neural network for performing fitness evaluation. This publication precedes claims 4 and 14. |
Basic Information
| Type of Prior Art | Print Publication |
| Publication Title * | Proceedings of the International ICSC Symposium on Intelligent Industrial Automation (IIA'96) and So |
| Author | John A. Biles, Peter G. Anderson, Laura W. Loggi |
| ISBN | 390-64-5401-0 |
| Page Range | |
| Medium | Book excerpt |
| Publication Date * | March 26, 1996 |
| URL | https://ritdml.rit.edu/dspace/h... |
Notes / To Do
| Notes | |
Excerpt
Excerpt This leads us to our attempts to build a neural network that can at least provide a first pass fitness value for measure individuals. |
Relevance
Claims
4
The system of Claim 1, wherein the fitness evaluator comprises a neural network emulator.
Relevance
The paper describes the use of a neural network emulator for fitness evaluation.
The paper describes the use of a neural network emulator for fitness evaluation.
Claim Chart
All
14
The method of Claim 12, wherein the fitness evaluator comprises a neural network emulator, and wherein the neural network emulator computes a fitness function for each member comprising the population of solutions and the adapted population of solutions.
Relevance
The paper describes the use of a neural network emulator for fitness evaluation.
The paper describes the use of a neural network emulator for fitness evaluation.
Claim Chart
All
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