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Extracting comprehensible models from trained neural networks
Publisher:
  • The University of Wisconsin - Madison
ISBN:978-0-591-14495-6
Order Number:AAI9700774
Pages:
293
Bibliometrics
Abstract

No abstract available.

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Contributors
  • University of Wisconsin-Madison
  • University of Wisconsin-Madison

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