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Lee, 2012 - Google Patents

Structure level adaptation for artificial neural networks

Lee, 2012

Document ID
10337120694974195766
Author
Lee T
Publication year

External Links

Snippet

63 3. 2 Function Level Adaptation 64 3. 3 Parameter Level Adaptation. 67 3. 4 Structure Level Adaptation 70 3. 4. 1 Neuron Generation. 70 3. 4. 2 Neuron Annihilation 72 3. 5 Implementation..... 74 3. 6 An Illustrative Example 77 3. 7 Summary........ 79 4 Competitive …
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    • G06N3/063Physical realisation, i.e. hardware implementation of neural networks, neurons or parts of neurons using electronic means
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