Wang et al., 2010 - Google Patents
The Properties of Spike-Rate Perceptron with Super-Poisson InputWang et al., 2010
- Document ID
- 5889540473608378061
- Author
- Wang Y
- Xiang X
- Deng Y
- Publication year
- Publication venue
- 2010 Third International Conference on Business Intelligence and Financial Engineering
External Links
Snippet
We present the non-linear properties of Spike-Rate Perceptron with super-Poisson inputs, which employs both first and second statistical representation, ie the means, variances and correlations of the synaptic input. It shows that such perceptron, even a single neuron, is …
- 210000002569 neurons 0 abstract description 30
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