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Jimenez Rezende et al., 2014 - Google Patents

Stochastic variational learning in recurrent spiking networks

Jimenez Rezende et al., 2014

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Document ID
1896436599192117408
Author
Jimenez Rezende D
Gerstner W
Publication year
Publication venue
Frontiers in computational neuroscience

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Snippet

The ability to learn and perform statistical inference with biologically plausible recurrent networks of spiking neurons is an important step toward understanding perception and reasoning. Here we derive and investigate a new learning rule for recurrent spiking …
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