Publication | Closed Access
Bayesian Spiking Neurons I: Inference
317
Citations
33
References
2007
Year
We show that the dynamics of spiking neurons can be interpreted as a form of Bayesian inference in time. Neurons that optimally integrate evidence about events in the external world exhibit properties similar to leaky integrate-and-fire neurons with spike-dependent adaptation and maximally respond to fluctuations of their input. Spikes signal the occurrence of new information-what cannot be predicted from the past activity. As a result, firing statistics are close to Poisson, albeit providing a deterministic representation of probabilities.
| Year | Citations | |
|---|---|---|
2002 | 4.8K | |
1986 | 4.7K | |
2004 | 2K | |
1992 | 2K | |
2001 | 1.8K | |
1994 | 1.3K | |
1997 | 1.2K | |
2004 | 1.1K | |
1983 | 1K | |
1999 | 742 |
Page 1
Page 1