Bayesian Filtering in Spiking Neural Networks: Noise, Adaptation, and Multisensory Integration Online Appendix

نویسندگان

  • Omer Bobrowski
  • Ron Meir
  • Yonina C. Eldar
چکیده

As mentioned in the paper, the full derivation of the filtering equation (2.4) is presented in [1]. The derivation in [1] is more general than the context of the paper, and uses very sophisticated mathematical tools. In this appendix we present a simplified outline of this derivation. We are aware that in our particular case of interest, the same results can be derived from discrete-time approximate. However, we believe that rigorous continuoustime treatment is always preferred, to avoid approximation errors. In addition we hope that this appendix will help making the profound literature of point-process filtering more accessible to the neuroscience community.

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تاریخ انتشار 2008