“School of Cognitive Sciences”

Back to Papers Home
Back to Papers of School of Cognitive Sciences

Paper   IPM / Cognitive Sciences / 11147
School of Cognitive Sciences
  Title:   Adaptive Filtering of Point Process observation of spike train
  Author(s):  Yousef Salimpour
  Status:   In Proceedings
  Proceeding: 2nd Computational Neuroscience Summer School, Center For Neural Dynamics, University Of Ottawa, June 8-20, 2008
  Year:  2008
  Supported by:  IPM
  Abstract:
We apply the point process theory for modeling of single neuron and apply it in to the real data which we recorded from Inferior temporal cortex of monkey. In this paper the state space point process filter theory will be used to estimate the conditional intensity of point process observation as a time varying firing rate. The parametric model of the conditional intensity function will be used to define the effect of biophysical property of neuron such as history effect and stimulus effect as well. The model parameters will be estimated by expectation maximization algorithms. The goodness-of-fit will be assessed using the time rescale theorem. Finally I will apply the point process modeling on real data from inferior temporal cortex of macaque monkey. I will try to capture the time scale effect and stimulus modulated effects for individual neuron separately. It also helps me to captures the biophysical property of neuron and the stimulus effect for each trial and demonstrates it dynamically.

Download TeX format
back to top
scroll left or right